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81 Commits

Author SHA1 Message Date
lucidrains
d830b05f06 address https://github.com/lucidrains/vit-pytorch/issues/279 2023-09-10 09:32:57 -07:00
Phil Wang
8208c859a5 just remove PreNorm wrapper from all ViTs, as it is unlikely to change at this point 2023-08-14 09:48:55 -07:00
Phil Wang
4264efd906 1.4.2 2023-08-14 07:59:35 -07:00
Phil Wang
b194359301 add a simple vit with qknorm, since authors seem to be promoting the technique on twitter 2023-08-14 07:58:45 -07:00
lucidrains
950c901b80 fix linear head in simple vit, thanks to @atkos 2023-08-10 14:36:21 -07:00
Phil Wang
3e5d1be6f0 address https://github.com/lucidrains/vit-pytorch/pull/274 2023-08-09 07:53:38 -07:00
Phil Wang
6e2393de95 wrap up NaViT 2023-07-25 10:38:55 -07:00
Phil Wang
32974c33df one can pass a callback to token_dropout_prob for NaViT that takes in height and width and calculate appropriate dropout rate 2023-07-24 14:52:40 -07:00
Phil Wang
17675e0de4 add constant token dropout for NaViT 2023-07-24 14:14:36 -07:00
Phil Wang
598cffab53 release NaViT 2023-07-24 13:55:54 -07:00
Phil Wang
23820bc54a begin work on NaViT (#273)
finish core idea of NaViT
2023-07-24 13:54:02 -07:00
Phil Wang
e9ca1f4d57 1.2.5 2023-07-24 06:43:24 -07:00
roydenwa
d4daf7bd0f Support SimpleViT as encoder in MAE (#272)
support simplevit in mae
2023-07-24 06:43:01 -07:00
Phil Wang
9e3fec2398 fix mpp 2023-06-28 08:02:43 -07:00
Phil Wang
ce4bcd08fb address https://github.com/lucidrains/vit-pytorch/issues/266 2023-05-20 08:24:49 -07:00
Phil Wang
ad4ca19775 enforce latest einops 2023-05-08 09:34:14 -07:00
Phil Wang
e1b08c15b9 fix tests 2023-03-19 10:52:47 -07:00
Phil Wang
c59843d7b8 add a version of simple vit using flash attention 2023-03-18 09:41:39 -07:00
lucidrains
9a8e509b27 separate a simple vit from mp3, so that simple vit can be used after being pretrained 2023-03-07 19:31:10 -08:00
Phil Wang
258dd8c7c6 release mp3, contributed by @Vishu26 2023-03-07 14:29:45 -08:00
Srikumar Sastry
4218556acd Add Masked Position Prediction (#260)
* Create mp3.py

* Implementation: Position Prediction as an Effective Pretraining Strategy

* Added description for Masked Position Prediction

* MP3 image added
2023-03-07 14:28:40 -08:00
Phil Wang
f621c2b041 typo 2023-03-04 20:30:02 -08:00
Phil Wang
5699ed7d13 double down on dual patch norm, fix MAE and Simmim to be compatible with dual patchnorm 2023-02-10 10:39:50 -08:00
Phil Wang
46dcaf23d8 seeing a signal with dual patchnorm in another repository, fully incorporate 2023-02-06 09:45:12 -08:00
Phil Wang
bdaf2d1491 adopt dual patchnorm paper for as many vit as applicable, release 1.0.0 2023-02-03 08:11:29 -08:00
Phil Wang
500e23105a need simple vit with patch dropout for another project 2022-12-05 10:47:36 -08:00
Phil Wang
89e1996c8b add vit with patch dropout, fully embrace structured dropout as multiple papers are now corroborating each other 2022-12-02 11:28:11 -08:00
Phil Wang
2f87c0cf8f offer 1d versions, in light of https://arxiv.org/abs/2211.14730 2022-12-01 10:31:05 -08:00
Phil Wang
59c8948c6a try to fix tests 2022-10-29 11:44:17 -07:00
Phil Wang
cb6d749821 add a 3d version of cct, addressing https://github.com/lucidrains/vit-pytorch/issues/238 0.38.1 2022-10-29 11:35:06 -07:00
Phil Wang
6ec8fdaa6d make sure global average pool can be used for vivit in place of cls token 2022-10-24 19:59:48 -07:00
Phil Wang
13fabf901e add vivit 2022-10-24 09:34:04 -07:00
Ryan Russell
c0eb4c0150 Improving Readability (#220)
Signed-off-by: Ryan Russell <git@ryanrussell.org>

Signed-off-by: Ryan Russell <git@ryanrussell.org>
2022-10-17 10:42:45 -07:00
Phil Wang
5f1a6a05e9 release updated mae where one can more easily visualize reconstructions, thanks to @Vishu26 2022-10-17 10:41:46 -07:00
Srikumar Sastry
9a95e7904e Update mae.py (#242)
update mae so decoded tokens can be easily reshaped back to visualize the reconstruction
2022-10-17 10:41:10 -07:00
Phil Wang
b4853d39c2 add the 3d simple vit 2022-10-16 20:45:30 -07:00
Phil Wang
29fbf0aff4 begin extending some of the architectures over to 3d, starting with basic ViT 2022-10-16 15:31:59 -07:00
Phil Wang
4b8f5bc900 add link to Flax translation by @conceptofmind 2022-07-27 08:58:18 -07:00
Phil Wang
f86e052c05 offer way for extractor to return latents without detaching them 2022-07-16 16:22:40 -07:00
Phil Wang
2fa2b62def slightly more clear of einops rearrange for cls token, for https://github.com/lucidrains/vit-pytorch/issues/224 2022-06-30 08:11:17 -07:00
Phil Wang
9f87d1c43b follow @arquolo feedback and advice for MaxViT 2022-06-29 08:53:09 -07:00
Phil Wang
2c6dd7010a fix hidden dimension in MaxViT thanks to @arquolo 2022-06-24 23:28:35 -07:00
Phil Wang
6460119f65 be able to accept a reference to a layer within the model for forward hooking and extracting the embedding output, for regionvit to work with extractor 2022-06-19 08:22:18 -07:00
Phil Wang
4e62e5f05e make extractor flexible for layers that output multiple tensors, show CrossViT example 2022-06-19 08:11:41 -07:00
Phil Wang
b3e90a2652 add simple vit, from https://arxiv.org/abs/2205.01580 2022-05-03 20:24:14 -07:00
Phil Wang
4ef72fc4dc add EsViT, by popular request, an alternative to Dino that is compatible with efficient ViTs with accounting for regional self-supervised loss 2022-05-03 10:29:29 -07:00
Zhengzhong Tu
c2aab05ebf fix bibtex typo (#212) 2022-04-06 22:15:05 -07:00
Phil Wang
81661e3966 fix mbconv residual block 2022-04-06 16:43:06 -07:00
Phil Wang
13f8e123bb fix maxvit - need feedforwards after attention 2022-04-06 16:34:40 -07:00
Phil Wang
2d4089c88e link to maxvit in readme 2022-04-06 16:24:12 -07:00
Phil Wang
c7bb5fc43f maxvit intent to build (#211)
complete hybrid mbconv + block / grid efficient self attention MaxViT
2022-04-06 16:12:17 -07:00
Phil Wang
946b19be64 sponsor button 2022-04-06 14:12:11 -07:00
Phil Wang
d93cd84ccd let windowed tokens exchange information across heads a la talking heads prior to pointwise attention in sep-vit 2022-03-31 15:22:24 -07:00
Phil Wang
5d4c798949 cleanup sepvit 2022-03-31 14:35:11 -07:00
Phil Wang
d65a742efe intent to build (#210)
complete SepViT, from bytedance AI labs
2022-03-31 14:30:23 -07:00
Phil Wang
8c54e01492 do not layernorm on last transformer block for scalable vit, as there is already one in mlp head 2022-03-31 13:25:21 -07:00
Phil Wang
df656fe7c7 complete learnable memory ViT, for efficient fine-tuning and potentially plays into continual learning 2022-03-31 09:51:12 -07:00
Phil Wang
4e6a42a0ca correct need for post-attention dropout 2022-03-30 10:50:57 -07:00
Phil Wang
6d7298d8ad link to tensorflow2 translation by @taki0112 2022-03-28 09:05:34 -07:00
Phil Wang
9cd56ff29b CCT allow for rectangular images 2022-03-26 14:02:49 -07:00
Phil Wang
2aae406ce8 add proposed parallel vit from facebook ai for exploration purposes 2022-03-23 10:42:35 -07:00
Phil Wang
c2b2db2a54 fix window size of none for scalable vit for rectangular images 2022-03-22 17:37:59 -07:00
Phil Wang
719048d1bd some better defaults for scalable vit 2022-03-22 17:19:58 -07:00
Phil Wang
d27721a85a add scalable vit, from bytedance AI 2022-03-22 17:02:47 -07:00
Phil Wang
cb22cbbd19 update to einops 0.4, which is torchscript jit friendly 2022-03-22 13:58:00 -07:00
Phil Wang
6db20debb4 add patch merger 2022-03-01 16:50:17 -08:00
Phil Wang
1bae5d3cc5 allow for rectangular images for efficient adapter 2022-01-31 08:55:31 -08:00
Phil Wang
25b384297d return None from extractor if no attention layers 2022-01-28 17:49:58 -08:00
Phil Wang
64a07f50e6 epsilon should be inside square root 2022-01-24 17:24:41 -08:00
Phil Wang
126d204ff2 fix block repeats in readme example for Nest 2022-01-22 21:32:53 -08:00
Phil Wang
c1528acd46 fix feature maps in Nest, thanks to @MarkYangjiayi 2022-01-22 13:17:30 -08:00
Phil Wang
1cc0f182a6 decoder positional embedding needs to be reapplied https://twitter.com/giffmana/status/1479195631587631104 2022-01-06 13:14:41 -08:00
Phil Wang
28eaba6115 0.26.2 2022-01-03 12:56:34 -08:00
Phil Wang
0082301f9e build @jrounds suggestion 2022-01-03 12:56:25 -08:00
Phil Wang
91ed738731 0.26.1 2021-12-30 19:31:26 -08:00
Phil Wang
1b58daa20a Merge pull request #186 from chinhsuanwu/mobilevit
Update MobileViT
2021-12-30 19:31:01 -08:00
chinhsuanwu
f2414b2c1b Update MobileViT 2021-12-30 05:52:23 +08:00
Phil Wang
891b92eb74 readme 2021-12-28 16:00:00 -08:00
Phil Wang
70ba532599 add ViT for small datasets https://arxiv.org/abs/2112.13492 2021-12-28 10:58:21 -08:00
Phil Wang
e52ac41955 allow extractor to only return embeddings, to ready for vision transformers to be used in x-clip 2021-12-25 12:31:21 -08:00
Phil Wang
0891885485 include tests in package for conda 2021-12-22 12:44:29 -08:00
62 changed files with 5512 additions and 380 deletions

3
.github/FUNDING.yml vendored Normal file
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@@ -0,0 +1,3 @@
# These are supported funding model platforms
github: [lucidrains]

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@@ -27,6 +27,7 @@ jobs:
run: |
python -m pip install --upgrade pip
python -m pip install pytest
python -m pip install wheel
if [ -f requirements.txt ]; then pip install -r requirements.txt; fi
- name: Test with pytest
run: |

1
MANIFEST.in Normal file
View File

@@ -0,0 +1 @@
recursive-include tests *

839
README.md
View File

@@ -6,6 +6,8 @@
- [Install](#install)
- [Usage](#usage)
- [Parameters](#parameters)
- [Simple ViT](#simple-vit)
- [NaViT](#navit)
- [Distillation](#distillation)
- [Deep ViT](#deep-vit)
- [CaiT](#cait)
@@ -18,13 +20,24 @@
- [Twins SVT](#twins-svt)
- [CrossFormer](#crossformer)
- [RegionViT](#regionvit)
- [ScalableViT](#scalablevit)
- [SepViT](#sepvit)
- [MaxViT](#maxvit)
- [NesT](#nest)
- [MobileViT](#mobilevit)
- [Masked Autoencoder](#masked-autoencoder)
- [Simple Masked Image Modeling](#simple-masked-image-modeling)
- [Masked Patch Prediction](#masked-patch-prediction)
- [Masked Position Prediction](#masked-position-prediction)
- [Adaptive Token Sampling](#adaptive-token-sampling)
- [Patch Merger](#patch-merger)
- [Vision Transformer for Small Datasets](#vision-transformer-for-small-datasets)
- [3D Vit](#3d-vit)
- [ViVit](#vivit)
- [Parallel ViT](#parallel-vit)
- [Learnable Memory ViT](#learnable-memory-vit)
- [Dino](#dino)
- [EsViT](#esvit)
- [Accessing Attention](#accessing-attention)
- [Research Ideas](#research-ideas)
* [Efficient Attention](#efficient-attention)
@@ -41,6 +54,10 @@ For a Pytorch implementation with pretrained models, please see Ross Wightman's
The official Jax repository is <a href="https://github.com/google-research/vision_transformer">here</a>.
A tensorflow2 translation also exists <a href="https://github.com/taki0112/vit-tensorflow">here</a>, created by research scientist <a href="https://github.com/taki0112">Junho Kim</a>! 🙏
<a href="https://github.com/conceptofmind/vit-flax">Flax translation</a> by <a href="https://github.com/conceptofmind">Enrico Shippole</a>!
## Install
```bash
@@ -96,6 +113,90 @@ Embedding dropout rate.
- `pool`: string, either `cls` token pooling or `mean` pooling
## Simple ViT
<a href="https://arxiv.org/abs/2205.01580">An update</a> from some of the same authors of the original paper proposes simplifications to `ViT` that allows it to train faster and better.
Among these simplifications include 2d sinusoidal positional embedding, global average pooling (no CLS token), no dropout, batch sizes of 1024 rather than 4096, and use of RandAugment and MixUp augmentations. They also show that a simple linear at the end is not significantly worse than the original MLP head
You can use it by importing the `SimpleViT` as shown below
```python
import torch
from vit_pytorch import SimpleViT
v = SimpleViT(
image_size = 256,
patch_size = 32,
num_classes = 1000,
dim = 1024,
depth = 6,
heads = 16,
mlp_dim = 2048
)
img = torch.randn(1, 3, 256, 256)
preds = v(img) # (1, 1000)
```
## NaViT
<img src="./images/navit.png" width="450px"></img>
<a href="https://arxiv.org/abs/2307.06304">This paper</a> proposes to leverage the flexibility of attention and masking for variable lengthed sequences to train images of multiple resolution, packed into a single batch. They demonstrate much faster training and improved accuracies, with the only cost being extra complexity in the architecture and dataloading. They use factorized 2d positional encodings, token dropping, as well as query-key normalization.
You can use it as follows
```python
import torch
from vit_pytorch.na_vit import NaViT
v = NaViT(
image_size = 256,
patch_size = 32,
num_classes = 1000,
dim = 1024,
depth = 6,
heads = 16,
mlp_dim = 2048,
dropout = 0.1,
emb_dropout = 0.1,
token_dropout_prob = 0.1 # token dropout of 10% (keep 90% of tokens)
)
# 5 images of different resolutions - List[List[Tensor]]
# for now, you'll have to correctly place images in same batch element as to not exceed maximum allowed sequence length for self-attention w/ masking
images = [
[torch.randn(3, 256, 256), torch.randn(3, 128, 128)],
[torch.randn(3, 128, 256), torch.randn(3, 256, 128)],
[torch.randn(3, 64, 256)]
]
preds = v(images) # (5, 1000) - 5, because 5 images of different resolution above
```
Or if you would rather that the framework auto group the images into variable lengthed sequences that do not exceed a certain max length
```python
images = [
torch.randn(3, 256, 256),
torch.randn(3, 128, 128),
torch.randn(3, 128, 256),
torch.randn(3, 256, 128),
torch.randn(3, 64, 256)
]
preds = v(
images,
group_images = True,
group_max_seq_len = 64
) # (5, 1000)
```
## Distillation
<img src="./images/distill.png" width="300px"></img>
@@ -237,6 +338,7 @@ preds = v(img) # (1, 1000)
```
## CCT
<img src="https://raw.githubusercontent.com/SHI-Labs/Compact-Transformers/main/images/model_sym.png" width="400px"></img>
<a href="https://arxiv.org/abs/2104.05704">CCT</a> proposes compact transformers
@@ -248,22 +350,25 @@ You can use this with two methods
import torch
from vit_pytorch.cct import CCT
model = CCT(
img_size=224,
embedding_dim=384,
n_conv_layers=2,
kernel_size=7,
stride=2,
padding=3,
pooling_kernel_size=3,
pooling_stride=2,
pooling_padding=1,
num_layers=14,
num_heads=6,
mlp_radio=3.,
num_classes=1000,
positional_embedding='learnable', # ['sine', 'learnable', 'none']
)
cct = CCT(
img_size = (224, 448),
embedding_dim = 384,
n_conv_layers = 2,
kernel_size = 7,
stride = 2,
padding = 3,
pooling_kernel_size = 3,
pooling_stride = 2,
pooling_padding = 1,
num_layers = 14,
num_heads = 6,
mlp_ratio = 3.,
num_classes = 1000,
positional_embedding = 'learnable', # ['sine', 'learnable', 'none']
)
img = torch.randn(1, 3, 224, 448)
pred = cct(img) # (1, 1000)
```
Alternatively you can use one of several pre-defined models `[2,4,6,7,8,14,16]`
@@ -274,23 +379,23 @@ and the embedding dimension.
import torch
from vit_pytorch.cct import cct_14
model = cct_14(
img_size=224,
n_conv_layers=1,
kernel_size=7,
stride=2,
padding=3,
pooling_kernel_size=3,
pooling_stride=2,
pooling_padding=1,
num_classes=1000,
positional_embedding='learnable', # ['sine', 'learnable', 'none']
)
cct = cct_14(
img_size = 224,
n_conv_layers = 1,
kernel_size = 7,
stride = 2,
padding = 3,
pooling_kernel_size = 3,
pooling_stride = 2,
pooling_padding = 1,
num_classes = 1000,
positional_embedding = 'learnable', # ['sine', 'learnable', 'none']
)
```
<a href="https://github.com/SHI-Labs/Compact-Transformers">Official
Repository</a> includes links to pretrained model checkpoints.
## Cross ViT
<img src="./images/cross_vit.png" width="400px"></img>
@@ -523,11 +628,103 @@ img = torch.randn(1, 3, 224, 224)
pred = model(img) # (1, 1000)
```
## ScalableViT
<img src="./images/scalable-vit-1.png" width="400px"></img>
<img src="./images/scalable-vit-2.png" width="400px"></img>
This Bytedance AI <a href="https://arxiv.org/abs/2203.10790">paper</a> proposes the Scalable Self Attention (SSA) and the Interactive Windowed Self Attention (IWSA) modules. The SSA alleviates the computation needed at earlier stages by reducing the key / value feature map by some factor (`reduction_factor`), while modulating the dimension of the queries and keys (`ssa_dim_key`). The IWSA performs self attention within local windows, similar to other vision transformer papers. However, they add a residual of the values, passed through a convolution of kernel size 3, which they named Local Interactive Module (LIM).
They make the claim in this paper that this scheme outperforms Swin Transformer, and also demonstrate competitive performance against Crossformer.
You can use it as follows (ex. ScalableViT-S)
```python
import torch
from vit_pytorch.scalable_vit import ScalableViT
model = ScalableViT(
num_classes = 1000,
dim = 64, # starting model dimension. at every stage, dimension is doubled
heads = (2, 4, 8, 16), # number of attention heads at each stage
depth = (2, 2, 20, 2), # number of transformer blocks at each stage
ssa_dim_key = (40, 40, 40, 32), # the dimension of the attention keys (and queries) for SSA. in the paper, they represented this as a scale factor on the base dimension per key (ssa_dim_key / dim_key)
reduction_factor = (8, 4, 2, 1), # downsampling of the key / values in SSA. in the paper, this was represented as (reduction_factor ** -2)
window_size = (64, 32, None, None), # window size of the IWSA at each stage. None means no windowing needed
dropout = 0.1, # attention and feedforward dropout
)
img = torch.randn(1, 3, 256, 256)
preds = model(img) # (1, 1000)
```
## SepViT
<img src="./images/sep-vit.png" width="400px"></img>
Another <a href="https://arxiv.org/abs/2203.15380">Bytedance AI paper</a>, it proposes a depthwise-pointwise self-attention layer that seems largely inspired by mobilenet's depthwise-separable convolution. The most interesting aspect is the reuse of the feature map from the depthwise self-attention stage as the values for the pointwise self-attention, as shown in the diagram above.
I have decided to include only the version of `SepViT` with this specific self-attention layer, as the grouped attention layers are not remarkable nor novel, and the authors were not clear on how they treated the window tokens for the group self-attention layer. Besides, it seems like with `DSSA` layer alone, they were able to beat Swin.
ex. SepViT-Lite
```python
import torch
from vit_pytorch.sep_vit import SepViT
v = SepViT(
num_classes = 1000,
dim = 32, # dimensions of first stage, which doubles every stage (32, 64, 128, 256) for SepViT-Lite
dim_head = 32, # attention head dimension
heads = (1, 2, 4, 8), # number of heads per stage
depth = (1, 2, 6, 2), # number of transformer blocks per stage
window_size = 7, # window size of DSS Attention block
dropout = 0.1 # dropout
)
img = torch.randn(1, 3, 224, 224)
preds = v(img) # (1, 1000)
```
## MaxViT
<img src="./images/max-vit.png" width="400px"></img>
<a href="https://arxiv.org/abs/2204.01697">This paper</a> proposes a hybrid convolutional / attention network, using MBConv from the convolution side, and then block / grid axial sparse attention.
They also claim this specific vision transformer is good for generative models (GANs).
ex. MaxViT-S
```python
import torch
from vit_pytorch.max_vit import MaxViT
v = MaxViT(
num_classes = 1000,
dim_conv_stem = 64, # dimension of the convolutional stem, would default to dimension of first layer if not specified
dim = 96, # dimension of first layer, doubles every layer
dim_head = 32, # dimension of attention heads, kept at 32 in paper
depth = (2, 2, 5, 2), # number of MaxViT blocks per stage, which consists of MBConv, block-like attention, grid-like attention
window_size = 7, # window size for block and grids
mbconv_expansion_rate = 4, # expansion rate of MBConv
mbconv_shrinkage_rate = 0.25, # shrinkage rate of squeeze-excitation in MBConv
dropout = 0.1 # dropout
)
img = torch.randn(2, 3, 224, 224)
preds = v(img) # (2, 1000)
```
## NesT
<img src="./images/nest.png" width="400px"></img>
This <a href="https://arxiv.org/abs/2105.12723">paper</a> decided to process the image in hierarchical stages, with attention only within tokens of local blocks, which aggregate as it moves up the heirarchy. The aggregation is done in the image plane, and contains a convolution and subsequent maxpool to allow it to pass information across the boundary.
This <a href="https://arxiv.org/abs/2105.12723">paper</a> decided to process the image in hierarchical stages, with attention only within tokens of local blocks, which aggregate as it moves up the hierarchy. The aggregation is done in the image plane, and contains a convolution and subsequent maxpool to allow it to pass information across the boundary.
You can use it with the following code (ex. NesT-T)
@@ -541,7 +738,7 @@ nest = NesT(
dim = 96,
heads = 3,
num_hierarchies = 3, # number of hierarchies
block_repeats = (8, 4, 1), # the number of transformer blocks at each heirarchy, starting from the bottom
block_repeats = (2, 2, 8), # the number of transformer blocks at each hierarchy, starting from the bottom
num_classes = 1000
)
@@ -706,6 +903,44 @@ for _ in range(100):
torch.save(model.state_dict(), './pretrained-net.pt')
```
## Masked Position Prediction
<img src="./images/mp3.png" width="400px"></img>
New <a href="https://arxiv.org/abs/2207.07611">paper</a> that introduces masked position prediction pre-training criteria. This strategy is more efficient than the Masked Autoencoder strategy and has comparable performance.
```python
import torch
from vit_pytorch.mp3 import ViT, MP3
v = ViT(
num_classes = 1000,
image_size = 256,
patch_size = 8,
dim = 1024,
depth = 6,
heads = 8,
mlp_dim = 2048,
dropout = 0.1,
)
mp3 = MP3(
vit = v,
masking_ratio = 0.75
)
images = torch.randn(8, 3, 256, 256)
loss = mp3(images)
loss.backward()
# that's all!
# do the above in a for loop many times with a lot of images and your vision transformer will learn
# save your improved vision transformer
torch.save(v.state_dict(), './trained-vit.pt')
```
## Adaptive Token Sampling
<img src="./images/ats.png" width="400px"></img>
@@ -731,12 +966,301 @@ v = ViT(
img = torch.randn(4, 3, 256, 256)
preds = v(img) # (1, 1000)
preds = v(img) # (4, 1000)
# you can also get a list of the final sampled patch ids
# a value of -1 denotes padding
preds, token_ids = v(img, return_sampled_token_ids = True) # (1, 1000), (1, <=8)
preds, token_ids = v(img, return_sampled_token_ids = True) # (4, 1000), (4, <=8)
```
## Patch Merger
<img src="./images/patch_merger.png" width="400px"></img>
This <a href="https://arxiv.org/abs/2202.12015">paper</a> proposes a simple module (Patch Merger) for reducing the number of tokens at any layer of a vision transformer without sacrificing performance.
```python
import torch
from vit_pytorch.vit_with_patch_merger import ViT
v = ViT(
image_size = 256,
patch_size = 16,
num_classes = 1000,
dim = 1024,
depth = 12,
heads = 8,
patch_merge_layer = 6, # at which transformer layer to do patch merging
patch_merge_num_tokens = 8, # the output number of tokens from the patch merge
mlp_dim = 2048,
dropout = 0.1,
emb_dropout = 0.1
)
img = torch.randn(4, 3, 256, 256)
preds = v(img) # (4, 1000)
```
One can also use the `PatchMerger` module by itself
```python
import torch
from vit_pytorch.vit_with_patch_merger import PatchMerger
merger = PatchMerger(
dim = 1024,
num_tokens_out = 8 # output number of tokens
)
features = torch.randn(4, 256, 1024) # (batch, num tokens, dimension)
out = merger(features) # (4, 8, 1024)
```
## Vision Transformer for Small Datasets
<img src="./images/vit_for_small_datasets.png" width="400px"></img>
This <a href="https://arxiv.org/abs/2112.13492">paper</a> proposes a new image to patch function that incorporates shifts of the image, before normalizing and dividing the image into patches. I have found shifting to be extremely helpful in some other transformers work, so decided to include this for further explorations. It also includes the `LSA` with the learned temperature and masking out of a token's attention to itself.
You can use as follows:
```python
import torch
from vit_pytorch.vit_for_small_dataset import ViT
v = ViT(
image_size = 256,
patch_size = 16,
num_classes = 1000,
dim = 1024,
depth = 6,
heads = 16,
mlp_dim = 2048,
dropout = 0.1,
emb_dropout = 0.1
)
img = torch.randn(4, 3, 256, 256)
preds = v(img) # (1, 1000)
```
You can also use the `SPT` from this paper as a standalone module
```python
import torch
from vit_pytorch.vit_for_small_dataset import SPT
spt = SPT(
dim = 1024,
patch_size = 16,
channels = 3
)
img = torch.randn(4, 3, 256, 256)
tokens = spt(img) # (4, 256, 1024)
```
## 3D ViT
By popular request, I will start extending a few of the architectures in this repository to 3D ViTs, for use with video, medical imaging, etc.
You will need to pass in two additional hyperparameters: (1) the number of frames `frames` and (2) patch size along the frame dimension `frame_patch_size`
For starters, 3D ViT
```python
import torch
from vit_pytorch.vit_3d import ViT
v = ViT(
image_size = 128, # image size
frames = 16, # number of frames
image_patch_size = 16, # image patch size
frame_patch_size = 2, # frame patch size
num_classes = 1000,
dim = 1024,
depth = 6,
heads = 8,
mlp_dim = 2048,
dropout = 0.1,
emb_dropout = 0.1
)
video = torch.randn(4, 3, 16, 128, 128) # (batch, channels, frames, height, width)
preds = v(video) # (4, 1000)
```
3D Simple ViT
```python
import torch
from vit_pytorch.simple_vit_3d import SimpleViT
v = SimpleViT(
image_size = 128, # image size
frames = 16, # number of frames
image_patch_size = 16, # image patch size
frame_patch_size = 2, # frame patch size
num_classes = 1000,
dim = 1024,
depth = 6,
heads = 8,
mlp_dim = 2048
)
video = torch.randn(4, 3, 16, 128, 128) # (batch, channels, frames, height, width)
preds = v(video) # (4, 1000)
```
3D version of <a href="https://github.com/lucidrains/vit-pytorch#cct">CCT</a>
```python
import torch
from vit_pytorch.cct_3d import CCT
cct = CCT(
img_size = 224,
num_frames = 8,
embedding_dim = 384,
n_conv_layers = 2,
frame_kernel_size = 3,
kernel_size = 7,
stride = 2,
padding = 3,
pooling_kernel_size = 3,
pooling_stride = 2,
pooling_padding = 1,
num_layers = 14,
num_heads = 6,
mlp_ratio = 3.,
num_classes = 1000,
positional_embedding = 'learnable'
)
video = torch.randn(1, 3, 8, 224, 224) # (batch, channels, frames, height, width)
pred = cct(video)
```
## ViViT
<img src="./images/vivit.png" width="350px"></img>
This <a href="https://arxiv.org/abs/2103.15691">paper</a> offers 3 different types of architectures for efficient attention of videos, with the main theme being factorizing the attention across space and time. This repository will offer the first variant, which is a spatial transformer followed by a temporal one.
```python
import torch
from vit_pytorch.vivit import ViT
v = ViT(
image_size = 128, # image size
frames = 16, # number of frames
image_patch_size = 16, # image patch size
frame_patch_size = 2, # frame patch size
num_classes = 1000,
dim = 1024,
spatial_depth = 6, # depth of the spatial transformer
temporal_depth = 6, # depth of the temporal transformer
heads = 8,
mlp_dim = 2048
)
video = torch.randn(4, 3, 16, 128, 128) # (batch, channels, frames, height, width)
preds = v(video) # (4, 1000)
```
## Parallel ViT
<img src="./images/parallel-vit.png" width="350px"></img>
This <a href="https://arxiv.org/abs/2203.09795">paper</a> propose parallelizing multiple attention and feedforward blocks per layer (2 blocks), claiming that it is easier to train without loss of performance.
You can try this variant as follows
```python
import torch
from vit_pytorch.parallel_vit import ViT
v = ViT(
image_size = 256,
patch_size = 16,
num_classes = 1000,
dim = 1024,
depth = 6,
heads = 8,
mlp_dim = 2048,
num_parallel_branches = 2, # in paper, they claimed 2 was optimal
dropout = 0.1,
emb_dropout = 0.1
)
img = torch.randn(4, 3, 256, 256)
preds = v(img) # (4, 1000)
```
## Learnable Memory ViT
<img src="./images/learnable-memory-vit.png" width="350px"></img>
This <a href="https://arxiv.org/abs/2203.15243">paper</a> shows that adding learnable memory tokens at each layer of a vision transformer can greatly enhance fine-tuning results (in addition to learnable task specific CLS token and adapter head).
You can use this with a specially modified `ViT` as follows
```python
import torch
from vit_pytorch.learnable_memory_vit import ViT, Adapter
# normal base ViT
v = ViT(
image_size = 256,
patch_size = 16,
num_classes = 1000,
dim = 1024,
depth = 6,
heads = 8,
mlp_dim = 2048,
dropout = 0.1,
emb_dropout = 0.1
)
img = torch.randn(4, 3, 256, 256)
logits = v(img) # (4, 1000)
# do your usual training with ViT
# ...
# then, to finetune, just pass the ViT into the Adapter class
# you can do this for multiple Adapters, as shown below
adapter1 = Adapter(
vit = v,
num_classes = 2, # number of output classes for this specific task
num_memories_per_layer = 5 # number of learnable memories per layer, 10 was sufficient in paper
)
logits1 = adapter1(img) # (4, 2) - predict 2 classes off frozen ViT backbone with learnable memories and task specific head
# yet another task to finetune on, this time with 4 classes
adapter2 = Adapter(
vit = v,
num_classes = 4,
num_memories_per_layer = 10
)
logits2 = adapter2(img) # (4, 4) - predict 4 classes off frozen ViT backbone with learnable memories and task specific head
```
## Dino
@@ -793,6 +1317,80 @@ for _ in range(100):
torch.save(model.state_dict(), './pretrained-net.pt')
```
## EsViT
<img src="./images/esvit.png" width="350px"></img>
<a href="https://arxiv.org/abs/2106.09785">`EsViT`</a> is a variant of Dino (from above) re-engineered to support efficient `ViT`s with patch merging / downsampling by taking into an account an extra regional loss between the augmented views. To quote the abstract, it `outperforms its supervised counterpart on 17 out of 18 datasets` at 3 times higher throughput.
Even though it is named as though it were a new `ViT` variant, it actually is just a strategy for training any multistage `ViT` (in the paper, they focused on Swin). The example below will show how to use it with `CvT`. You'll need to set the `hidden_layer` to the name of the layer within your efficient ViT that outputs the non-average pooled visual representations, just before the global pooling and projection to logits.
```python
import torch
from vit_pytorch.cvt import CvT
from vit_pytorch.es_vit import EsViTTrainer
cvt = CvT(
num_classes = 1000,
s1_emb_dim = 64,
s1_emb_kernel = 7,
s1_emb_stride = 4,
s1_proj_kernel = 3,
s1_kv_proj_stride = 2,
s1_heads = 1,
s1_depth = 1,
s1_mlp_mult = 4,
s2_emb_dim = 192,
s2_emb_kernel = 3,
s2_emb_stride = 2,
s2_proj_kernel = 3,
s2_kv_proj_stride = 2,
s2_heads = 3,
s2_depth = 2,
s2_mlp_mult = 4,
s3_emb_dim = 384,
s3_emb_kernel = 3,
s3_emb_stride = 2,
s3_proj_kernel = 3,
s3_kv_proj_stride = 2,
s3_heads = 4,
s3_depth = 10,
s3_mlp_mult = 4,
dropout = 0.
)
learner = EsViTTrainer(
cvt,
image_size = 256,
hidden_layer = 'layers', # hidden layer name or index, from which to extract the embedding
projection_hidden_size = 256, # projector network hidden dimension
projection_layers = 4, # number of layers in projection network
num_classes_K = 65336, # output logits dimensions (referenced as K in paper)
student_temp = 0.9, # student temperature
teacher_temp = 0.04, # teacher temperature, needs to be annealed from 0.04 to 0.07 over 30 epochs
local_upper_crop_scale = 0.4, # upper bound for local crop - 0.4 was recommended in the paper
global_lower_crop_scale = 0.5, # lower bound for global crop - 0.5 was recommended in the paper
moving_average_decay = 0.9, # moving average of encoder - paper showed anywhere from 0.9 to 0.999 was ok
center_moving_average_decay = 0.9, # moving average of teacher centers - paper showed anywhere from 0.9 to 0.999 was ok
)
opt = torch.optim.AdamW(learner.parameters(), lr = 3e-4)
def sample_unlabelled_images():
return torch.randn(8, 3, 256, 256)
for _ in range(1000):
images = sample_unlabelled_images()
loss = learner(images)
opt.zero_grad()
loss.backward()
opt.step()
learner.update_moving_average() # update moving average of teacher encoder and teacher centers
# save your improved network
torch.save(cvt.state_dict(), './pretrained-net.pt')
```
## Accessing Attention
If you would like to visualize the attention weights (post-softmax) for your research, just follow the procedure below
@@ -869,6 +1467,47 @@ logits, embeddings = v(img)
embeddings # (1, 65, 1024) - (batch x patches x model dim)
```
Or say for `CrossViT`, which has a multi-scale encoder that outputs two sets of embeddings for 'large' and 'small' scales
```python
import torch
from vit_pytorch.cross_vit import CrossViT
v = CrossViT(
image_size = 256,
num_classes = 1000,
depth = 4,
sm_dim = 192,
sm_patch_size = 16,
sm_enc_depth = 2,
sm_enc_heads = 8,
sm_enc_mlp_dim = 2048,
lg_dim = 384,
lg_patch_size = 64,
lg_enc_depth = 3,
lg_enc_heads = 8,
lg_enc_mlp_dim = 2048,
cross_attn_depth = 2,
cross_attn_heads = 8,
dropout = 0.1,
emb_dropout = 0.1
)
# wrap the CrossViT
from vit_pytorch.extractor import Extractor
v = Extractor(v, layer_name = 'multi_scale_encoder') # take embedding coming from the output of multi-scale-encoder
# forward pass now returns predictions and the attention maps
img = torch.randn(1, 3, 256, 256)
logits, embeddings = v(img)
# there is one extra token due to the CLS token
embeddings # ((1, 257, 192), (1, 17, 384)) - (batch x patches x dimension) <- large and small scales respectively
```
## Research Ideas
### Efficient Attention
@@ -1236,6 +1875,131 @@ Coming from computer vision and new to transformers? Here are some resources tha
}
```
```bibtex
@misc{lee2021vision,
title = {Vision Transformer for Small-Size Datasets},
author = {Seung Hoon Lee and Seunghyun Lee and Byung Cheol Song},
year = {2021},
eprint = {2112.13492},
archivePrefix = {arXiv},
primaryClass = {cs.CV}
}
```
```bibtex
@misc{renggli2022learning,
title = {Learning to Merge Tokens in Vision Transformers},
author = {Cedric Renggli and André Susano Pinto and Neil Houlsby and Basil Mustafa and Joan Puigcerver and Carlos Riquelme},
year = {2022},
eprint = {2202.12015},
archivePrefix = {arXiv},
primaryClass = {cs.CV}
}
```
```bibtex
@misc{yang2022scalablevit,
title = {ScalableViT: Rethinking the Context-oriented Generalization of Vision Transformer},
author = {Rui Yang and Hailong Ma and Jie Wu and Yansong Tang and Xuefeng Xiao and Min Zheng and Xiu Li},
year = {2022},
eprint = {2203.10790},
archivePrefix = {arXiv},
primaryClass = {cs.CV}
}
```
```bibtex
@inproceedings{Touvron2022ThreeTE,
title = {Three things everyone should know about Vision Transformers},
author = {Hugo Touvron and Matthieu Cord and Alaaeldin El-Nouby and Jakob Verbeek and Herv'e J'egou},
year = {2022}
}
```
```bibtex
@inproceedings{Sandler2022FinetuningIT,
title = {Fine-tuning Image Transformers using Learnable Memory},
author = {Mark Sandler and Andrey Zhmoginov and Max Vladymyrov and Andrew Jackson},
year = {2022}
}
```
```bibtex
@inproceedings{Li2022SepViTSV,
title = {SepViT: Separable Vision Transformer},
author = {Wei Li and Xing Wang and Xin Xia and Jie Wu and Xuefeng Xiao and Minghang Zheng and Shiping Wen},
year = {2022}
}
```
```bibtex
@inproceedings{Tu2022MaxViTMV,
title = {MaxViT: Multi-Axis Vision Transformer},
author = {Zhengzhong Tu and Hossein Talebi and Han Zhang and Feng Yang and Peyman Milanfar and Alan Conrad Bovik and Yinxiao Li},
year = {2022}
}
```
```bibtex
@article{Li2021EfficientSV,
title = {Efficient Self-supervised Vision Transformers for Representation Learning},
author = {Chunyuan Li and Jianwei Yang and Pengchuan Zhang and Mei Gao and Bin Xiao and Xiyang Dai and Lu Yuan and Jianfeng Gao},
journal = {ArXiv},
year = {2021},
volume = {abs/2106.09785}
}
```
```bibtex
@misc{Beyer2022BetterPlainViT
title = {Better plain ViT baselines for ImageNet-1k},
author = {Beyer, Lucas and Zhai, Xiaohua and Kolesnikov, Alexander},
publisher = {arXiv},
year = {2022}
}
```
```bibtex
@article{Arnab2021ViViTAV,
title = {ViViT: A Video Vision Transformer},
author = {Anurag Arnab and Mostafa Dehghani and Georg Heigold and Chen Sun and Mario Lucic and Cordelia Schmid},
journal = {2021 IEEE/CVF International Conference on Computer Vision (ICCV)},
year = {2021},
pages = {6816-6826}
}
```
```bibtex
@article{Liu2022PatchDropoutEV,
title = {PatchDropout: Economizing Vision Transformers Using Patch Dropout},
author = {Yue Liu and Christos Matsoukas and Fredrik Strand and Hossein Azizpour and Kevin Smith},
journal = {ArXiv},
year = {2022},
volume = {abs/2208.07220}
}
```
```bibtex
@misc{https://doi.org/10.48550/arxiv.2302.01327,
doi = {10.48550/ARXIV.2302.01327},
url = {https://arxiv.org/abs/2302.01327},
author = {Kumar, Manoj and Dehghani, Mostafa and Houlsby, Neil},
title = {Dual PatchNorm},
publisher = {arXiv},
year = {2023},
copyright = {Creative Commons Attribution 4.0 International}
}
```
```bibtex
@inproceedings{Dehghani2023PatchNP,
title = {Patch n' Pack: NaViT, a Vision Transformer for any Aspect Ratio and Resolution},
author = {Mostafa Dehghani and Basil Mustafa and Josip Djolonga and Jonathan Heek and Matthias Minderer and Mathilde Caron and Andreas Steiner and Joan Puigcerver and Robert Geirhos and Ibrahim M. Alabdulmohsin and Avital Oliver and Piotr Padlewski and Alexey A. Gritsenko and Mario Luvci'c and Neil Houlsby},
year = {2023}
}
```
```bibtex
@misc{vaswani2017attention,
title = {Attention Is All You Need},
@@ -1247,4 +2011,13 @@ Coming from computer vision and new to transformers? Here are some resources tha
}
```
```bibtex
@inproceedings{dao2022flashattention,
title = {Flash{A}ttention: Fast and Memory-Efficient Exact Attention with {IO}-Awareness},
author = {Dao, Tri and Fu, Daniel Y. and Ermon, Stefano and Rudra, Atri and R{\'e}, Christopher},
booktitle = {Advances in Neural Information Processing Systems},
year = {2022}
}
```
*I visualise a time when we will be to robots what dogs are to humans, and Im rooting for the machines.* — Claude Shannon

View File

@@ -16,7 +16,7 @@
"\n",
"* Dogs vs. Cats Redux: Kernels Edition - https://www.kaggle.com/c/dogs-vs-cats-redux-kernels-edition\n",
"* Base Code - https://www.kaggle.com/reukki/pytorch-cnn-tutorial-with-cats-and-dogs/\n",
"* Effecient Attention Implementation - https://github.com/lucidrains/vit-pytorch#efficient-attention"
"* Efficient Attention Implementation - https://github.com/lucidrains/vit-pytorch#efficient-attention"
]
},
{
@@ -342,7 +342,7 @@
"id": "ZhYDJXk2SRDu"
},
"source": [
"## Image Augumentation"
"## Image Augmentation"
]
},
{
@@ -497,7 +497,7 @@
"id": "TF9yMaRrSvmv"
},
"source": [
"## Effecient Attention"
"## Efficient Attention"
]
},
{
@@ -1307,7 +1307,7 @@
"celltoolbar": "Edit Metadata",
"colab": {
"collapsed_sections": [],
"name": "Effecient Attention | Cats & Dogs",
"name": "Efficient Attention | Cats & Dogs",
"provenance": [],
"toc_visible": true
},

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View File

@@ -3,9 +3,10 @@ from setuptools import setup, find_packages
setup(
name = 'vit-pytorch',
packages = find_packages(exclude=['examples']),
version = '0.25.3',
version = '1.4.5 ',
license='MIT',
description = 'Vision Transformer (ViT) - Pytorch',
long_description_content_type = 'text/markdown',
author = 'Phil Wang',
author_email = 'lucidrains@gmail.com',
url = 'https://github.com/lucidrains/vit-pytorch',
@@ -15,15 +16,17 @@ setup(
'image recognition'
],
install_requires=[
'einops>=0.3',
'torch>=1.6',
'einops>=0.6.1',
'torch>=1.10',
'torchvision'
],
setup_requires=[
'pytest-runner',
],
tests_require=[
'pytest'
'pytest',
'torch==1.12.1',
'torchvision==0.13.1'
],
classifiers=[
'Development Status :: 4 - Beta',

View File

@@ -1,3 +1,12 @@
import torch
from packaging import version
if version.parse(torch.__version__) >= version.parse('2.0.0'):
from einops._torch_specific import allow_ops_in_compiled_graph
allow_ops_in_compiled_graph()
from vit_pytorch.vit import ViT
from vit_pytorch.simple_vit import SimpleViT
from vit_pytorch.mae import MAE
from vit_pytorch.dino import Dino

View File

@@ -110,18 +110,11 @@ class AdaptiveTokenSampling(nn.Module):
# classes
class PreNorm(nn.Module):
def __init__(self, dim, fn):
super().__init__()
self.norm = nn.LayerNorm(dim)
self.fn = fn
def forward(self, x, **kwargs):
return self.fn(self.norm(x), **kwargs)
class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim, dropout = 0.):
super().__init__()
self.net = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, hidden_dim),
nn.GELU(),
nn.Dropout(dropout),
@@ -138,7 +131,10 @@ class Attention(nn.Module):
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = nn.LayerNorm(dim)
self.attend = nn.Softmax(dim = -1)
self.dropout = nn.Dropout(dropout)
self.to_qkv = nn.Linear(dim, inner_dim * 3, bias = False)
self.output_num_tokens = output_num_tokens
@@ -152,6 +148,7 @@ class Attention(nn.Module):
def forward(self, x, *, mask):
num_tokens = x.shape[1]
x = self.norm(x)
qkv = self.to_qkv(x).chunk(3, dim = -1)
q, k, v = map(lambda t: rearrange(t, 'b n (h d) -> b h n d', h = self.heads), qkv)
@@ -163,6 +160,7 @@ class Attention(nn.Module):
dots = dots.masked_fill(~dots_mask, mask_value)
attn = self.attend(dots)
attn = self.dropout(attn)
sampled_token_ids = None
@@ -186,8 +184,8 @@ class Transformer(nn.Module):
self.layers = nn.ModuleList([])
for _, output_num_tokens in zip(range(depth), max_tokens_per_depth):
self.layers.append(nn.ModuleList([
PreNorm(dim, Attention(dim, output_num_tokens = output_num_tokens, heads = heads, dim_head = dim_head, dropout = dropout)),
PreNorm(dim, FeedForward(dim, mlp_dim, dropout = dropout))
Attention(dim, output_num_tokens = output_num_tokens, heads = heads, dim_head = dim_head, dropout = dropout),
FeedForward(dim, mlp_dim, dropout = dropout)
]))
def forward(self, x):
@@ -227,7 +225,9 @@ class ViT(nn.Module):
self.to_patch_embedding = nn.Sequential(
Rearrange('b c (h p1) (w p2) -> b (h w) (p1 p2 c)', p1 = patch_height, p2 = patch_width),
nn.LayerNorm(patch_dim),
nn.Linear(patch_dim, dim),
nn.LayerNorm(dim)
)
self.pos_embedding = nn.Parameter(torch.randn(1, num_patches + 1, dim))

View File

@@ -44,18 +44,11 @@ class LayerScale(nn.Module):
def forward(self, x, **kwargs):
return self.fn(x, **kwargs) * self.scale
class PreNorm(nn.Module):
def __init__(self, dim, fn):
super().__init__()
self.norm = nn.LayerNorm(dim)
self.fn = fn
def forward(self, x, **kwargs):
return self.fn(self.norm(x), **kwargs)
class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim, dropout = 0.):
super().__init__()
self.net = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, hidden_dim),
nn.GELU(),
nn.Dropout(dropout),
@@ -72,10 +65,12 @@ class Attention(nn.Module):
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = nn.LayerNorm(dim)
self.to_q = nn.Linear(dim, inner_dim, bias = False)
self.to_kv = nn.Linear(dim, inner_dim * 2, bias = False)
self.attend = nn.Softmax(dim = -1)
self.dropout = nn.Dropout(dropout)
self.mix_heads_pre_attn = nn.Parameter(torch.randn(heads, heads))
self.mix_heads_post_attn = nn.Parameter(torch.randn(heads, heads))
@@ -88,6 +83,7 @@ class Attention(nn.Module):
def forward(self, x, context = None):
b, n, _, h = *x.shape, self.heads
x = self.norm(x)
context = x if not exists(context) else torch.cat((x, context), dim = 1)
qkv = (self.to_q(x), *self.to_kv(context).chunk(2, dim = -1))
@@ -96,7 +92,10 @@ class Attention(nn.Module):
dots = einsum('b h i d, b h j d -> b h i j', q, k) * self.scale
dots = einsum('b h i j, h g -> b g i j', dots, self.mix_heads_pre_attn) # talking heads, pre-softmax
attn = self.attend(dots)
attn = self.dropout(attn)
attn = einsum('b h i j, h g -> b g i j', attn, self.mix_heads_post_attn) # talking heads, post-softmax
out = einsum('b h i j, b h j d -> b h i d', attn, v)
@@ -111,8 +110,8 @@ class Transformer(nn.Module):
for ind in range(depth):
self.layers.append(nn.ModuleList([
LayerScale(dim, PreNorm(dim, Attention(dim, heads = heads, dim_head = dim_head, dropout = dropout)), depth = ind + 1),
LayerScale(dim, PreNorm(dim, FeedForward(dim, mlp_dim, dropout = dropout)), depth = ind + 1)
LayerScale(dim, Attention(dim, heads = heads, dim_head = dim_head, dropout = dropout), depth = ind + 1),
LayerScale(dim, FeedForward(dim, mlp_dim, dropout = dropout), depth = ind + 1)
]))
def forward(self, x, context = None):
layers = dropout_layers(self.layers, dropout = self.layer_dropout)
@@ -146,7 +145,9 @@ class CaiT(nn.Module):
self.to_patch_embedding = nn.Sequential(
Rearrange('b c (h p1) (w p2) -> b (h w) (p1 p2 c)', p1 = patch_size, p2 = patch_size),
nn.LayerNorm(patch_dim),
nn.Linear(patch_dim, dim),
nn.LayerNorm(dim)
)
self.pos_embedding = nn.Parameter(torch.randn(1, num_patches, dim))

View File

@@ -1,8 +1,22 @@
import torch
import torch.nn as nn
from torch import nn, einsum
import torch.nn.functional as F
# Pre-defined CCT Models
from einops import rearrange, repeat
# helpers
def exists(val):
return val is not None
def default(val, d):
return val if exists(val) else d
def pair(t):
return t if isinstance(t, tuple) else (t, t)
# CCT Models
__all__ = ['cct_2', 'cct_4', 'cct_6', 'cct_7', 'cct_8', 'cct_14', 'cct_16']
@@ -44,8 +58,9 @@ def cct_16(*args, **kwargs):
def _cct(num_layers, num_heads, mlp_ratio, embedding_dim,
kernel_size=3, stride=None, padding=None,
*args, **kwargs):
stride = stride if stride is not None else max(1, (kernel_size // 2) - 1)
padding = padding if padding is not None else max(1, (kernel_size // 2))
stride = default(stride, max(1, (kernel_size // 2) - 1))
padding = default(padding, max(1, (kernel_size // 2)))
return CCT(num_layers=num_layers,
num_heads=num_heads,
mlp_ratio=mlp_ratio,
@@ -55,13 +70,22 @@ def _cct(num_layers, num_heads, mlp_ratio, embedding_dim,
padding=padding,
*args, **kwargs)
# positional
def sinusoidal_embedding(n_channels, dim):
pe = torch.FloatTensor([[p / (10000 ** (2 * (i // 2) / dim)) for i in range(dim)]
for p in range(n_channels)])
pe[:, 0::2] = torch.sin(pe[:, 0::2])
pe[:, 1::2] = torch.cos(pe[:, 1::2])
return rearrange(pe, '... -> 1 ...')
# modules
# Modules
class Attention(nn.Module):
def __init__(self, dim, num_heads=8, attention_dropout=0.1, projection_dropout=0.1):
super().__init__()
self.num_heads = num_heads
head_dim = dim // self.num_heads
self.heads = num_heads
head_dim = dim // self.heads
self.scale = head_dim ** -0.5
self.qkv = nn.Linear(dim, dim * 3, bias=False)
@@ -71,17 +95,20 @@ class Attention(nn.Module):
def forward(self, x):
B, N, C = x.shape
qkv = self.qkv(x).reshape(B, N, 3, self.num_heads, C // self.num_heads).permute(2, 0, 3, 1, 4)
q, k, v = qkv[0], qkv[1], qkv[2]
attn = (q @ k.transpose(-2, -1)) * self.scale
qkv = self.qkv(x).chunk(3, dim = -1)
q, k, v = map(lambda t: rearrange(t, 'b n (h d) -> b h n d', h = self.heads), qkv)
q = q * self.scale
attn = einsum('b h i d, b h j d -> b h i j', q, k)
attn = attn.softmax(dim=-1)
attn = self.attn_drop(attn)
x = (attn @ v).transpose(1, 2).reshape(B, N, C)
x = self.proj(x)
x = self.proj_drop(x)
return x
x = einsum('b h i j, b h j d -> b h i d', attn, v)
x = rearrange(x, 'b h n d -> b n (h d)')
return self.proj_drop(self.proj(x))
class TransformerEncoderLayer(nn.Module):
@@ -91,7 +118,8 @@ class TransformerEncoderLayer(nn.Module):
"""
def __init__(self, d_model, nhead, dim_feedforward=2048, dropout=0.1,
attention_dropout=0.1, drop_path_rate=0.1):
super(TransformerEncoderLayer, self).__init__()
super().__init__()
self.pre_norm = nn.LayerNorm(d_model)
self.self_attn = Attention(dim=d_model, num_heads=nhead,
attention_dropout=attention_dropout, projection_dropout=dropout)
@@ -102,50 +130,34 @@ class TransformerEncoderLayer(nn.Module):
self.linear2 = nn.Linear(dim_feedforward, d_model)
self.dropout2 = nn.Dropout(dropout)
self.drop_path = DropPath(drop_path_rate) if drop_path_rate > 0 else nn.Identity()
self.drop_path = DropPath(drop_path_rate)
self.activation = F.gelu
def forward(self, src: torch.Tensor, *args, **kwargs) -> torch.Tensor:
def forward(self, src, *args, **kwargs):
src = src + self.drop_path(self.self_attn(self.pre_norm(src)))
src = self.norm1(src)
src2 = self.linear2(self.dropout1(self.activation(self.linear1(src))))
src = src + self.drop_path(self.dropout2(src2))
return src
def drop_path(x, drop_prob: float = 0., training: bool = False):
"""
Obtained from: github.com:rwightman/pytorch-image-models
Drop paths (Stochastic Depth) per sample (when applied in main path of residual blocks).
This is the same as the DropConnect impl I created for EfficientNet, etc networks, however,
the original name is misleading as 'Drop Connect' is a different form of dropout in a separate paper...
See discussion: https://github.com/tensorflow/tpu/issues/494#issuecomment-532968956 ... I've opted for
changing the layer and argument names to 'drop path' rather than mix DropConnect as a layer name and use
'survival rate' as the argument.
"""
if drop_prob == 0. or not training:
return x
keep_prob = 1 - drop_prob
shape = (x.shape[0],) + (1,) * (x.ndim - 1) # work with diff dim tensors, not just 2D ConvNets
random_tensor = keep_prob + torch.rand(shape, dtype=x.dtype, device=x.device)
random_tensor.floor_() # binarize
output = x.div(keep_prob) * random_tensor
return output
class DropPath(nn.Module):
"""
Obtained from: github.com:rwightman/pytorch-image-models
Drop paths (Stochastic Depth) per sample (when applied in main path of residual blocks).
"""
def __init__(self, drop_prob=None):
super(DropPath, self).__init__()
self.drop_prob = drop_prob
super().__init__()
self.drop_prob = float(drop_prob)
def forward(self, x):
return drop_path(x, self.drop_prob, self.training)
batch, drop_prob, device, dtype = x.shape[0], self.drop_prob, x.device, x.dtype
if drop_prob <= 0. or not self.training:
return x
keep_prob = 1 - self.drop_prob
shape = (batch, *((1,) * (x.ndim - 1)))
keep_mask = torch.zeros(shape, device = device).float().uniform_(0, 1) < keep_prob
output = x.div(keep_prob) * keep_mask.float()
return output
class Tokenizer(nn.Module):
def __init__(self,
@@ -158,34 +170,35 @@ class Tokenizer(nn.Module):
activation=None,
max_pool=True,
conv_bias=False):
super(Tokenizer, self).__init__()
super().__init__()
n_filter_list = [n_input_channels] + \
[in_planes for _ in range(n_conv_layers - 1)] + \
[n_output_channels]
n_filter_list_pairs = zip(n_filter_list[:-1], n_filter_list[1:])
self.conv_layers = nn.Sequential(
*[nn.Sequential(
nn.Conv2d(n_filter_list[i], n_filter_list[i + 1],
nn.Conv2d(chan_in, chan_out,
kernel_size=(kernel_size, kernel_size),
stride=(stride, stride),
padding=(padding, padding), bias=conv_bias),
nn.Identity() if activation is None else activation(),
nn.Identity() if not exists(activation) else activation(),
nn.MaxPool2d(kernel_size=pooling_kernel_size,
stride=pooling_stride,
padding=pooling_padding) if max_pool else nn.Identity()
)
for i in range(n_conv_layers)
for chan_in, chan_out in n_filter_list_pairs
])
self.flattener = nn.Flatten(2, 3)
self.apply(self.init_weight)
def sequence_length(self, n_channels=3, height=224, width=224):
return self.forward(torch.zeros((1, n_channels, height, width))).shape[1]
def forward(self, x):
return self.flattener(self.conv_layers(x)).transpose(-2, -1)
return rearrange(self.conv_layers(x), 'b c h w -> b (h w) c')
@staticmethod
def init_weight(m):
@@ -208,106 +221,105 @@ class TransformerClassifier(nn.Module):
sequence_length=None,
*args, **kwargs):
super().__init__()
positional_embedding = positional_embedding if \
positional_embedding in ['sine', 'learnable', 'none'] else 'sine'
assert positional_embedding in {'sine', 'learnable', 'none'}
dim_feedforward = int(embedding_dim * mlp_ratio)
self.embedding_dim = embedding_dim
self.sequence_length = sequence_length
self.seq_pool = seq_pool
assert sequence_length is not None or positional_embedding == 'none', \
assert exists(sequence_length) or positional_embedding == 'none', \
f"Positional embedding is set to {positional_embedding} and" \
f" the sequence length was not specified."
if not seq_pool:
sequence_length += 1
self.class_emb = nn.Parameter(torch.zeros(1, 1, self.embedding_dim),
requires_grad=True)
self.class_emb = nn.Parameter(torch.zeros(1, 1, self.embedding_dim), requires_grad=True)
else:
self.attention_pool = nn.Linear(self.embedding_dim, 1)
if positional_embedding != 'none':
if positional_embedding == 'learnable':
self.positional_emb = nn.Parameter(torch.zeros(1, sequence_length, embedding_dim),
requires_grad=True)
nn.init.trunc_normal_(self.positional_emb, std=0.2)
else:
self.positional_emb = nn.Parameter(self.sinusoidal_embedding(sequence_length, embedding_dim),
requires_grad=False)
else:
if positional_embedding == 'none':
self.positional_emb = None
elif positional_embedding == 'learnable':
self.positional_emb = nn.Parameter(torch.zeros(1, sequence_length, embedding_dim),
requires_grad=True)
nn.init.trunc_normal_(self.positional_emb, std=0.2)
else:
self.positional_emb = nn.Parameter(sinusoidal_embedding(sequence_length, embedding_dim),
requires_grad=False)
self.dropout = nn.Dropout(p=dropout_rate)
dpr = [x.item() for x in torch.linspace(0, stochastic_depth_rate, num_layers)]
self.blocks = nn.ModuleList([
TransformerEncoderLayer(d_model=embedding_dim, nhead=num_heads,
dim_feedforward=dim_feedforward, dropout=dropout_rate,
attention_dropout=attention_dropout, drop_path_rate=dpr[i])
for i in range(num_layers)])
attention_dropout=attention_dropout, drop_path_rate=layer_dpr)
for layer_dpr in dpr])
self.norm = nn.LayerNorm(embedding_dim)
self.fc = nn.Linear(embedding_dim, num_classes)
self.apply(self.init_weight)
def forward(self, x):
if self.positional_emb is None and x.size(1) < self.sequence_length:
b = x.shape[0]
if not exists(self.positional_emb) and x.size(1) < self.sequence_length:
x = F.pad(x, (0, 0, 0, self.n_channels - x.size(1)), mode='constant', value=0)
if not self.seq_pool:
cls_token = self.class_emb.expand(x.shape[0], -1, -1)
cls_token = repeat(self.class_emb, '1 1 d -> b 1 d', b = b)
x = torch.cat((cls_token, x), dim=1)
if self.positional_emb is not None:
if exists(self.positional_emb):
x += self.positional_emb
x = self.dropout(x)
for blk in self.blocks:
x = blk(x)
x = self.norm(x)
if self.seq_pool:
x = torch.matmul(F.softmax(self.attention_pool(x), dim=1).transpose(-1, -2), x).squeeze(-2)
attn_weights = rearrange(self.attention_pool(x), 'b n 1 -> b n')
x = einsum('b n, b n d -> b d', attn_weights.softmax(dim = 1), x)
else:
x = x[:, 0]
x = self.fc(x)
return x
return self.fc(x)
@staticmethod
def init_weight(m):
if isinstance(m, nn.Linear):
nn.init.trunc_normal_(m.weight, std=.02)
if isinstance(m, nn.Linear) and m.bias is not None:
if isinstance(m, nn.Linear) and exists(m.bias):
nn.init.constant_(m.bias, 0)
elif isinstance(m, nn.LayerNorm):
nn.init.constant_(m.bias, 0)
nn.init.constant_(m.weight, 1.0)
@staticmethod
def sinusoidal_embedding(n_channels, dim):
pe = torch.FloatTensor([[p / (10000 ** (2 * (i // 2) / dim)) for i in range(dim)]
for p in range(n_channels)])
pe[:, 0::2] = torch.sin(pe[:, 0::2])
pe[:, 1::2] = torch.cos(pe[:, 1::2])
return pe.unsqueeze(0)
# CCT Main model
class CCT(nn.Module):
def __init__(self,
img_size=224,
embedding_dim=768,
n_input_channels=3,
n_conv_layers=1,
kernel_size=7,
stride=2,
padding=3,
pooling_kernel_size=3,
pooling_stride=2,
pooling_padding=1,
*args, **kwargs):
super(CCT, self).__init__()
def __init__(
self,
img_size=224,
embedding_dim=768,
n_input_channels=3,
n_conv_layers=1,
kernel_size=7,
stride=2,
padding=3,
pooling_kernel_size=3,
pooling_stride=2,
pooling_padding=1,
*args, **kwargs
):
super().__init__()
img_height, img_width = pair(img_size)
self.tokenizer = Tokenizer(n_input_channels=n_input_channels,
n_output_channels=embedding_dim,
@@ -324,8 +336,8 @@ class CCT(nn.Module):
self.classifier = TransformerClassifier(
sequence_length=self.tokenizer.sequence_length(n_channels=n_input_channels,
height=img_size,
width=img_size),
height=img_height,
width=img_width),
embedding_dim=embedding_dim,
seq_pool=True,
dropout_rate=0.,
@@ -336,4 +348,3 @@ class CCT(nn.Module):
def forward(self, x):
x = self.tokenizer(x)
return self.classifier(x)

376
vit_pytorch/cct_3d.py Normal file
View File

@@ -0,0 +1,376 @@
import torch
from torch import nn, einsum
import torch.nn.functional as F
from einops import rearrange, repeat
# helpers
def exists(val):
return val is not None
def default(val, d):
return val if exists(val) else d
def pair(t):
return t if isinstance(t, tuple) else (t, t)
# CCT Models
__all__ = ['cct_2', 'cct_4', 'cct_6', 'cct_7', 'cct_8', 'cct_14', 'cct_16']
def cct_2(*args, **kwargs):
return _cct(num_layers=2, num_heads=2, mlp_ratio=1, embedding_dim=128,
*args, **kwargs)
def cct_4(*args, **kwargs):
return _cct(num_layers=4, num_heads=2, mlp_ratio=1, embedding_dim=128,
*args, **kwargs)
def cct_6(*args, **kwargs):
return _cct(num_layers=6, num_heads=4, mlp_ratio=2, embedding_dim=256,
*args, **kwargs)
def cct_7(*args, **kwargs):
return _cct(num_layers=7, num_heads=4, mlp_ratio=2, embedding_dim=256,
*args, **kwargs)
def cct_8(*args, **kwargs):
return _cct(num_layers=8, num_heads=4, mlp_ratio=2, embedding_dim=256,
*args, **kwargs)
def cct_14(*args, **kwargs):
return _cct(num_layers=14, num_heads=6, mlp_ratio=3, embedding_dim=384,
*args, **kwargs)
def cct_16(*args, **kwargs):
return _cct(num_layers=16, num_heads=6, mlp_ratio=3, embedding_dim=384,
*args, **kwargs)
def _cct(num_layers, num_heads, mlp_ratio, embedding_dim,
kernel_size=3, stride=None, padding=None,
*args, **kwargs):
stride = default(stride, max(1, (kernel_size // 2) - 1))
padding = default(padding, max(1, (kernel_size // 2)))
return CCT(num_layers=num_layers,
num_heads=num_heads,
mlp_ratio=mlp_ratio,
embedding_dim=embedding_dim,
kernel_size=kernel_size,
stride=stride,
padding=padding,
*args, **kwargs)
# positional
def sinusoidal_embedding(n_channels, dim):
pe = torch.FloatTensor([[p / (10000 ** (2 * (i // 2) / dim)) for i in range(dim)]
for p in range(n_channels)])
pe[:, 0::2] = torch.sin(pe[:, 0::2])
pe[:, 1::2] = torch.cos(pe[:, 1::2])
return rearrange(pe, '... -> 1 ...')
# modules
class Attention(nn.Module):
def __init__(self, dim, num_heads=8, attention_dropout=0.1, projection_dropout=0.1):
super().__init__()
self.heads = num_heads
head_dim = dim // self.heads
self.scale = head_dim ** -0.5
self.qkv = nn.Linear(dim, dim * 3, bias=False)
self.attn_drop = nn.Dropout(attention_dropout)
self.proj = nn.Linear(dim, dim)
self.proj_drop = nn.Dropout(projection_dropout)
def forward(self, x):
B, N, C = x.shape
qkv = self.qkv(x).chunk(3, dim = -1)
q, k, v = map(lambda t: rearrange(t, 'b n (h d) -> b h n d', h = self.heads), qkv)
q = q * self.scale
attn = einsum('b h i d, b h j d -> b h i j', q, k)
attn = attn.softmax(dim=-1)
attn = self.attn_drop(attn)
x = einsum('b h i j, b h j d -> b h i d', attn, v)
x = rearrange(x, 'b h n d -> b n (h d)')
return self.proj_drop(self.proj(x))
class TransformerEncoderLayer(nn.Module):
"""
Inspired by torch.nn.TransformerEncoderLayer and
rwightman's timm package.
"""
def __init__(self, d_model, nhead, dim_feedforward=2048, dropout=0.1,
attention_dropout=0.1, drop_path_rate=0.1):
super().__init__()
self.pre_norm = nn.LayerNorm(d_model)
self.self_attn = Attention(dim=d_model, num_heads=nhead,
attention_dropout=attention_dropout, projection_dropout=dropout)
self.linear1 = nn.Linear(d_model, dim_feedforward)
self.dropout1 = nn.Dropout(dropout)
self.norm1 = nn.LayerNorm(d_model)
self.linear2 = nn.Linear(dim_feedforward, d_model)
self.dropout2 = nn.Dropout(dropout)
self.drop_path = DropPath(drop_path_rate)
self.activation = F.gelu
def forward(self, src, *args, **kwargs):
src = src + self.drop_path(self.self_attn(self.pre_norm(src)))
src = self.norm1(src)
src2 = self.linear2(self.dropout1(self.activation(self.linear1(src))))
src = src + self.drop_path(self.dropout2(src2))
return src
class DropPath(nn.Module):
def __init__(self, drop_prob=None):
super().__init__()
self.drop_prob = float(drop_prob)
def forward(self, x):
batch, drop_prob, device, dtype = x.shape[0], self.drop_prob, x.device, x.dtype
if drop_prob <= 0. or not self.training:
return x
keep_prob = 1 - self.drop_prob
shape = (batch, *((1,) * (x.ndim - 1)))
keep_mask = torch.zeros(shape, device = device).float().uniform_(0, 1) < keep_prob
output = x.div(keep_prob) * keep_mask.float()
return output
class Tokenizer(nn.Module):
def __init__(
self,
frame_kernel_size,
kernel_size,
stride,
padding,
frame_stride=1,
frame_pooling_stride=1,
frame_pooling_kernel_size=1,
pooling_kernel_size=3,
pooling_stride=2,
pooling_padding=1,
n_conv_layers=1,
n_input_channels=3,
n_output_channels=64,
in_planes=64,
activation=None,
max_pool=True,
conv_bias=False
):
super().__init__()
n_filter_list = [n_input_channels] + \
[in_planes for _ in range(n_conv_layers - 1)] + \
[n_output_channels]
n_filter_list_pairs = zip(n_filter_list[:-1], n_filter_list[1:])
self.conv_layers = nn.Sequential(
*[nn.Sequential(
nn.Conv3d(chan_in, chan_out,
kernel_size=(frame_kernel_size, kernel_size, kernel_size),
stride=(frame_stride, stride, stride),
padding=(frame_kernel_size // 2, padding, padding), bias=conv_bias),
nn.Identity() if not exists(activation) else activation(),
nn.MaxPool3d(kernel_size=(frame_pooling_kernel_size, pooling_kernel_size, pooling_kernel_size),
stride=(frame_pooling_stride, pooling_stride, pooling_stride),
padding=(frame_pooling_kernel_size // 2, pooling_padding, pooling_padding)) if max_pool else nn.Identity()
)
for chan_in, chan_out in n_filter_list_pairs
])
self.apply(self.init_weight)
def sequence_length(self, n_channels=3, frames=8, height=224, width=224):
return self.forward(torch.zeros((1, n_channels, frames, height, width))).shape[1]
def forward(self, x):
x = self.conv_layers(x)
return rearrange(x, 'b c f h w -> b (f h w) c')
@staticmethod
def init_weight(m):
if isinstance(m, nn.Conv3d):
nn.init.kaiming_normal_(m.weight)
class TransformerClassifier(nn.Module):
def __init__(
self,
seq_pool=True,
embedding_dim=768,
num_layers=12,
num_heads=12,
mlp_ratio=4.0,
num_classes=1000,
dropout_rate=0.1,
attention_dropout=0.1,
stochastic_depth_rate=0.1,
positional_embedding='sine',
sequence_length=None,
*args, **kwargs
):
super().__init__()
assert positional_embedding in {'sine', 'learnable', 'none'}
dim_feedforward = int(embedding_dim * mlp_ratio)
self.embedding_dim = embedding_dim
self.sequence_length = sequence_length
self.seq_pool = seq_pool
assert exists(sequence_length) or positional_embedding == 'none', \
f"Positional embedding is set to {positional_embedding} and" \
f" the sequence length was not specified."
if not seq_pool:
sequence_length += 1
self.class_emb = nn.Parameter(torch.zeros(1, 1, self.embedding_dim))
else:
self.attention_pool = nn.Linear(self.embedding_dim, 1)
if positional_embedding == 'none':
self.positional_emb = None
elif positional_embedding == 'learnable':
self.positional_emb = nn.Parameter(torch.zeros(1, sequence_length, embedding_dim))
nn.init.trunc_normal_(self.positional_emb, std = 0.2)
else:
self.register_buffer('positional_emb', sinusoidal_embedding(sequence_length, embedding_dim))
self.dropout = nn.Dropout(p=dropout_rate)
dpr = [x.item() for x in torch.linspace(0, stochastic_depth_rate, num_layers)]
self.blocks = nn.ModuleList([
TransformerEncoderLayer(d_model=embedding_dim, nhead=num_heads,
dim_feedforward=dim_feedforward, dropout=dropout_rate,
attention_dropout=attention_dropout, drop_path_rate=layer_dpr)
for layer_dpr in dpr])
self.norm = nn.LayerNorm(embedding_dim)
self.fc = nn.Linear(embedding_dim, num_classes)
self.apply(self.init_weight)
@staticmethod
def init_weight(m):
if isinstance(m, nn.Linear):
nn.init.trunc_normal_(m.weight, std=.02)
if isinstance(m, nn.Linear) and exists(m.bias):
nn.init.constant_(m.bias, 0)
elif isinstance(m, nn.LayerNorm):
nn.init.constant_(m.bias, 0)
nn.init.constant_(m.weight, 1.0)
def forward(self, x):
b = x.shape[0]
if not exists(self.positional_emb) and x.size(1) < self.sequence_length:
x = F.pad(x, (0, 0, 0, self.n_channels - x.size(1)), mode='constant', value=0)
if not self.seq_pool:
cls_token = repeat(self.class_emb, '1 1 d -> b 1 d', b = b)
x = torch.cat((cls_token, x), dim=1)
if exists(self.positional_emb):
x += self.positional_emb
x = self.dropout(x)
for blk in self.blocks:
x = blk(x)
x = self.norm(x)
if self.seq_pool:
attn_weights = rearrange(self.attention_pool(x), 'b n 1 -> b n')
x = einsum('b n, b n d -> b d', attn_weights.softmax(dim = 1), x)
else:
x = x[:, 0]
return self.fc(x)
# CCT Main model
class CCT(nn.Module):
def __init__(
self,
img_size=224,
num_frames=8,
embedding_dim=768,
n_input_channels=3,
n_conv_layers=1,
frame_stride=1,
frame_kernel_size=3,
frame_pooling_kernel_size=1,
frame_pooling_stride=1,
kernel_size=7,
stride=2,
padding=3,
pooling_kernel_size=3,
pooling_stride=2,
pooling_padding=1,
*args, **kwargs
):
super().__init__()
img_height, img_width = pair(img_size)
self.tokenizer = Tokenizer(
n_input_channels=n_input_channels,
n_output_channels=embedding_dim,
frame_stride=frame_stride,
frame_kernel_size=frame_kernel_size,
frame_pooling_stride=frame_pooling_stride,
frame_pooling_kernel_size=frame_pooling_kernel_size,
kernel_size=kernel_size,
stride=stride,
padding=padding,
pooling_kernel_size=pooling_kernel_size,
pooling_stride=pooling_stride,
pooling_padding=pooling_padding,
max_pool=True,
activation=nn.ReLU,
n_conv_layers=n_conv_layers,
conv_bias=False
)
self.classifier = TransformerClassifier(
sequence_length=self.tokenizer.sequence_length(
n_channels=n_input_channels,
frames=num_frames,
height=img_height,
width=img_width
),
embedding_dim=embedding_dim,
seq_pool=True,
dropout_rate=0.,
attention_dropout=0.1,
stochastic_depth=0.1,
*args, **kwargs
)
def forward(self, x):
x = self.tokenizer(x)
return self.classifier(x)

View File

@@ -13,22 +13,13 @@ def exists(val):
def default(val, d):
return val if exists(val) else d
# pre-layernorm
class PreNorm(nn.Module):
def __init__(self, dim, fn):
super().__init__()
self.norm = nn.LayerNorm(dim)
self.fn = fn
def forward(self, x, **kwargs):
return self.fn(self.norm(x), **kwargs)
# feedforward
class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim, dropout = 0.):
super().__init__()
self.net = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, hidden_dim),
nn.GELU(),
nn.Dropout(dropout),
@@ -47,7 +38,10 @@ class Attention(nn.Module):
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = nn.LayerNorm(dim)
self.attend = nn.Softmax(dim = -1)
self.dropout = nn.Dropout(dropout)
self.to_q = nn.Linear(dim, inner_dim, bias = False)
self.to_kv = nn.Linear(dim, inner_dim * 2, bias = False)
@@ -58,6 +52,7 @@ class Attention(nn.Module):
def forward(self, x, context = None, kv_include_self = False):
b, n, _, h = *x.shape, self.heads
x = self.norm(x)
context = default(context, x)
if kv_include_self:
@@ -69,6 +64,7 @@ class Attention(nn.Module):
dots = einsum('b h i d, b h j d -> b h i j', q, k) * self.scale
attn = self.attend(dots)
attn = self.dropout(attn)
out = einsum('b h i j, b h j d -> b h i d', attn, v)
out = rearrange(out, 'b h n d -> b n (h d)')
@@ -83,8 +79,8 @@ class Transformer(nn.Module):
self.norm = nn.LayerNorm(dim)
for _ in range(depth):
self.layers.append(nn.ModuleList([
PreNorm(dim, Attention(dim, heads = heads, dim_head = dim_head, dropout = dropout)),
PreNorm(dim, FeedForward(dim, mlp_dim, dropout = dropout))
Attention(dim, heads = heads, dim_head = dim_head, dropout = dropout),
FeedForward(dim, mlp_dim, dropout = dropout)
]))
def forward(self, x):
@@ -118,8 +114,8 @@ class CrossTransformer(nn.Module):
self.layers = nn.ModuleList([])
for _ in range(depth):
self.layers.append(nn.ModuleList([
ProjectInOut(sm_dim, lg_dim, PreNorm(lg_dim, Attention(lg_dim, heads = heads, dim_head = dim_head, dropout = dropout))),
ProjectInOut(lg_dim, sm_dim, PreNorm(sm_dim, Attention(sm_dim, heads = heads, dim_head = dim_head, dropout = dropout)))
ProjectInOut(sm_dim, lg_dim, Attention(lg_dim, heads = heads, dim_head = dim_head, dropout = dropout)),
ProjectInOut(lg_dim, sm_dim, Attention(sm_dim, heads = heads, dim_head = dim_head, dropout = dropout))
]))
def forward(self, sm_tokens, lg_tokens):
@@ -183,7 +179,9 @@ class ImageEmbedder(nn.Module):
self.to_patch_embedding = nn.Sequential(
Rearrange('b c (h p1) (w p2) -> b (h w) (p1 p2 c)', p1 = patch_size, p2 = patch_size),
nn.LayerNorm(patch_dim),
nn.Linear(patch_dim, dim),
nn.LayerNorm(dim)
)
self.pos_embedding = nn.Parameter(torch.randn(1, num_patches + 1, dim))

View File

@@ -62,9 +62,9 @@ class LayerNorm(nn.Module):
self.b = nn.Parameter(torch.zeros(1, dim, 1, 1))
def forward(self, x):
std = torch.var(x, dim = 1, unbiased = False, keepdim = True).sqrt()
var = torch.var(x, dim = 1, unbiased = False, keepdim = True)
mean = torch.mean(x, dim = 1, keepdim = True)
return (x - mean) / (std + self.eps) * self.g + self.b
return (x - mean) / (var + self.eps).sqrt() * self.g + self.b
def FeedForward(dim, mult = 4, dropout = 0.):
return nn.Sequential(
@@ -95,6 +95,9 @@ class Attention(nn.Module):
self.window_size = window_size
self.norm = LayerNorm(dim)
self.dropout = nn.Dropout(dropout)
self.to_qkv = nn.Conv2d(dim, inner_dim * 3, 1, bias = False)
self.to_out = nn.Conv2d(inner_dim, dim, 1)
@@ -105,7 +108,7 @@ class Attention(nn.Module):
# calculate and store indices for retrieving bias
pos = torch.arange(window_size)
grid = torch.stack(torch.meshgrid(pos, pos))
grid = torch.stack(torch.meshgrid(pos, pos, indexing = 'ij'))
grid = rearrange(grid, 'c i j -> (i j) c')
rel_pos = grid[:, None] - grid[None, :]
rel_pos += window_size - 1
@@ -141,7 +144,7 @@ class Attention(nn.Module):
# add dynamic positional bias
pos = torch.arange(-wsz, wsz + 1, device = device)
rel_pos = torch.stack(torch.meshgrid(pos, pos))
rel_pos = torch.stack(torch.meshgrid(pos, pos, indexing = 'ij'))
rel_pos = rearrange(rel_pos, 'c i j -> (i j) c')
biases = self.dpb(rel_pos.float())
rel_pos_bias = biases[self.rel_pos_indices]
@@ -151,6 +154,7 @@ class Attention(nn.Module):
# attend
attn = sim.softmax(dim = -1)
attn = self.dropout(attn)
# merge heads

View File

@@ -30,23 +30,15 @@ class LayerNorm(nn.Module): # layernorm, but done in the channel dimension #1
self.b = nn.Parameter(torch.zeros(1, dim, 1, 1))
def forward(self, x):
std = torch.var(x, dim = 1, unbiased = False, keepdim = True).sqrt()
var = torch.var(x, dim = 1, unbiased = False, keepdim = True)
mean = torch.mean(x, dim = 1, keepdim = True)
return (x - mean) / (std + self.eps) * self.g + self.b
class PreNorm(nn.Module):
def __init__(self, dim, fn):
super().__init__()
self.norm = LayerNorm(dim)
self.fn = fn
def forward(self, x, **kwargs):
x = self.norm(x)
return self.fn(x, **kwargs)
return (x - mean) / (var + self.eps).sqrt() * self.g + self.b
class FeedForward(nn.Module):
def __init__(self, dim, mult = 4, dropout = 0.):
super().__init__()
self.net = nn.Sequential(
LayerNorm(dim),
nn.Conv2d(dim, dim * mult, 1),
nn.GELU(),
nn.Dropout(dropout),
@@ -75,7 +67,9 @@ class Attention(nn.Module):
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = LayerNorm(dim)
self.attend = nn.Softmax(dim = -1)
self.dropout = nn.Dropout(dropout)
self.to_q = DepthWiseConv2d(dim, inner_dim, proj_kernel, padding = padding, stride = 1, bias = False)
self.to_kv = DepthWiseConv2d(dim, inner_dim * 2, proj_kernel, padding = padding, stride = kv_proj_stride, bias = False)
@@ -88,12 +82,15 @@ class Attention(nn.Module):
def forward(self, x):
shape = x.shape
b, n, _, y, h = *shape, self.heads
x = self.norm(x)
q, k, v = (self.to_q(x), *self.to_kv(x).chunk(2, dim = 1))
q, k, v = map(lambda t: rearrange(t, 'b (h d) x y -> (b h) (x y) d', h = h), (q, k, v))
dots = einsum('b i d, b j d -> b i j', q, k) * self.scale
attn = self.attend(dots)
attn = self.dropout(attn)
out = einsum('b i j, b j d -> b i d', attn, v)
out = rearrange(out, '(b h) (x y) d -> b (h d) x y', h = h, y = y)
@@ -105,8 +102,8 @@ class Transformer(nn.Module):
self.layers = nn.ModuleList([])
for _ in range(depth):
self.layers.append(nn.ModuleList([
PreNorm(dim, Attention(dim, proj_kernel = proj_kernel, kv_proj_stride = kv_proj_stride, heads = heads, dim_head = dim_head, dropout = dropout)),
PreNorm(dim, FeedForward(dim, mlp_mult, dropout = dropout))
Attention(dim, proj_kernel = proj_kernel, kv_proj_stride = kv_proj_stride, heads = heads, dim_head = dim_head, dropout = dropout),
FeedForward(dim, mlp_mult, dropout = dropout)
]))
def forward(self, x):
for attn, ff in self.layers:
@@ -162,12 +159,14 @@ class CvT(nn.Module):
dim = config['emb_dim']
self.layers = nn.Sequential(
*layers,
self.layers = nn.Sequential(*layers)
self.to_logits = nn.Sequential(
nn.AdaptiveAvgPool2d(1),
Rearrange('... () () -> ...'),
nn.Linear(dim, num_classes)
)
def forward(self, x):
return self.layers(x)
latents = self.layers(x)
return self.to_logits(latents)

View File

@@ -5,25 +5,11 @@ import torch.nn.functional as F
from einops import rearrange, repeat
from einops.layers.torch import Rearrange
class Residual(nn.Module):
def __init__(self, fn):
super().__init__()
self.fn = fn
def forward(self, x, **kwargs):
return self.fn(x, **kwargs) + x
class PreNorm(nn.Module):
def __init__(self, dim, fn):
super().__init__()
self.norm = nn.LayerNorm(dim)
self.fn = fn
def forward(self, x, **kwargs):
return self.fn(self.norm(x), **kwargs)
class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim, dropout = 0.):
super().__init__()
self.net = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, hidden_dim),
nn.GELU(),
nn.Dropout(dropout),
@@ -40,8 +26,11 @@ class Attention(nn.Module):
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = nn.LayerNorm(dim)
self.to_qkv = nn.Linear(dim, inner_dim * 3, bias = False)
self.dropout = nn.Dropout(dropout)
self.reattn_weights = nn.Parameter(torch.randn(heads, heads))
self.reattn_norm = nn.Sequential(
@@ -57,6 +46,8 @@ class Attention(nn.Module):
def forward(self, x):
b, n, _, h = *x.shape, self.heads
x = self.norm(x)
qkv = self.to_qkv(x).chunk(3, dim = -1)
q, k, v = map(lambda t: rearrange(t, 'b n (h d) -> b h n d', h = h), qkv)
@@ -64,6 +55,7 @@ class Attention(nn.Module):
dots = einsum('b h i d, b h j d -> b h i j', q, k) * self.scale
attn = dots.softmax(dim=-1)
attn = self.dropout(attn)
# re-attention
@@ -83,13 +75,13 @@ class Transformer(nn.Module):
self.layers = nn.ModuleList([])
for _ in range(depth):
self.layers.append(nn.ModuleList([
Residual(PreNorm(dim, Attention(dim, heads = heads, dim_head = dim_head, dropout = dropout))),
Residual(PreNorm(dim, FeedForward(dim, mlp_dim, dropout = dropout)))
Attention(dim, heads = heads, dim_head = dim_head, dropout = dropout),
FeedForward(dim, mlp_dim, dropout = dropout)
]))
def forward(self, x):
for attn, ff in self.layers:
x = attn(x)
x = ff(x)
x = attn(x) + x
x = ff(x) + x
return x
class DeepViT(nn.Module):
@@ -102,7 +94,9 @@ class DeepViT(nn.Module):
self.to_patch_embedding = nn.Sequential(
Rearrange('b c (h p1) (w p2) -> b (h w) (p1 p2 c)', p1 = patch_size, p2 = patch_size),
nn.LayerNorm(patch_dim),
nn.Linear(patch_dim, dim),
nn.LayerNorm(dim)
)
self.pos_embedding = nn.Parameter(torch.randn(1, num_patches + 1, dim))

View File

@@ -3,17 +3,23 @@ from torch import nn
from einops import rearrange, repeat
from einops.layers.torch import Rearrange
def pair(t):
return t if isinstance(t, tuple) else (t, t)
class ViT(nn.Module):
def __init__(self, *, image_size, patch_size, num_classes, dim, transformer, pool = 'cls', channels = 3):
super().__init__()
assert image_size % patch_size == 0, 'image dimensions must be divisible by the patch size'
image_size_h, image_size_w = pair(image_size)
assert image_size_h % patch_size == 0 and image_size_w % patch_size == 0, 'image dimensions must be divisible by the patch size'
assert pool in {'cls', 'mean'}, 'pool type must be either cls (cls token) or mean (mean pooling)'
num_patches = (image_size // patch_size) ** 2
num_patches = (image_size_h // patch_size) * (image_size_w // patch_size)
patch_dim = channels * patch_size ** 2
self.to_patch_embedding = nn.Sequential(
Rearrange('b c (h p1) (w p2) -> b (h w) (p1 p2 c)', p1 = patch_size, p2 = patch_size),
nn.LayerNorm(patch_dim),
nn.Linear(patch_dim, dim),
nn.LayerNorm(dim)
)
self.pos_embedding = nn.Parameter(torch.randn(1, num_patches + 1, dim))

367
vit_pytorch/es_vit.py Normal file
View File

@@ -0,0 +1,367 @@
import copy
import random
from functools import wraps, partial
import torch
from torch import nn, einsum
import torch.nn.functional as F
from torchvision import transforms as T
from einops import rearrange, reduce, repeat
# helper functions
def exists(val):
return val is not None
def default(val, default):
return val if exists(val) else default
def singleton(cache_key):
def inner_fn(fn):
@wraps(fn)
def wrapper(self, *args, **kwargs):
instance = getattr(self, cache_key)
if instance is not None:
return instance
instance = fn(self, *args, **kwargs)
setattr(self, cache_key, instance)
return instance
return wrapper
return inner_fn
def get_module_device(module):
return next(module.parameters()).device
def set_requires_grad(model, val):
for p in model.parameters():
p.requires_grad = val
# tensor related helpers
def log(t, eps = 1e-20):
return torch.log(t + eps)
# loss function # (algorithm 1 in the paper)
def view_loss_fn(
teacher_logits,
student_logits,
teacher_temp,
student_temp,
centers,
eps = 1e-20
):
teacher_logits = teacher_logits.detach()
student_probs = (student_logits / student_temp).softmax(dim = -1)
teacher_probs = ((teacher_logits - centers) / teacher_temp).softmax(dim = -1)
return - (teacher_probs * log(student_probs, eps)).sum(dim = -1).mean()
def region_loss_fn(
teacher_logits,
student_logits,
teacher_latent,
student_latent,
teacher_temp,
student_temp,
centers,
eps = 1e-20
):
teacher_logits = teacher_logits.detach()
student_probs = (student_logits / student_temp).softmax(dim = -1)
teacher_probs = ((teacher_logits - centers) / teacher_temp).softmax(dim = -1)
sim_matrix = einsum('b i d, b j d -> b i j', student_latent, teacher_latent)
sim_indices = sim_matrix.max(dim = -1).indices
sim_indices = repeat(sim_indices, 'b n -> b n k', k = teacher_probs.shape[-1])
max_sim_teacher_probs = teacher_probs.gather(1, sim_indices)
return - (max_sim_teacher_probs * log(student_probs, eps)).sum(dim = -1).mean()
# augmentation utils
class RandomApply(nn.Module):
def __init__(self, fn, p):
super().__init__()
self.fn = fn
self.p = p
def forward(self, x):
if random.random() > self.p:
return x
return self.fn(x)
# exponential moving average
class EMA():
def __init__(self, beta):
super().__init__()
self.beta = beta
def update_average(self, old, new):
if old is None:
return new
return old * self.beta + (1 - self.beta) * new
def update_moving_average(ema_updater, ma_model, current_model):
for current_params, ma_params in zip(current_model.parameters(), ma_model.parameters()):
old_weight, up_weight = ma_params.data, current_params.data
ma_params.data = ema_updater.update_average(old_weight, up_weight)
# MLP class for projector and predictor
class L2Norm(nn.Module):
def forward(self, x, eps = 1e-6):
return F.normalize(x, dim = 1, eps = eps)
class MLP(nn.Module):
def __init__(self, dim, dim_out, num_layers, hidden_size = 256):
super().__init__()
layers = []
dims = (dim, *((hidden_size,) * (num_layers - 1)))
for ind, (layer_dim_in, layer_dim_out) in enumerate(zip(dims[:-1], dims[1:])):
is_last = ind == (len(dims) - 1)
layers.extend([
nn.Linear(layer_dim_in, layer_dim_out),
nn.GELU() if not is_last else nn.Identity()
])
self.net = nn.Sequential(
*layers,
L2Norm(),
nn.Linear(hidden_size, dim_out)
)
def forward(self, x):
return self.net(x)
# a wrapper class for the base neural network
# will manage the interception of the hidden layer output
# and pipe it into the projecter and predictor nets
class NetWrapper(nn.Module):
def __init__(self, net, output_dim, projection_hidden_size, projection_num_layers, layer = -2):
super().__init__()
self.net = net
self.layer = layer
self.view_projector = None
self.region_projector = None
self.projection_hidden_size = projection_hidden_size
self.projection_num_layers = projection_num_layers
self.output_dim = output_dim
self.hidden = {}
self.hook_registered = False
def _find_layer(self):
if type(self.layer) == str:
modules = dict([*self.net.named_modules()])
return modules.get(self.layer, None)
elif type(self.layer) == int:
children = [*self.net.children()]
return children[self.layer]
return None
def _hook(self, _, input, output):
device = input[0].device
self.hidden[device] = output
def _register_hook(self):
layer = self._find_layer()
assert layer is not None, f'hidden layer ({self.layer}) not found'
handle = layer.register_forward_hook(self._hook)
self.hook_registered = True
@singleton('view_projector')
def _get_view_projector(self, hidden):
dim = hidden.shape[1]
projector = MLP(dim, self.output_dim, self.projection_num_layers, self.projection_hidden_size)
return projector.to(hidden)
@singleton('region_projector')
def _get_region_projector(self, hidden):
dim = hidden.shape[1]
projector = MLP(dim, self.output_dim, self.projection_num_layers, self.projection_hidden_size)
return projector.to(hidden)
def get_embedding(self, x):
if self.layer == -1:
return self.net(x)
if not self.hook_registered:
self._register_hook()
self.hidden.clear()
_ = self.net(x)
hidden = self.hidden[x.device]
self.hidden.clear()
assert hidden is not None, f'hidden layer {self.layer} never emitted an output'
return hidden
def forward(self, x, return_projection = True):
region_latents = self.get_embedding(x)
global_latent = reduce(region_latents, 'b c h w -> b c', 'mean')
if not return_projection:
return global_latent, region_latents
view_projector = self._get_view_projector(global_latent)
region_projector = self._get_region_projector(region_latents)
region_latents = rearrange(region_latents, 'b c h w -> b (h w) c')
return view_projector(global_latent), region_projector(region_latents), region_latents
# main class
class EsViTTrainer(nn.Module):
def __init__(
self,
net,
image_size,
hidden_layer = -2,
projection_hidden_size = 256,
num_classes_K = 65336,
projection_layers = 4,
student_temp = 0.9,
teacher_temp = 0.04,
local_upper_crop_scale = 0.4,
global_lower_crop_scale = 0.5,
moving_average_decay = 0.9,
center_moving_average_decay = 0.9,
augment_fn = None,
augment_fn2 = None
):
super().__init__()
self.net = net
# default BYOL augmentation
DEFAULT_AUG = torch.nn.Sequential(
RandomApply(
T.ColorJitter(0.8, 0.8, 0.8, 0.2),
p = 0.3
),
T.RandomGrayscale(p=0.2),
T.RandomHorizontalFlip(),
RandomApply(
T.GaussianBlur((3, 3), (1.0, 2.0)),
p = 0.2
),
T.Normalize(
mean=torch.tensor([0.485, 0.456, 0.406]),
std=torch.tensor([0.229, 0.224, 0.225])),
)
self.augment1 = default(augment_fn, DEFAULT_AUG)
self.augment2 = default(augment_fn2, DEFAULT_AUG)
# local and global crops
self.local_crop = T.RandomResizedCrop((image_size, image_size), scale = (0.05, local_upper_crop_scale))
self.global_crop = T.RandomResizedCrop((image_size, image_size), scale = (global_lower_crop_scale, 1.))
self.student_encoder = NetWrapper(net, num_classes_K, projection_hidden_size, projection_layers, layer = hidden_layer)
self.teacher_encoder = None
self.teacher_ema_updater = EMA(moving_average_decay)
self.register_buffer('teacher_view_centers', torch.zeros(1, num_classes_K))
self.register_buffer('last_teacher_view_centers', torch.zeros(1, num_classes_K))
self.register_buffer('teacher_region_centers', torch.zeros(1, num_classes_K))
self.register_buffer('last_teacher_region_centers', torch.zeros(1, num_classes_K))
self.teacher_centering_ema_updater = EMA(center_moving_average_decay)
self.student_temp = student_temp
self.teacher_temp = teacher_temp
# get device of network and make wrapper same device
device = get_module_device(net)
self.to(device)
# send a mock image tensor to instantiate singleton parameters
self.forward(torch.randn(2, 3, image_size, image_size, device=device))
@singleton('teacher_encoder')
def _get_teacher_encoder(self):
teacher_encoder = copy.deepcopy(self.student_encoder)
set_requires_grad(teacher_encoder, False)
return teacher_encoder
def reset_moving_average(self):
del self.teacher_encoder
self.teacher_encoder = None
def update_moving_average(self):
assert self.teacher_encoder is not None, 'target encoder has not been created yet'
update_moving_average(self.teacher_ema_updater, self.teacher_encoder, self.student_encoder)
new_teacher_view_centers = self.teacher_centering_ema_updater.update_average(self.teacher_view_centers, self.last_teacher_view_centers)
self.teacher_view_centers.copy_(new_teacher_view_centers)
new_teacher_region_centers = self.teacher_centering_ema_updater.update_average(self.teacher_region_centers, self.last_teacher_region_centers)
self.teacher_region_centers.copy_(new_teacher_region_centers)
def forward(
self,
x,
return_embedding = False,
return_projection = True,
student_temp = None,
teacher_temp = None
):
if return_embedding:
return self.student_encoder(x, return_projection = return_projection)
image_one, image_two = self.augment1(x), self.augment2(x)
local_image_one, local_image_two = self.local_crop(image_one), self.local_crop(image_two)
global_image_one, global_image_two = self.global_crop(image_one), self.global_crop(image_two)
student_view_proj_one, student_region_proj_one, student_latent_one = self.student_encoder(local_image_one)
student_view_proj_two, student_region_proj_two, student_latent_two = self.student_encoder(local_image_two)
with torch.no_grad():
teacher_encoder = self._get_teacher_encoder()
teacher_view_proj_one, teacher_region_proj_one, teacher_latent_one = teacher_encoder(global_image_one)
teacher_view_proj_two, teacher_region_proj_two, teacher_latent_two = teacher_encoder(global_image_two)
view_loss_fn_ = partial(
view_loss_fn,
student_temp = default(student_temp, self.student_temp),
teacher_temp = default(teacher_temp, self.teacher_temp),
centers = self.teacher_view_centers
)
region_loss_fn_ = partial(
region_loss_fn,
student_temp = default(student_temp, self.student_temp),
teacher_temp = default(teacher_temp, self.teacher_temp),
centers = self.teacher_region_centers
)
# calculate view-level loss
teacher_view_logits_avg = torch.cat((teacher_view_proj_one, teacher_view_proj_two)).mean(dim = 0)
self.last_teacher_view_centers.copy_(teacher_view_logits_avg)
teacher_region_logits_avg = torch.cat((teacher_region_proj_one, teacher_region_proj_two)).mean(dim = (0, 1))
self.last_teacher_region_centers.copy_(teacher_region_logits_avg)
view_loss = (view_loss_fn_(teacher_view_proj_one, student_view_proj_two) \
+ view_loss_fn_(teacher_view_proj_two, student_view_proj_one)) / 2
# calculate region-level loss
region_loss = (region_loss_fn_(teacher_region_proj_one, student_region_proj_two, teacher_latent_one, student_latent_two) \
+ region_loss_fn_(teacher_region_proj_two, student_region_proj_one, teacher_latent_two, student_latent_one)) / 2
return (view_loss + region_loss) / 2

View File

@@ -4,8 +4,28 @@ from torch import nn
def exists(val):
return val is not None
def identity(t):
return t
def clone_and_detach(t):
return t.clone().detach()
def apply_tuple_or_single(fn, val):
if isinstance(val, tuple):
return tuple(map(fn, val))
return fn(val)
class Extractor(nn.Module):
def __init__(self, vit, device = None):
def __init__(
self,
vit,
device = None,
layer = None,
layer_name = 'transformer',
layer_save_input = False,
return_embeddings_only = False,
detach = True
):
super().__init__()
self.vit = vit
@@ -16,11 +36,25 @@ class Extractor(nn.Module):
self.ejected = False
self.device = device
def _hook(self, _, input, output):
self.latents = output.clone().detach()
self.layer = layer
self.layer_name = layer_name
self.layer_save_input = layer_save_input # whether to save input or output of layer
self.return_embeddings_only = return_embeddings_only
self.detach_fn = clone_and_detach if detach else identity
def _hook(self, _, inputs, output):
layer_output = inputs if self.layer_save_input else output
self.latents = apply_tuple_or_single(self.detach_fn, layer_output)
def _register_hook(self):
handle = self.vit.transformer.register_forward_hook(self._hook)
if not exists(self.layer):
assert hasattr(self.vit, self.layer_name), 'layer whose output to take as embedding not found in vision transformer'
layer = getattr(self.vit, self.layer_name)
else:
layer = self.layer
handle = layer.register_forward_hook(self._hook)
self.hooks.append(handle)
self.hook_registered = True
@@ -35,7 +69,11 @@ class Extractor(nn.Module):
del self.latents
self.latents = None
def forward(self, img):
def forward(
self,
img,
return_embeddings_only = False
):
assert not self.ejected, 'extractor has been ejected, cannot be used anymore'
self.clear()
if not self.hook_registered:
@@ -44,5 +82,9 @@ class Extractor(nn.Module):
pred = self.vit(img)
target_device = self.device if exists(self.device) else img.device
latents = self.latents.to(target_device)
latents = apply_tuple_or_single(lambda t: t.to(target_device), self.latents)
if return_embeddings_only or self.return_embeddings_only:
return latents
return pred, latents

View File

@@ -0,0 +1,218 @@
import torch
from torch import nn
import torch.nn.functional as F
from einops import rearrange, repeat
from einops.layers.torch import Rearrange
# helpers
def exists(val):
return val is not None
def pair(t):
return t if isinstance(t, tuple) else (t, t)
# controlling freezing of layers
def set_module_requires_grad_(module, requires_grad):
for param in module.parameters():
param.requires_grad = requires_grad
def freeze_all_layers_(module):
set_module_requires_grad_(module, False)
def unfreeze_all_layers_(module):
set_module_requires_grad_(module, True)
# classes
class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim, dropout = 0.):
super().__init__()
self.net = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, hidden_dim),
nn.GELU(),
nn.Dropout(dropout),
nn.Linear(hidden_dim, dim),
nn.Dropout(dropout)
)
def forward(self, x):
return self.net(x)
class Attention(nn.Module):
def __init__(self, dim, heads = 8, dim_head = 64, dropout = 0.):
super().__init__()
inner_dim = dim_head * heads
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = nn.LayerNorm(dim)
self.attend = nn.Softmax(dim = -1)
self.dropout = nn.Dropout(dropout)
self.to_q = nn.Linear(dim, inner_dim, bias = False)
self.to_kv = nn.Linear(dim, inner_dim * 2, bias = False)
self.to_out = nn.Sequential(
nn.Linear(inner_dim, dim),
nn.Dropout(dropout)
)
def forward(self, x, attn_mask = None, memories = None):
x = self.norm(x)
x_kv = x # input for key / values projection
if exists(memories):
# add memories to key / values if it is passed in
memories = repeat(memories, 'n d -> b n d', b = x.shape[0]) if memories.ndim == 2 else memories
x_kv = torch.cat((x_kv, memories), dim = 1)
qkv = (self.to_q(x), *self.to_kv(x_kv).chunk(2, dim = -1))
q, k, v = map(lambda t: rearrange(t, 'b n (h d) -> b h n d', h = self.heads), qkv)
dots = torch.matmul(q, k.transpose(-1, -2)) * self.scale
if exists(attn_mask):
dots = dots.masked_fill(~attn_mask, -torch.finfo(dots.dtype).max)
attn = self.attend(dots)
attn = self.dropout(attn)
out = torch.matmul(attn, v)
out = rearrange(out, 'b h n d -> b n (h d)')
return self.to_out(out)
class Transformer(nn.Module):
def __init__(self, dim, depth, heads, dim_head, mlp_dim, dropout = 0.):
super().__init__()
self.layers = nn.ModuleList([])
for _ in range(depth):
self.layers.append(nn.ModuleList([
Attention(dim, heads = heads, dim_head = dim_head, dropout = dropout),
FeedForward(dim, mlp_dim, dropout = dropout)
]))
def forward(self, x, attn_mask = None, memories = None):
for ind, (attn, ff) in enumerate(self.layers):
layer_memories = memories[ind] if exists(memories) else None
x = attn(x, attn_mask = attn_mask, memories = layer_memories) + x
x = ff(x) + x
return x
class ViT(nn.Module):
def __init__(self, *, image_size, patch_size, num_classes, dim, depth, heads, mlp_dim, pool = 'cls', channels = 3, dim_head = 64, dropout = 0., emb_dropout = 0.):
super().__init__()
image_height, image_width = pair(image_size)
patch_height, patch_width = pair(patch_size)
assert image_height % patch_height == 0 and image_width % patch_width == 0, 'Image dimensions must be divisible by the patch size.'
num_patches = (image_height // patch_height) * (image_width // patch_width)
patch_dim = channels * patch_height * patch_width
assert pool in {'cls', 'mean'}, 'pool type must be either cls (cls token) or mean (mean pooling)'
self.to_patch_embedding = nn.Sequential(
Rearrange('b c (h p1) (w p2) -> b (h w) (p1 p2 c)', p1 = patch_height, p2 = patch_width),
nn.LayerNorm(patch_dim),
nn.Linear(patch_dim, dim),
nn.LayerNorm(dim)
)
self.pos_embedding = nn.Parameter(torch.randn(1, num_patches + 1, dim))
self.cls_token = nn.Parameter(torch.randn(1, 1, dim))
self.dropout = nn.Dropout(emb_dropout)
self.transformer = Transformer(dim, depth, heads, dim_head, mlp_dim, dropout)
self.mlp_head = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, num_classes)
)
def img_to_tokens(self, img):
x = self.to_patch_embedding(img)
cls_tokens = repeat(self.cls_token, '1 n d -> b n d', b = x.shape[0])
x = torch.cat((cls_tokens, x), dim = 1)
x += self.pos_embedding
x = self.dropout(x)
return x
def forward(self, img):
x = self.img_to_tokens(img)
x = self.transformer(x)
cls_tokens = x[:, 0]
return self.mlp_head(cls_tokens)
# adapter with learnable memories per layer, memory CLS token, and learnable adapter head
class Adapter(nn.Module):
def __init__(
self,
*,
vit,
num_memories_per_layer = 10,
num_classes = 2,
):
super().__init__()
assert isinstance(vit, ViT)
# extract some model variables needed
dim = vit.cls_token.shape[-1]
layers = len(vit.transformer.layers)
num_patches = vit.pos_embedding.shape[-2]
self.vit = vit
# freeze ViT backbone - only memories will be finetuned
freeze_all_layers_(vit)
# learnable parameters
self.memory_cls_token = nn.Parameter(torch.randn(dim))
self.memories_per_layer = nn.Parameter(torch.randn(layers, num_memories_per_layer, dim))
self.mlp_head = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, num_classes)
)
# specialized attention mask to preserve the output of the original ViT
# it allows the memory CLS token to attend to all other tokens (and the learnable memory layer tokens), but not vice versa
attn_mask = torch.ones((num_patches, num_patches), dtype = torch.bool)
attn_mask = F.pad(attn_mask, (1, num_memories_per_layer), value = False) # main tokens cannot attend to learnable memories per layer
attn_mask = F.pad(attn_mask, (0, 0, 1, 0), value = True) # memory CLS token can attend to everything
self.register_buffer('attn_mask', attn_mask)
def forward(self, img):
b = img.shape[0]
tokens = self.vit.img_to_tokens(img)
# add task specific memory tokens
memory_cls_tokens = repeat(self.memory_cls_token, 'd -> b 1 d', b = b)
tokens = torch.cat((memory_cls_tokens, tokens), dim = 1)
# pass memories along with image tokens through transformer for attending
out = self.vit.transformer(tokens, memories = self.memories_per_layer, attn_mask = self.attn_mask)
# extract memory CLS tokens
memory_cls_tokens = out[:, 0]
# pass through task specific adapter head
return self.mlp_head(memory_cls_tokens)

View File

@@ -52,6 +52,7 @@ class Attention(nn.Module):
self.to_v = nn.Sequential(nn.Conv2d(dim, inner_dim_value, 1, bias = False), nn.BatchNorm2d(inner_dim_value))
self.attend = nn.Softmax(dim = -1)
self.dropout = nn.Dropout(dropout)
out_batch_norm = nn.BatchNorm2d(dim_out)
nn.init.zeros_(out_batch_norm.weight)
@@ -70,8 +71,8 @@ class Attention(nn.Module):
q_range = torch.arange(0, fmap_size, step = (2 if downsample else 1))
k_range = torch.arange(fmap_size)
q_pos = torch.stack(torch.meshgrid(q_range, q_range), dim = -1)
k_pos = torch.stack(torch.meshgrid(k_range, k_range), dim = -1)
q_pos = torch.stack(torch.meshgrid(q_range, q_range, indexing = 'ij'), dim = -1)
k_pos = torch.stack(torch.meshgrid(k_range, k_range, indexing = 'ij'), dim = -1)
q_pos, k_pos = map(lambda t: rearrange(t, 'i j c -> (i j) c'), (q_pos, k_pos))
rel_pos = (q_pos[:, None, ...] - k_pos[None, :, ...]).abs()
@@ -100,6 +101,7 @@ class Attention(nn.Module):
dots = self.apply_pos_bias(dots)
attn = self.attend(dots)
attn = self.dropout(attn)
out = einsum('b h i j, b h j d -> b h i d', attn, v)
out = rearrange(out, 'b h (x y) d -> b (h d) x y', h = h, y = y)

View File

@@ -26,16 +26,6 @@ class ExcludeCLS(nn.Module):
x = self.fn(x, **kwargs)
return torch.cat((cls_token, x), dim = 1)
# prenorm
class PreNorm(nn.Module):
def __init__(self, dim, fn):
super().__init__()
self.norm = nn.LayerNorm(dim)
self.fn = fn
def forward(self, x, **kwargs):
return self.fn(self.norm(x), **kwargs)
# feed forward related classes
class DepthWiseConv2d(nn.Module):
@@ -52,6 +42,7 @@ class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim, dropout = 0.):
super().__init__()
self.net = nn.Sequential(
nn.LayerNorm(dim),
nn.Conv2d(dim, hidden_dim, 1),
nn.Hardswish(),
DepthWiseConv2d(hidden_dim, hidden_dim, 3, padding = 1),
@@ -77,7 +68,9 @@ class Attention(nn.Module):
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = nn.LayerNorm(dim)
self.attend = nn.Softmax(dim = -1)
self.dropout = nn.Dropout(dropout)
self.to_qkv = nn.Linear(dim, inner_dim * 3, bias = False)
self.to_out = nn.Sequential(
@@ -87,12 +80,15 @@ class Attention(nn.Module):
def forward(self, x):
b, n, _, h = *x.shape, self.heads
x = self.norm(x)
qkv = self.to_qkv(x).chunk(3, dim = -1)
q, k, v = map(lambda t: rearrange(t, 'b n (h d) -> b h n d', h = h), qkv)
dots = einsum('b h i d, b h j d -> b h i j', q, k) * self.scale
attn = self.attend(dots)
attn = self.dropout(attn)
out = einsum('b h i j, b h j d -> b h i d', attn, v)
out = rearrange(out, 'b h n d -> b n (h d)')
@@ -104,8 +100,8 @@ class Transformer(nn.Module):
self.layers = nn.ModuleList([])
for _ in range(depth):
self.layers.append(nn.ModuleList([
Residual(PreNorm(dim, Attention(dim, heads = heads, dim_head = dim_head, dropout = dropout))),
ExcludeCLS(Residual(PreNorm(dim, FeedForward(dim, mlp_dim, dropout = dropout))))
Residual(Attention(dim, heads = heads, dim_head = dim_head, dropout = dropout)),
ExcludeCLS(Residual(FeedForward(dim, mlp_dim, dropout = dropout)))
]))
def forward(self, x):
for attn, ff in self.layers:
@@ -124,7 +120,9 @@ class LocalViT(nn.Module):
self.to_patch_embedding = nn.Sequential(
Rearrange('b c (h p1) (w p2) -> b (h w) (p1 p2 c)', p1 = patch_size, p2 = patch_size),
nn.LayerNorm(patch_dim),
nn.Linear(patch_dim, dim),
nn.LayerNorm(dim),
)
self.pos_embedding = nn.Parameter(torch.randn(1, num_patches + 1, dim))

View File

@@ -24,11 +24,14 @@ class MAE(nn.Module):
self.encoder = encoder
num_patches, encoder_dim = encoder.pos_embedding.shape[-2:]
self.to_patch, self.patch_to_emb = encoder.to_patch_embedding[:2]
pixel_values_per_patch = self.patch_to_emb.weight.shape[-1]
self.to_patch = encoder.to_patch_embedding[0]
self.patch_to_emb = nn.Sequential(*encoder.to_patch_embedding[1:])
pixel_values_per_patch = encoder.to_patch_embedding[2].weight.shape[-1]
# decoder parameters
self.decoder_dim = decoder_dim
self.enc_to_dec = nn.Linear(encoder_dim, decoder_dim) if encoder_dim != decoder_dim else nn.Identity()
self.mask_token = nn.Parameter(torch.randn(decoder_dim))
self.decoder = Transformer(dim = decoder_dim, depth = decoder_depth, heads = decoder_heads, dim_head = decoder_dim_head, mlp_dim = decoder_dim * 4)
@@ -46,7 +49,10 @@ class MAE(nn.Module):
# patch to encoder tokens and add positions
tokens = self.patch_to_emb(patches)
tokens = tokens + self.encoder.pos_embedding[:, 1:(num_patches + 1)]
if self.encoder.pool == "cls":
tokens += self.encoder.pos_embedding[:, 1:(num_patches + 1)]
elif self.encoder.pool == "mean":
tokens += self.encoder.pos_embedding.to(device, dtype=tokens.dtype)
# calculate of patches needed to be masked, and get random indices, dividing it up for mask vs unmasked
@@ -71,19 +77,25 @@ class MAE(nn.Module):
decoder_tokens = self.enc_to_dec(encoded_tokens)
# reapply decoder position embedding to unmasked tokens
unmasked_decoder_tokens = decoder_tokens + self.decoder_pos_emb(unmasked_indices)
# repeat mask tokens for number of masked, and add the positions using the masked indices derived above
mask_tokens = repeat(self.mask_token, 'd -> b n d', b = batch, n = num_masked)
mask_tokens = mask_tokens + self.decoder_pos_emb(masked_indices)
# concat the masked tokens to the decoder tokens and attend with decoder
decoder_tokens = torch.cat((mask_tokens, decoder_tokens), dim = 1)
decoder_tokens = torch.zeros(batch, num_patches, self.decoder_dim, device=device)
decoder_tokens[batch_range, unmasked_indices] = unmasked_decoder_tokens
decoder_tokens[batch_range, masked_indices] = mask_tokens
decoded_tokens = self.decoder(decoder_tokens)
# splice out the mask tokens and project to pixel values
mask_tokens = decoded_tokens[:, :num_masked]
mask_tokens = decoded_tokens[batch_range, masked_indices]
pred_pixel_values = self.to_pixels(mask_tokens)
# calculate reconstruction loss

291
vit_pytorch/max_vit.py Normal file
View File

@@ -0,0 +1,291 @@
from functools import partial
import torch
from torch import nn, einsum
from einops import rearrange, repeat
from einops.layers.torch import Rearrange, Reduce
# helpers
def exists(val):
return val is not None
def default(val, d):
return val if exists(val) else d
def cast_tuple(val, length = 1):
return val if isinstance(val, tuple) else ((val,) * length)
# helper classes
class Residual(nn.Module):
def __init__(self, dim, fn):
super().__init__()
self.fn = fn
def forward(self, x):
return self.fn(x) + x
class FeedForward(nn.Module):
def __init__(self, dim, mult = 4, dropout = 0.):
super().__init__()
inner_dim = int(dim * mult)
self.net = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, inner_dim),
nn.GELU(),
nn.Dropout(dropout),
nn.Linear(inner_dim, dim),
nn.Dropout(dropout)
)
def forward(self, x):
return self.net(x)
# MBConv
class SqueezeExcitation(nn.Module):
def __init__(self, dim, shrinkage_rate = 0.25):
super().__init__()
hidden_dim = int(dim * shrinkage_rate)
self.gate = nn.Sequential(
Reduce('b c h w -> b c', 'mean'),
nn.Linear(dim, hidden_dim, bias = False),
nn.SiLU(),
nn.Linear(hidden_dim, dim, bias = False),
nn.Sigmoid(),
Rearrange('b c -> b c 1 1')
)
def forward(self, x):
return x * self.gate(x)
class MBConvResidual(nn.Module):
def __init__(self, fn, dropout = 0.):
super().__init__()
self.fn = fn
self.dropsample = Dropsample(dropout)
def forward(self, x):
out = self.fn(x)
out = self.dropsample(out)
return out + x
class Dropsample(nn.Module):
def __init__(self, prob = 0):
super().__init__()
self.prob = prob
def forward(self, x):
device = x.device
if self.prob == 0. or (not self.training):
return x
keep_mask = torch.FloatTensor((x.shape[0], 1, 1, 1), device = device).uniform_() > self.prob
return x * keep_mask / (1 - self.prob)
def MBConv(
dim_in,
dim_out,
*,
downsample,
expansion_rate = 4,
shrinkage_rate = 0.25,
dropout = 0.
):
hidden_dim = int(expansion_rate * dim_out)
stride = 2 if downsample else 1
net = nn.Sequential(
nn.Conv2d(dim_in, hidden_dim, 1),
nn.BatchNorm2d(hidden_dim),
nn.GELU(),
nn.Conv2d(hidden_dim, hidden_dim, 3, stride = stride, padding = 1, groups = hidden_dim),
nn.BatchNorm2d(hidden_dim),
nn.GELU(),
SqueezeExcitation(hidden_dim, shrinkage_rate = shrinkage_rate),
nn.Conv2d(hidden_dim, dim_out, 1),
nn.BatchNorm2d(dim_out)
)
if dim_in == dim_out and not downsample:
net = MBConvResidual(net, dropout = dropout)
return net
# attention related classes
class Attention(nn.Module):
def __init__(
self,
dim,
dim_head = 32,
dropout = 0.,
window_size = 7
):
super().__init__()
assert (dim % dim_head) == 0, 'dimension should be divisible by dimension per head'
self.heads = dim // dim_head
self.scale = dim_head ** -0.5
self.norm = nn.LayerNorm(dim)
self.to_qkv = nn.Linear(dim, dim * 3, bias = False)
self.attend = nn.Sequential(
nn.Softmax(dim = -1),
nn.Dropout(dropout)
)
self.to_out = nn.Sequential(
nn.Linear(dim, dim, bias = False),
nn.Dropout(dropout)
)
# relative positional bias
self.rel_pos_bias = nn.Embedding((2 * window_size - 1) ** 2, self.heads)
pos = torch.arange(window_size)
grid = torch.stack(torch.meshgrid(pos, pos, indexing = 'ij'))
grid = rearrange(grid, 'c i j -> (i j) c')
rel_pos = rearrange(grid, 'i ... -> i 1 ...') - rearrange(grid, 'j ... -> 1 j ...')
rel_pos += window_size - 1
rel_pos_indices = (rel_pos * torch.tensor([2 * window_size - 1, 1])).sum(dim = -1)
self.register_buffer('rel_pos_indices', rel_pos_indices, persistent = False)
def forward(self, x):
batch, height, width, window_height, window_width, _, device, h = *x.shape, x.device, self.heads
x = self.norm(x)
# flatten
x = rearrange(x, 'b x y w1 w2 d -> (b x y) (w1 w2) d')
# project for queries, keys, values
q, k, v = self.to_qkv(x).chunk(3, dim = -1)
# split heads
q, k, v = map(lambda t: rearrange(t, 'b n (h d ) -> b h n d', h = h), (q, k, v))
# scale
q = q * self.scale
# sim
sim = einsum('b h i d, b h j d -> b h i j', q, k)
# add positional bias
bias = self.rel_pos_bias(self.rel_pos_indices)
sim = sim + rearrange(bias, 'i j h -> h i j')
# attention
attn = self.attend(sim)
# aggregate
out = einsum('b h i j, b h j d -> b h i d', attn, v)
# merge heads
out = rearrange(out, 'b h (w1 w2) d -> b w1 w2 (h d)', w1 = window_height, w2 = window_width)
# combine heads out
out = self.to_out(out)
return rearrange(out, '(b x y) ... -> b x y ...', x = height, y = width)
class MaxViT(nn.Module):
def __init__(
self,
*,
num_classes,
dim,
depth,
dim_head = 32,
dim_conv_stem = None,
window_size = 7,
mbconv_expansion_rate = 4,
mbconv_shrinkage_rate = 0.25,
dropout = 0.1,
channels = 3
):
super().__init__()
assert isinstance(depth, tuple), 'depth needs to be tuple if integers indicating number of transformer blocks at that stage'
# convolutional stem
dim_conv_stem = default(dim_conv_stem, dim)
self.conv_stem = nn.Sequential(
nn.Conv2d(channels, dim_conv_stem, 3, stride = 2, padding = 1),
nn.Conv2d(dim_conv_stem, dim_conv_stem, 3, padding = 1)
)
# variables
num_stages = len(depth)
dims = tuple(map(lambda i: (2 ** i) * dim, range(num_stages)))
dims = (dim_conv_stem, *dims)
dim_pairs = tuple(zip(dims[:-1], dims[1:]))
self.layers = nn.ModuleList([])
# shorthand for window size for efficient block - grid like attention
w = window_size
# iterate through stages
for ind, ((layer_dim_in, layer_dim), layer_depth) in enumerate(zip(dim_pairs, depth)):
for stage_ind in range(layer_depth):
is_first = stage_ind == 0
stage_dim_in = layer_dim_in if is_first else layer_dim
block = nn.Sequential(
MBConv(
stage_dim_in,
layer_dim,
downsample = is_first,
expansion_rate = mbconv_expansion_rate,
shrinkage_rate = mbconv_shrinkage_rate
),
Rearrange('b d (x w1) (y w2) -> b x y w1 w2 d', w1 = w, w2 = w), # block-like attention
Residual(layer_dim, Attention(dim = layer_dim, dim_head = dim_head, dropout = dropout, window_size = w)),
Residual(layer_dim, FeedForward(dim = layer_dim, dropout = dropout)),
Rearrange('b x y w1 w2 d -> b d (x w1) (y w2)'),
Rearrange('b d (w1 x) (w2 y) -> b x y w1 w2 d', w1 = w, w2 = w), # grid-like attention
Residual(layer_dim, Attention(dim = layer_dim, dim_head = dim_head, dropout = dropout, window_size = w)),
Residual(layer_dim, FeedForward(dim = layer_dim, dropout = dropout)),
Rearrange('b x y w1 w2 d -> b d (w1 x) (w2 y)'),
)
self.layers.append(block)
# mlp head out
self.mlp_head = nn.Sequential(
Reduce('b d h w -> b d', 'mean'),
nn.LayerNorm(dims[-1]),
nn.Linear(dims[-1], num_classes)
)
def forward(self, x):
x = self.conv_stem(x)
for stage in self.layers:
x = stage(x)
return self.mlp_head(x)

View File

@@ -1,53 +1,32 @@
"""
An implementation of MobileViT Model as defined in:
MobileViT: Light-weight, General-purpose, and Mobile-friendly Vision Transformer
Arxiv: https://arxiv.org/abs/2110.02178
Origin Code: https://github.com/murufeng/awesome_lightweight_networks
"""
import torch
import torch.nn as nn
from einops import rearrange
from einops.layers.torch import Reduce
def _make_divisible(v, divisor, min_value=None):
if min_value is None:
min_value = divisor
new_v = max(min_value, int(v + divisor / 2) // divisor * divisor)
if new_v < 0.9 * v:
new_v += divisor
return new_v
def conv_bn_relu(inp, oup, kernel, stride=1):
return nn.Sequential(
nn.Conv2d(inp, oup, kernel_size=kernel, stride=stride, padding=1, bias=False),
nn.BatchNorm2d(oup),
nn.ReLU6(inplace=True)
)
# helpers
def conv_1x1_bn(inp, oup):
return nn.Sequential(
nn.Conv2d(inp, oup, 1, 1, 0, bias=False),
nn.BatchNorm2d(oup),
nn.ReLU6(inplace=True)
nn.SiLU()
)
class PreNorm(nn.Module):
def __init__(self, dim, fn):
super().__init__()
self.norm = nn.LayerNorm(dim)
self.fn = fn
def conv_nxn_bn(inp, oup, kernel_size=3, stride=1):
return nn.Sequential(
nn.Conv2d(inp, oup, kernel_size, stride, 1, bias=False),
nn.BatchNorm2d(oup),
nn.SiLU()
)
def forward(self, x, **kwargs):
return self.fn(self.norm(x), **kwargs)
# classes
class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim, dropout=0.):
super().__init__()
self.ffn = nn.Sequential(
self.net = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, hidden_dim),
nn.SiLU(),
nn.Dropout(dropout),
@@ -56,8 +35,7 @@ class FeedForward(nn.Module):
)
def forward(self, x):
return self.ffn(x)
return self.net(x)
class Attention(nn.Module):
def __init__(self, dim, heads=8, dim_head=64, dropout=0.):
@@ -66,7 +44,10 @@ class Attention(nn.Module):
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = nn.LayerNorm(dim)
self.attend = nn.Softmax(dim=-1)
self.dropout = nn.Dropout(dropout)
self.to_qkv = nn.Linear(dim, inner_dim * 3, bias=False)
self.to_out = nn.Sequential(
@@ -75,24 +56,33 @@ class Attention(nn.Module):
)
def forward(self, x):
x = self.norm(x)
qkv = self.to_qkv(x).chunk(3, dim=-1)
q, k, v = map(lambda t: rearrange(t, 'b p n (h d) -> b p h n d', h=self.heads), qkv)
dots = torch.matmul(q, k.transpose(-1, -2)) * self.scale
attn = self.attend(dots)
attn = self.dropout(attn)
out = torch.matmul(attn, v)
out = rearrange(out, 'b p h n d -> b p n (h d)')
return self.to_out(out)
class Transformer(nn.Module):
def __init__(self, dim, depth, heads, dim_head, mlp_dim, dropout = 0.):
"""Transformer block described in ViT.
Paper: https://arxiv.org/abs/2010.11929
Based on: https://github.com/lucidrains/vit-pytorch
"""
def __init__(self, dim, depth, heads, dim_head, mlp_dim, dropout=0.):
super().__init__()
self.layers = nn.ModuleList([])
for _ in range(depth):
self.layers.append(nn.ModuleList([
PreNorm(dim, Attention(dim, heads = heads, dim_head = dim_head, dropout = dropout)),
PreNorm(dim, FeedForward(dim, mlp_dim, dropout = dropout))
Attention(dim, heads, dim_head, dropout),
FeedForward(dim, mlp_dim, dropout)
]))
def forward(self, x):
@@ -102,17 +92,24 @@ class Transformer(nn.Module):
return x
class MV2Block(nn.Module):
def __init__(self, inp, oup, stride=1, expand_ratio=4):
super(MV2Block, self).__init__()
"""MV2 block described in MobileNetV2.
Paper: https://arxiv.org/pdf/1801.04381
Based on: https://github.com/tonylins/pytorch-mobilenet-v2
"""
def __init__(self, inp, oup, stride=1, expansion=4):
super().__init__()
self.stride = stride
assert stride in [1, 2]
hidden_dim = round(inp * expand_ratio)
self.identity = stride == 1 and inp == oup
hidden_dim = int(inp * expansion)
self.use_res_connect = self.stride == 1 and inp == oup
if expand_ratio == 1:
if expansion == 1:
self.conv = nn.Sequential(
# dw
nn.Conv2d(hidden_dim, hidden_dim, 3, stride, 1, groups=hidden_dim, bias=False),
nn.Conv2d(hidden_dim, hidden_dim, 3, stride,
1, groups=hidden_dim, bias=False),
nn.BatchNorm2d(hidden_dim),
nn.SiLU(),
# pw-linear
@@ -126,7 +123,8 @@ class MV2Block(nn.Module):
nn.BatchNorm2d(hidden_dim),
nn.SiLU(),
# dw
nn.Conv2d(hidden_dim, hidden_dim, 3, stride, 1, groups=hidden_dim, bias=False),
nn.Conv2d(hidden_dim, hidden_dim, 3, stride,
1, groups=hidden_dim, bias=False),
nn.BatchNorm2d(hidden_dim),
nn.SiLU(),
# pw-linear
@@ -136,8 +134,7 @@ class MV2Block(nn.Module):
def forward(self, x):
out = self.conv(x)
if self.identity:
if self.use_res_connect:
out = out + x
return out
@@ -146,13 +143,13 @@ class MobileViTBlock(nn.Module):
super().__init__()
self.ph, self.pw = patch_size
self.conv1 = conv_bn_relu(channel, channel, kernel_size)
self.conv1 = conv_nxn_bn(channel, channel, kernel_size)
self.conv2 = conv_1x1_bn(channel, dim)
self.transformer = Transformer(dim, depth, 1, 32, mlp_dim, dropout)
self.transformer = Transformer(dim, depth, 4, 8, mlp_dim, dropout)
self.conv3 = conv_1x1_bn(dim, channel)
self.conv4 = conv_bn_relu(2 * channel, channel, kernel_size)
self.conv4 = conv_nxn_bn(2 * channel, channel, kernel_size)
def forward(self, x):
y = x.clone()
@@ -164,8 +161,8 @@ class MobileViTBlock(nn.Module):
# Global representations
_, _, h, w = x.shape
x = rearrange(x, 'b d (h ph) (w pw) -> b (ph pw) (h w) d', ph=self.ph, pw=self.pw)
x = self.transformer(x)
x = rearrange(x, 'b (ph pw) (h w) d -> b d (h ph) (w pw)', h=h // self.ph, w=w // self.pw, ph=self.ph, pw=self.pw)
x = self.transformer(x)
x = rearrange(x, 'b (ph pw) (h w) d -> b d (h ph) (w pw)', h=h//self.ph, w=w//self.pw, ph=self.ph, pw=self.pw)
# Fusion
x = self.conv3(x)
@@ -173,18 +170,22 @@ class MobileViTBlock(nn.Module):
x = self.conv4(x)
return x
class MobileViT(nn.Module):
"""MobileViT.
Paper: https://arxiv.org/abs/2110.02178
Based on: https://github.com/chinhsuanwu/mobilevit-pytorch
"""
def __init__(
self,
image_size,
dims,
channels,
num_classes,
expansion = 4,
kernel_size = 3,
patch_size = (2, 2),
depths = (2, 4, 3)
expansion=4,
kernel_size=3,
patch_size=(2, 2),
depths=(2, 4, 3)
):
super().__init__()
assert len(dims) == 3, 'dims must be a tuple of 3'
@@ -196,28 +197,31 @@ class MobileViT(nn.Module):
init_dim, *_, last_dim = channels
self.conv1 = conv_bn_relu(3, init_dim, kernel=3, stride=2)
self.conv1 = conv_nxn_bn(3, init_dim, stride=2)
self.stem = nn.ModuleList([])
self.stem.append(MV2Block(channels[0], channels[1], 1, expansion))
self.stem.append(MV2Block(channels[1], channels[2], 2, expansion))
self.stem.append(MV2Block(channels[2], channels[3], 1, expansion))
self.stem.append(MV2Block(channels[2], channels[3], 1, expansion))
self.trunk = nn.ModuleList([])
self.trunk.append(nn.ModuleList([
MV2Block(channels[3], channels[4], 2, expansion),
MobileViTBlock(dims[0], depths[0], channels[5], kernel_size, patch_size, int(dims[0] * 2))
MobileViTBlock(dims[0], depths[0], channels[5],
kernel_size, patch_size, int(dims[0] * 2))
]))
self.trunk.append(nn.ModuleList([
MV2Block(channels[5], channels[6], 2, expansion),
MobileViTBlock(dims[1], depths[1], channels[7], kernel_size, patch_size, int(dims[1] * 4))
MobileViTBlock(dims[1], depths[1], channels[7],
kernel_size, patch_size, int(dims[1] * 4))
]))
self.trunk.append(nn.ModuleList([
MV2Block(channels[7], channels[8], 2, expansion),
MobileViTBlock(dims[2], depths[2], channels[9], kernel_size, patch_size, int(dims[2] * 4))
MobileViTBlock(dims[2], depths[2], channels[9],
kernel_size, patch_size, int(dims[2] * 4))
]))
self.to_logits = nn.Sequential(

186
vit_pytorch/mp3.py Normal file
View File

@@ -0,0 +1,186 @@
import torch
from torch import nn, einsum
import torch.nn.functional as F
from einops import rearrange, repeat
from einops.layers.torch import Rearrange
# helpers
def exists(val):
return val is not None
def default(val, d):
return val if exists(val) else d
def pair(t):
return t if isinstance(t, tuple) else (t, t)
# positional embedding
def posemb_sincos_2d(patches, temperature = 10000, dtype = torch.float32):
_, h, w, dim, device, dtype = *patches.shape, patches.device, patches.dtype
y, x = torch.meshgrid(torch.arange(h, device = device), torch.arange(w, device = device), indexing = 'ij')
assert (dim % 4) == 0, 'feature dimension must be multiple of 4 for sincos emb'
omega = torch.arange(dim // 4, device = device) / (dim // 4 - 1)
omega = 1. / (temperature ** omega)
y = y.flatten()[:, None] * omega[None, :]
x = x.flatten()[:, None] * omega[None, :]
pe = torch.cat((x.sin(), x.cos(), y.sin(), y.cos()), dim = 1)
return pe.type(dtype)
# feedforward
class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim, dropout = 0.):
super().__init__()
self.net = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, hidden_dim),
nn.GELU(),
nn.Dropout(dropout),
nn.Linear(hidden_dim, dim),
nn.Dropout(dropout)
)
def forward(self, x):
return self.net(x)
# (cross)attention
class Attention(nn.Module):
def __init__(self, dim, heads = 8, dim_head = 64, dropout = 0.):
super().__init__()
inner_dim = dim_head * heads
self.heads = heads
self.scale = dim_head ** -0.5
self.attend = nn.Softmax(dim = -1)
self.dropout = nn.Dropout(dropout)
self.norm = nn.LayerNorm(dim)
self.to_q = nn.Linear(dim, inner_dim, bias = False)
self.to_kv = nn.Linear(dim, inner_dim * 2, bias = False)
self.to_out = nn.Sequential(
nn.Linear(inner_dim, dim),
nn.Dropout(dropout)
)
def forward(self, x, context = None):
b, n, _, h = *x.shape, self.heads
x = self.norm(x)
context = self.norm(context) if exists(context) else x
qkv = (self.to_q(x), *self.to_kv(context).chunk(2, dim = -1))
q, k, v = map(lambda t: rearrange(t, 'b n (h d) -> b h n d', h = h), qkv)
dots = einsum('b h i d, b h j d -> b h i j', q, k) * self.scale
attn = self.attend(dots)
attn = self.dropout(attn)
out = einsum('b h i j, b h j d -> b h i d', attn, v)
out = rearrange(out, 'b h n d -> b n (h d)')
return self.to_out(out)
class Transformer(nn.Module):
def __init__(self, dim, depth, heads, dim_head, mlp_dim, dropout = 0.):
super().__init__()
self.layers = nn.ModuleList([])
for _ in range(depth):
self.layers.append(nn.ModuleList([
Attention(dim, heads = heads, dim_head = dim_head, dropout = dropout),
FeedForward(dim, mlp_dim, dropout = dropout)
]))
def forward(self, x, context = None):
for attn, ff in self.layers:
x = attn(x, context = context) + x
x = ff(x) + x
return x
class ViT(nn.Module):
def __init__(self, *, num_classes, image_size, patch_size, dim, depth, heads, mlp_dim, channels = 3, dim_head = 64, dropout = 0.):
super().__init__()
image_height, image_width = pair(image_size)
patch_height, patch_width = pair(patch_size)
assert image_height % patch_height == 0 and image_width % patch_width == 0, 'Image dimensions must be divisible by the patch size.'
num_patches = (image_height // patch_height) * (image_width // patch_width)
patch_dim = channels * patch_height * patch_width
self.dim = dim
self.num_patches = num_patches
self.to_patch_embedding = nn.Sequential(
Rearrange('b c (h p1) (w p2) -> b h w (p1 p2 c)', p1 = patch_height, p2 = patch_width),
nn.LayerNorm(patch_dim),
nn.Linear(patch_dim, dim),
nn.LayerNorm(dim),
)
self.transformer = Transformer(dim, depth, heads, dim_head, mlp_dim, dropout)
self.to_latent = nn.Identity()
self.linear_head = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, num_classes)
)
def forward(self, img):
*_, h, w, dtype = *img.shape, img.dtype
x = self.to_patch_embedding(img)
pe = posemb_sincos_2d(x)
x = rearrange(x, 'b ... d -> b (...) d') + pe
x = self.transformer(x)
x = x.mean(dim = 1)
x = self.to_latent(x)
return self.linear_head(x)
# Masked Position Prediction Pre-Training
class MP3(nn.Module):
def __init__(self, vit: ViT, masking_ratio):
super().__init__()
self.vit = vit
assert masking_ratio > 0 and masking_ratio < 1, 'masking ratio must be kept between 0 and 1'
self.masking_ratio = masking_ratio
dim = vit.dim
self.mlp_head = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, vit.num_patches)
)
def forward(self, img):
device = img.device
tokens = self.vit.to_patch_embedding(img)
tokens = rearrange(tokens, 'b ... d -> b (...) d')
batch, num_patches, *_ = tokens.shape
# Masking
num_masked = int(self.masking_ratio * num_patches)
rand_indices = torch.rand(batch, num_patches, device = device).argsort(dim = -1)
masked_indices, unmasked_indices = rand_indices[:, :num_masked], rand_indices[:, num_masked:]
batch_range = torch.arange(batch, device = device)[:, None]
tokens_unmasked = tokens[batch_range, unmasked_indices]
attended_tokens = self.vit.transformer(tokens, tokens_unmasked)
logits = rearrange(self.mlp_head(attended_tokens), 'b n d -> (b n) d')
# Define labels
labels = repeat(torch.arange(num_patches, device = device), 'n -> (b n)', b = batch)
loss = F.cross_entropy(logits, labels)
return loss

View File

@@ -96,6 +96,9 @@ class MPP(nn.Module):
self.loss = MPPLoss(patch_size, channels, output_channel_bits,
max_pixel_val, mean, std)
# extract patching function
self.patch_to_emb = nn.Sequential(transformer.to_patch_embedding[1:])
# output transformation
self.to_bits = nn.Linear(dim, 2**(output_channel_bits * channels))
@@ -151,7 +154,7 @@ class MPP(nn.Module):
masked_input[bool_mask_replace] = self.mask_token
# linear embedding of patches
masked_input = transformer.to_patch_embedding[-1](masked_input)
masked_input = self.patch_to_emb(masked_input)
# add cls token to input sequence
b, n, _ = masked_input.shape

389
vit_pytorch/na_vit.py Normal file
View File

@@ -0,0 +1,389 @@
from functools import partial
from typing import List, Union
import torch
import torch.nn.functional as F
from torch import nn, Tensor
from torch.nn.utils.rnn import pad_sequence as orig_pad_sequence
from einops import rearrange, repeat
from einops.layers.torch import Rearrange
# helpers
def exists(val):
return val is not None
def default(val, d):
return val if exists(val) else d
def always(val):
return lambda *args: val
def pair(t):
return t if isinstance(t, tuple) else (t, t)
def divisible_by(numer, denom):
return (numer % denom) == 0
# auto grouping images
def group_images_by_max_seq_len(
images: List[Tensor],
patch_size: int,
calc_token_dropout = None,
max_seq_len = 2048
) -> List[List[Tensor]]:
calc_token_dropout = default(calc_token_dropout, always(0.))
groups = []
group = []
seq_len = 0
if isinstance(calc_token_dropout, (float, int)):
calc_token_dropout = always(calc_token_dropout)
for image in images:
assert isinstance(image, Tensor)
image_dims = image.shape[-2:]
ph, pw = map(lambda t: t // patch_size, image_dims)
image_seq_len = (ph * pw)
image_seq_len = int(image_seq_len * (1 - calc_token_dropout(*image_dims)))
assert image_seq_len <= max_seq_len, f'image with dimensions {image_dims} exceeds maximum sequence length'
if (seq_len + image_seq_len) > max_seq_len:
groups.append(group)
group = []
seq_len = 0
group.append(image)
seq_len += image_seq_len
if len(group) > 0:
groups.append(group)
return groups
# normalization
# they use layernorm without bias, something that pytorch does not offer
class LayerNorm(nn.Module):
def __init__(self, dim):
super().__init__()
self.gamma = nn.Parameter(torch.ones(dim))
self.register_buffer('beta', torch.zeros(dim))
def forward(self, x):
return F.layer_norm(x, x.shape[-1:], self.gamma, self.beta)
# they use a query-key normalization that is equivalent to rms norm (no mean-centering, learned gamma), from vit 22B paper
class RMSNorm(nn.Module):
def __init__(self, heads, dim):
super().__init__()
self.scale = dim ** 0.5
self.gamma = nn.Parameter(torch.ones(heads, 1, dim))
def forward(self, x):
normed = F.normalize(x, dim = -1)
return normed * self.scale * self.gamma
# feedforward
def FeedForward(dim, hidden_dim, dropout = 0.):
return nn.Sequential(
LayerNorm(dim),
nn.Linear(dim, hidden_dim),
nn.GELU(),
nn.Dropout(dropout),
nn.Linear(hidden_dim, dim),
nn.Dropout(dropout)
)
class Attention(nn.Module):
def __init__(self, dim, heads = 8, dim_head = 64, dropout = 0.):
super().__init__()
inner_dim = dim_head * heads
self.heads = heads
self.norm = LayerNorm(dim)
self.q_norm = RMSNorm(heads, dim_head)
self.k_norm = RMSNorm(heads, dim_head)
self.attend = nn.Softmax(dim = -1)
self.dropout = nn.Dropout(dropout)
self.to_q = nn.Linear(dim, inner_dim, bias = False)
self.to_kv = nn.Linear(dim, inner_dim * 2, bias = False)
self.to_out = nn.Sequential(
nn.Linear(inner_dim, dim, bias = False),
nn.Dropout(dropout)
)
def forward(
self,
x,
context = None,
mask = None,
attn_mask = None
):
x = self.norm(x)
kv_input = default(context, x)
qkv = (self.to_q(x), *self.to_kv(kv_input).chunk(2, dim = -1))
q, k, v = map(lambda t: rearrange(t, 'b n (h d) -> b h n d', h = self.heads), qkv)
q = self.q_norm(q)
k = self.k_norm(k)
dots = torch.matmul(q, k.transpose(-1, -2))
if exists(mask):
mask = rearrange(mask, 'b j -> b 1 1 j')
dots = dots.masked_fill(~mask, -torch.finfo(dots.dtype).max)
if exists(attn_mask):
dots = dots.masked_fill(~attn_mask, -torch.finfo(dots.dtype).max)
attn = self.attend(dots)
attn = self.dropout(attn)
out = torch.matmul(attn, v)
out = rearrange(out, 'b h n d -> b n (h d)')
return self.to_out(out)
class Transformer(nn.Module):
def __init__(self, dim, depth, heads, dim_head, mlp_dim, dropout = 0.):
super().__init__()
self.layers = nn.ModuleList([])
for _ in range(depth):
self.layers.append(nn.ModuleList([
Attention(dim, heads = heads, dim_head = dim_head, dropout = dropout),
FeedForward(dim, mlp_dim, dropout = dropout)
]))
self.norm = LayerNorm(dim)
def forward(
self,
x,
mask = None,
attn_mask = None
):
for attn, ff in self.layers:
x = attn(x, mask = mask, attn_mask = attn_mask) + x
x = ff(x) + x
return self.norm(x)
class NaViT(nn.Module):
def __init__(self, *, image_size, patch_size, num_classes, dim, depth, heads, mlp_dim, channels = 3, dim_head = 64, dropout = 0., emb_dropout = 0., token_dropout_prob = None):
super().__init__()
image_height, image_width = pair(image_size)
# what percent of tokens to dropout
# if int or float given, then assume constant dropout prob
# otherwise accept a callback that in turn calculates dropout prob from height and width
self.calc_token_dropout = None
if callable(token_dropout_prob):
self.calc_token_dropout = token_dropout_prob
elif isinstance(token_dropout_prob, (float, int)):
assert 0. < token_dropout_prob < 1.
token_dropout_prob = float(token_dropout_prob)
self.calc_token_dropout = lambda height, width: token_dropout_prob
# calculate patching related stuff
assert divisible_by(image_height, patch_size) and divisible_by(image_width, patch_size), 'Image dimensions must be divisible by the patch size.'
patch_height_dim, patch_width_dim = (image_height // patch_size), (image_width // patch_size)
patch_dim = channels * (patch_size ** 2)
self.channels = channels
self.patch_size = patch_size
self.to_patch_embedding = nn.Sequential(
LayerNorm(patch_dim),
nn.Linear(patch_dim, dim),
LayerNorm(dim),
)
self.pos_embed_height = nn.Parameter(torch.randn(patch_height_dim, dim))
self.pos_embed_width = nn.Parameter(torch.randn(patch_width_dim, dim))
self.dropout = nn.Dropout(emb_dropout)
self.transformer = Transformer(dim, depth, heads, dim_head, mlp_dim, dropout)
# final attention pooling queries
self.attn_pool_queries = nn.Parameter(torch.randn(dim))
self.attn_pool = Attention(dim = dim, dim_head = dim_head, heads = heads)
# output to logits
self.to_latent = nn.Identity()
self.mlp_head = nn.Sequential(
LayerNorm(dim),
nn.Linear(dim, num_classes, bias = False)
)
@property
def device(self):
return next(self.parameters()).device
def forward(
self,
batched_images: Union[List[Tensor], List[List[Tensor]]], # assume different resolution images already grouped correctly
group_images = False,
group_max_seq_len = 2048
):
p, c, device, has_token_dropout = self.patch_size, self.channels, self.device, exists(self.calc_token_dropout)
arange = partial(torch.arange, device = device)
pad_sequence = partial(orig_pad_sequence, batch_first = True)
# auto pack if specified
if group_images:
batched_images = group_images_by_max_seq_len(
batched_images,
patch_size = self.patch_size,
calc_token_dropout = self.calc_token_dropout,
max_seq_len = group_max_seq_len
)
# process images into variable lengthed sequences with attention mask
num_images = []
batched_sequences = []
batched_positions = []
batched_image_ids = []
for images in batched_images:
num_images.append(len(images))
sequences = []
positions = []
image_ids = torch.empty((0,), device = device, dtype = torch.long)
for image_id, image in enumerate(images):
assert image.ndim ==3 and image.shape[0] == c
image_dims = image.shape[-2:]
assert all([divisible_by(dim, p) for dim in image_dims]), f'height and width {image_dims} of images must be divisible by patch size {p}'
ph, pw = map(lambda dim: dim // p, image_dims)
pos = torch.stack(torch.meshgrid((
arange(ph),
arange(pw)
), indexing = 'ij'), dim = -1)
pos = rearrange(pos, 'h w c -> (h w) c')
seq = rearrange(image, 'c (h p1) (w p2) -> (h w) (c p1 p2)', p1 = p, p2 = p)
seq_len = seq.shape[-2]
if has_token_dropout:
token_dropout = self.calc_token_dropout(*image_dims)
num_keep = max(1, int(seq_len * (1 - token_dropout)))
keep_indices = torch.randn((seq_len,), device = device).topk(num_keep, dim = -1).indices
seq = seq[keep_indices]
pos = pos[keep_indices]
image_ids = F.pad(image_ids, (0, seq.shape[-2]), value = image_id)
sequences.append(seq)
positions.append(pos)
batched_image_ids.append(image_ids)
batched_sequences.append(torch.cat(sequences, dim = 0))
batched_positions.append(torch.cat(positions, dim = 0))
# derive key padding mask
lengths = torch.tensor([seq.shape[-2] for seq in batched_sequences], device = device, dtype = torch.long)
max_length = arange(lengths.amax().item())
key_pad_mask = rearrange(lengths, 'b -> b 1') <= rearrange(max_length, 'n -> 1 n')
# derive attention mask, and combine with key padding mask from above
batched_image_ids = pad_sequence(batched_image_ids)
attn_mask = rearrange(batched_image_ids, 'b i -> b 1 i 1') == rearrange(batched_image_ids, 'b j -> b 1 1 j')
attn_mask = attn_mask & rearrange(key_pad_mask, 'b j -> b 1 1 j')
# combine patched images as well as the patched width / height positions for 2d positional embedding
patches = pad_sequence(batched_sequences)
patch_positions = pad_sequence(batched_positions)
# need to know how many images for final attention pooling
num_images = torch.tensor(num_images, device = device, dtype = torch.long)
# to patches
x = self.to_patch_embedding(patches)
# factorized 2d absolute positional embedding
h_indices, w_indices = patch_positions.unbind(dim = -1)
h_pos = self.pos_embed_height[h_indices]
w_pos = self.pos_embed_width[w_indices]
x = x + h_pos + w_pos
# embed dropout
x = self.dropout(x)
# attention
x = self.transformer(x, attn_mask = attn_mask)
# do attention pooling at the end
max_queries = num_images.amax().item()
queries = repeat(self.attn_pool_queries, 'd -> b n d', n = max_queries, b = x.shape[0])
# attention pool mask
image_id_arange = arange(max_queries)
attn_pool_mask = rearrange(image_id_arange, 'i -> i 1') == rearrange(batched_image_ids, 'b j -> b 1 j')
attn_pool_mask = attn_pool_mask & rearrange(key_pad_mask, 'b j -> b 1 j')
attn_pool_mask = rearrange(attn_pool_mask, 'b i j -> b 1 i j')
# attention pool
x = self.attn_pool(queries, context = x, attn_mask = attn_pool_mask) + queries
x = rearrange(x, 'b n d -> (b n) d')
# each batch element may not have same amount of images
is_images = image_id_arange < rearrange(num_images, 'b -> b 1')
is_images = rearrange(is_images, 'b n -> (b n)')
x = x[is_images]
# project out to logits
x = self.to_latent(x)
return self.mlp_head(x)

View File

@@ -20,23 +20,15 @@ class LayerNorm(nn.Module):
self.b = nn.Parameter(torch.zeros(1, dim, 1, 1))
def forward(self, x):
std = torch.var(x, dim = 1, unbiased = False, keepdim = True).sqrt()
var = torch.var(x, dim = 1, unbiased = False, keepdim = True)
mean = torch.mean(x, dim = 1, keepdim = True)
return (x - mean) / (std + self.eps) * self.g + self.b
class PreNorm(nn.Module):
def __init__(self, dim, fn):
super().__init__()
self.norm = LayerNorm(dim)
self.fn = fn
def forward(self, x, **kwargs):
return self.fn(self.norm(x), **kwargs)
return (x - mean) / (var + self.eps).sqrt() * self.g + self.b
class FeedForward(nn.Module):
def __init__(self, dim, mlp_mult = 4, dropout = 0.):
super().__init__()
self.net = nn.Sequential(
LayerNorm(dim),
nn.Conv2d(dim, dim * mlp_mult, 1),
nn.GELU(),
nn.Dropout(dropout),
@@ -54,7 +46,9 @@ class Attention(nn.Module):
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = LayerNorm(dim)
self.attend = nn.Softmax(dim = -1)
self.dropout = nn.Dropout(dropout)
self.to_qkv = nn.Conv2d(dim, inner_dim * 3, 1, bias = False)
self.to_out = nn.Sequential(
@@ -65,12 +59,15 @@ class Attention(nn.Module):
def forward(self, x):
b, c, h, w, heads = *x.shape, self.heads
x = self.norm(x)
qkv = self.to_qkv(x).chunk(3, dim = 1)
q, k, v = map(lambda t: rearrange(t, 'b (h d) x y -> b h (x y) d', h = heads), qkv)
dots = einsum('b h i d, b h j d -> b h i j', q, k) * self.scale
attn = self.attend(dots)
attn = self.dropout(attn)
out = einsum('b h i j, b h j d -> b h i d', attn, v)
out = rearrange(out, 'b h (x y) d -> b (h d) x y', x = h, y = w)
@@ -91,8 +88,8 @@ class Transformer(nn.Module):
for _ in range(depth):
self.layers.append(nn.ModuleList([
PreNorm(dim, Attention(dim, heads = heads, dropout = dropout)),
PreNorm(dim, FeedForward(dim, mlp_mult, dropout = dropout))
Attention(dim, heads = heads, dropout = dropout),
FeedForward(dim, mlp_mult, dropout = dropout)
]))
def forward(self, x):
*_, h, w = x.shape
@@ -129,19 +126,22 @@ class NesT(nn.Module):
fmap_size = image_size // patch_size
blocks = 2 ** (num_hierarchies - 1)
seq_len = (fmap_size // blocks) ** 2 # sequence length is held constant across heirarchy
seq_len = (fmap_size // blocks) ** 2 # sequence length is held constant across hierarchy
hierarchies = list(reversed(range(num_hierarchies)))
mults = [2 ** i for i in hierarchies]
mults = [2 ** i for i in reversed(hierarchies)]
layer_heads = list(map(lambda t: t * heads, mults))
layer_dims = list(map(lambda t: t * dim, mults))
last_dim = layer_dims[-1]
layer_dims = [*layer_dims, layer_dims[-1]]
dim_pairs = zip(layer_dims[:-1], layer_dims[1:])
self.to_patch_embedding = nn.Sequential(
Rearrange('b c (h p1) (w p2) -> b (p1 p2 c) h w', p1 = patch_size, p2 = patch_size),
LayerNorm(patch_dim),
nn.Conv2d(patch_dim, layer_dims[0], 1),
LayerNorm(layer_dims[0])
)
block_repeats = cast_tuple(block_repeats, num_hierarchies)
@@ -157,10 +157,11 @@ class NesT(nn.Module):
Aggregate(dim_in, dim_out) if not is_last else nn.Identity()
]))
self.mlp_head = nn.Sequential(
LayerNorm(dim),
LayerNorm(last_dim),
Reduce('b c h w -> b c', 'mean'),
nn.Linear(dim, num_classes)
nn.Linear(last_dim, num_classes)
)
def forward(self, img):

135
vit_pytorch/parallel_vit.py Normal file
View File

@@ -0,0 +1,135 @@
import torch
from torch import nn
from einops import rearrange, repeat
from einops.layers.torch import Rearrange
# helpers
def pair(t):
return t if isinstance(t, tuple) else (t, t)
# classes
class Parallel(nn.Module):
def __init__(self, *fns):
super().__init__()
self.fns = nn.ModuleList(fns)
def forward(self, x):
return sum([fn(x) for fn in self.fns])
class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim, dropout = 0.):
super().__init__()
self.net = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, hidden_dim),
nn.GELU(),
nn.Dropout(dropout),
nn.Linear(hidden_dim, dim),
nn.Dropout(dropout)
)
def forward(self, x):
return self.net(x)
class Attention(nn.Module):
def __init__(self, dim, heads = 8, dim_head = 64, dropout = 0.):
super().__init__()
inner_dim = dim_head * heads
project_out = not (heads == 1 and dim_head == dim)
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = nn.LayerNorm(dim)
self.attend = nn.Softmax(dim = -1)
self.dropout = nn.Dropout(dropout)
self.to_qkv = nn.Linear(dim, inner_dim * 3, bias = False)
self.to_out = nn.Sequential(
nn.Linear(inner_dim, dim),
nn.Dropout(dropout)
) if project_out else nn.Identity()
def forward(self, x):
x = self.norm(x)
qkv = self.to_qkv(x).chunk(3, dim = -1)
q, k, v = map(lambda t: rearrange(t, 'b n (h d) -> b h n d', h = self.heads), qkv)
dots = torch.matmul(q, k.transpose(-1, -2)) * self.scale
attn = self.attend(dots)
attn = self.dropout(attn)
out = torch.matmul(attn, v)
out = rearrange(out, 'b h n d -> b n (h d)')
return self.to_out(out)
class Transformer(nn.Module):
def __init__(self, dim, depth, heads, dim_head, mlp_dim, num_parallel_branches = 2, dropout = 0.):
super().__init__()
self.layers = nn.ModuleList([])
attn_block = lambda: Attention(dim, heads = heads, dim_head = dim_head, dropout = dropout)
ff_block = lambda: FeedForward(dim, mlp_dim, dropout = dropout)
for _ in range(depth):
self.layers.append(nn.ModuleList([
Parallel(*[attn_block() for _ in range(num_parallel_branches)]),
Parallel(*[ff_block() for _ in range(num_parallel_branches)]),
]))
def forward(self, x):
for attns, ffs in self.layers:
x = attns(x) + x
x = ffs(x) + x
return x
class ViT(nn.Module):
def __init__(self, *, image_size, patch_size, num_classes, dim, depth, heads, mlp_dim, pool = 'cls', num_parallel_branches = 2, channels = 3, dim_head = 64, dropout = 0., emb_dropout = 0.):
super().__init__()
image_height, image_width = pair(image_size)
patch_height, patch_width = pair(patch_size)
assert image_height % patch_height == 0 and image_width % patch_width == 0, 'Image dimensions must be divisible by the patch size.'
num_patches = (image_height // patch_height) * (image_width // patch_width)
patch_dim = channels * patch_height * patch_width
assert pool in {'cls', 'mean'}, 'pool type must be either cls (cls token) or mean (mean pooling)'
self.to_patch_embedding = nn.Sequential(
Rearrange('b c (h p1) (w p2) -> b (h w) (p1 p2 c)', p1 = patch_height, p2 = patch_width),
nn.Linear(patch_dim, dim),
)
self.pos_embedding = nn.Parameter(torch.randn(1, num_patches + 1, dim))
self.cls_token = nn.Parameter(torch.randn(1, 1, dim))
self.dropout = nn.Dropout(emb_dropout)
self.transformer = Transformer(dim, depth, heads, dim_head, mlp_dim, num_parallel_branches, dropout)
self.pool = pool
self.to_latent = nn.Identity()
self.mlp_head = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, num_classes)
)
def forward(self, img):
x = self.to_patch_embedding(img)
b, n, _ = x.shape
cls_tokens = repeat(self.cls_token, '() n d -> b n d', b = b)
x = torch.cat((cls_tokens, x), dim=1)
x += self.pos_embedding[:, :(n + 1)]
x = self.dropout(x)
x = self.transformer(x)
x = x.mean(dim = 1) if self.pool == 'mean' else x[:, 0]
x = self.to_latent(x)
return self.mlp_head(x)

View File

@@ -17,18 +17,11 @@ def conv_output_size(image_size, kernel_size, stride, padding = 0):
# classes
class PreNorm(nn.Module):
def __init__(self, dim, fn):
super().__init__()
self.norm = nn.LayerNorm(dim)
self.fn = fn
def forward(self, x, **kwargs):
return self.fn(self.norm(x), **kwargs)
class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim, dropout = 0.):
super().__init__()
self.net = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, hidden_dim),
nn.GELU(),
nn.Dropout(dropout),
@@ -47,7 +40,9 @@ class Attention(nn.Module):
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = nn.LayerNorm(dim)
self.attend = nn.Softmax(dim = -1)
self.dropout = nn.Dropout(dropout)
self.to_qkv = nn.Linear(dim, inner_dim * 3, bias = False)
self.to_out = nn.Sequential(
@@ -57,12 +52,15 @@ class Attention(nn.Module):
def forward(self, x):
b, n, _, h = *x.shape, self.heads
x = self.norm(x)
qkv = self.to_qkv(x).chunk(3, dim = -1)
q, k, v = map(lambda t: rearrange(t, 'b n (h d) -> b h n d', h = h), qkv)
dots = einsum('b h i d, b h j d -> b h i j', q, k) * self.scale
attn = self.attend(dots)
attn = self.dropout(attn)
out = einsum('b h i j, b h j d -> b h i d', attn, v)
out = rearrange(out, 'b h n d -> b n (h d)')
@@ -74,8 +72,8 @@ class Transformer(nn.Module):
self.layers = nn.ModuleList([])
for _ in range(depth):
self.layers.append(nn.ModuleList([
PreNorm(dim, Attention(dim, heads = heads, dim_head = dim_head, dropout = dropout)),
PreNorm(dim, FeedForward(dim, mlp_dim, dropout = dropout))
Attention(dim, heads = heads, dim_head = dim_head, dropout = dropout),
FeedForward(dim, mlp_dim, dropout = dropout)
]))
def forward(self, x):
for attn, ff in self.layers:

View File

@@ -55,5 +55,5 @@ class Recorder(nn.Module):
target_device = self.device if self.device is not None else img.device
recordings = tuple(map(lambda t: t.to(target_device), self.recordings))
attns = torch.stack(recordings, dim = 1)
attns = torch.stack(recordings, dim = 1) if len(recordings) > 0 else None
return pred, attns

View File

@@ -61,8 +61,13 @@ class Attention(nn.Module):
inner_dim = dim_head * heads
self.norm = nn.LayerNorm(dim)
self.dropout = nn.Dropout(dropout)
self.to_qkv = nn.Linear(dim, inner_dim * 3, bias = False)
self.to_out = nn.Linear(inner_dim, dim)
self.to_out = nn.Sequential(
nn.Linear(inner_dim, dim),
nn.Dropout(dropout)
)
def forward(self, x, rel_pos_bias = None):
h = self.heads
@@ -86,6 +91,7 @@ class Attention(nn.Module):
sim = sim + rel_pos_bias
attn = sim.softmax(dim = -1)
attn = self.dropout(attn)
# merge heads
@@ -132,7 +138,7 @@ class R2LTransformer(nn.Module):
h_range = torch.arange(window_size_h, device = device)
w_range = torch.arange(window_size_w, device = device)
grid_x, grid_y = torch.meshgrid(h_range, w_range)
grid_x, grid_y = torch.meshgrid(h_range, w_range, indexing = 'ij')
grid = torch.stack((grid_x, grid_y))
grid = rearrange(grid, 'c h w -> c (h w)')
grid = (grid[:, :, None] - grid[:, None, :]) + (self.window_size - 1)

View File

@@ -55,14 +55,6 @@ class DepthWiseConv2d(nn.Module):
# helper classes
class PreNorm(nn.Module):
def __init__(self, dim, fn):
super().__init__()
self.norm = nn.LayerNorm(dim)
self.fn = fn
def forward(self, x, **kwargs):
return self.fn(self.norm(x), **kwargs)
class SpatialConv(nn.Module):
def __init__(self, dim_in, dim_out, kernel, bias = False):
super().__init__()
@@ -86,6 +78,7 @@ class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim, dropout = 0., use_glu = True):
super().__init__()
self.net = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, hidden_dim * 2 if use_glu else hidden_dim),
GEGLU() if use_glu else nn.GELU(),
nn.Dropout(dropout),
@@ -103,7 +96,9 @@ class Attention(nn.Module):
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = nn.LayerNorm(dim)
self.attend = nn.Softmax(dim = -1)
self.dropout = nn.Dropout(dropout)
self.use_ds_conv = use_ds_conv
@@ -120,6 +115,9 @@ class Attention(nn.Module):
b, n, _, h = *x.shape, self.heads
to_q_kwargs = {'fmap_dims': fmap_dims} if self.use_ds_conv else {}
x = self.norm(x)
q = self.to_q(x, **to_q_kwargs)
qkv = (q, *self.to_kv(x).chunk(2, dim = -1))
@@ -148,6 +146,7 @@ class Attention(nn.Module):
dots = einsum('b i d, b j d -> b i j', q, k) * self.scale
attn = self.attend(dots)
attn = self.dropout(attn)
out = einsum('b i j, b j d -> b i d', attn, v)
out = rearrange(out, '(b h) n d -> b n (h d)', h = h)
@@ -160,8 +159,8 @@ class Transformer(nn.Module):
self.pos_emb = AxialRotaryEmbedding(dim_head, max_freq = image_size)
for _ in range(depth):
self.layers.append(nn.ModuleList([
PreNorm(dim, Attention(dim, heads = heads, dim_head = dim_head, dropout = dropout, use_rotary = use_rotary, use_ds_conv = use_ds_conv)),
PreNorm(dim, FeedForward(dim, mlp_dim, dropout = dropout, use_glu = use_glu))
Attention(dim, heads = heads, dim_head = dim_head, dropout = dropout, use_rotary = use_rotary, use_ds_conv = use_ds_conv),
FeedForward(dim, mlp_dim, dropout = dropout, use_glu = use_glu)
]))
def forward(self, x, fmap_dims):
pos_emb = self.pos_emb(x[:, 1:])

304
vit_pytorch/scalable_vit.py Normal file
View File

@@ -0,0 +1,304 @@
from functools import partial
import torch
from torch import nn
from einops import rearrange, repeat
from einops.layers.torch import Rearrange, Reduce
# helpers
def exists(val):
return val is not None
def default(val, d):
return val if exists(val) else d
def pair(t):
return t if isinstance(t, tuple) else (t, t)
def cast_tuple(val, length = 1):
return val if isinstance(val, tuple) else ((val,) * length)
# helper classes
class ChanLayerNorm(nn.Module):
def __init__(self, dim, eps = 1e-5):
super().__init__()
self.eps = eps
self.g = nn.Parameter(torch.ones(1, dim, 1, 1))
self.b = nn.Parameter(torch.zeros(1, dim, 1, 1))
def forward(self, x):
var = torch.var(x, dim = 1, unbiased = False, keepdim = True)
mean = torch.mean(x, dim = 1, keepdim = True)
return (x - mean) / (var + self.eps).sqrt() * self.g + self.b
class Downsample(nn.Module):
def __init__(self, dim_in, dim_out):
super().__init__()
self.conv = nn.Conv2d(dim_in, dim_out, 3, stride = 2, padding = 1)
def forward(self, x):
return self.conv(x)
class PEG(nn.Module):
def __init__(self, dim, kernel_size = 3):
super().__init__()
self.proj = nn.Conv2d(dim, dim, kernel_size = kernel_size, padding = kernel_size // 2, groups = dim, stride = 1)
def forward(self, x):
return self.proj(x) + x
# feedforward
class FeedForward(nn.Module):
def __init__(self, dim, expansion_factor = 4, dropout = 0.):
super().__init__()
inner_dim = dim * expansion_factor
self.net = nn.Sequential(
ChanLayerNorm(dim),
nn.Conv2d(dim, inner_dim, 1),
nn.GELU(),
nn.Dropout(dropout),
nn.Conv2d(inner_dim, dim, 1),
nn.Dropout(dropout)
)
def forward(self, x):
return self.net(x)
# attention
class ScalableSelfAttention(nn.Module):
def __init__(
self,
dim,
heads = 8,
dim_key = 32,
dim_value = 32,
dropout = 0.,
reduction_factor = 1
):
super().__init__()
self.heads = heads
self.scale = dim_key ** -0.5
self.attend = nn.Softmax(dim = -1)
self.dropout = nn.Dropout(dropout)
self.norm = ChanLayerNorm(dim)
self.to_q = nn.Conv2d(dim, dim_key * heads, 1, bias = False)
self.to_k = nn.Conv2d(dim, dim_key * heads, reduction_factor, stride = reduction_factor, bias = False)
self.to_v = nn.Conv2d(dim, dim_value * heads, reduction_factor, stride = reduction_factor, bias = False)
self.to_out = nn.Sequential(
nn.Conv2d(dim_value * heads, dim, 1),
nn.Dropout(dropout)
)
def forward(self, x):
height, width, heads = *x.shape[-2:], self.heads
x = self.norm(x)
q, k, v = self.to_q(x), self.to_k(x), self.to_v(x)
# split out heads
q, k, v = map(lambda t: rearrange(t, 'b (h d) ... -> b h (...) d', h = heads), (q, k, v))
# similarity
dots = torch.matmul(q, k.transpose(-1, -2)) * self.scale
# attention
attn = self.attend(dots)
attn = self.dropout(attn)
# aggregate values
out = torch.matmul(attn, v)
# merge back heads
out = rearrange(out, 'b h (x y) d -> b (h d) x y', x = height, y = width)
return self.to_out(out)
class InteractiveWindowedSelfAttention(nn.Module):
def __init__(
self,
dim,
window_size,
heads = 8,
dim_key = 32,
dim_value = 32,
dropout = 0.
):
super().__init__()
self.heads = heads
self.scale = dim_key ** -0.5
self.window_size = window_size
self.attend = nn.Softmax(dim = -1)
self.dropout = nn.Dropout(dropout)
self.norm = ChanLayerNorm(dim)
self.local_interactive_module = nn.Conv2d(dim_value * heads, dim_value * heads, 3, padding = 1)
self.to_q = nn.Conv2d(dim, dim_key * heads, 1, bias = False)
self.to_k = nn.Conv2d(dim, dim_key * heads, 1, bias = False)
self.to_v = nn.Conv2d(dim, dim_value * heads, 1, bias = False)
self.to_out = nn.Sequential(
nn.Conv2d(dim_value * heads, dim, 1),
nn.Dropout(dropout)
)
def forward(self, x):
height, width, heads, wsz = *x.shape[-2:], self.heads, self.window_size
x = self.norm(x)
wsz_h, wsz_w = default(wsz, height), default(wsz, width)
assert (height % wsz_h) == 0 and (width % wsz_w) == 0, f'height ({height}) or width ({width}) of feature map is not divisible by the window size ({wsz_h}, {wsz_w})'
q, k, v = self.to_q(x), self.to_k(x), self.to_v(x)
# get output of LIM
local_out = self.local_interactive_module(v)
# divide into window (and split out heads) for efficient self attention
q, k, v = map(lambda t: rearrange(t, 'b (h d) (x w1) (y w2) -> (b x y) h (w1 w2) d', h = heads, w1 = wsz_h, w2 = wsz_w), (q, k, v))
# similarity
dots = torch.matmul(q, k.transpose(-1, -2)) * self.scale
# attention
attn = self.attend(dots)
attn = self.dropout(attn)
# aggregate values
out = torch.matmul(attn, v)
# reshape the windows back to full feature map (and merge heads)
out = rearrange(out, '(b x y) h (w1 w2) d -> b (h d) (x w1) (y w2)', x = height // wsz_h, y = width // wsz_w, w1 = wsz_h, w2 = wsz_w)
# add LIM output
out = out + local_out
return self.to_out(out)
class Transformer(nn.Module):
def __init__(
self,
dim,
depth,
heads = 8,
ff_expansion_factor = 4,
dropout = 0.,
ssa_dim_key = 32,
ssa_dim_value = 32,
ssa_reduction_factor = 1,
iwsa_dim_key = 32,
iwsa_dim_value = 32,
iwsa_window_size = None,
norm_output = True
):
super().__init__()
self.layers = nn.ModuleList([])
for ind in range(depth):
is_first = ind == 0
self.layers.append(nn.ModuleList([
ScalableSelfAttention(dim, heads = heads, dim_key = ssa_dim_key, dim_value = ssa_dim_value, reduction_factor = ssa_reduction_factor, dropout = dropout),
FeedForward(dim, expansion_factor = ff_expansion_factor, dropout = dropout),
PEG(dim) if is_first else None,
FeedForward(dim, expansion_factor = ff_expansion_factor, dropout = dropout),
InteractiveWindowedSelfAttention(dim, heads = heads, dim_key = iwsa_dim_key, dim_value = iwsa_dim_value, window_size = iwsa_window_size, dropout = dropout)
]))
self.norm = ChanLayerNorm(dim) if norm_output else nn.Identity()
def forward(self, x):
for ssa, ff1, peg, iwsa, ff2 in self.layers:
x = ssa(x) + x
x = ff1(x) + x
if exists(peg):
x = peg(x)
x = iwsa(x) + x
x = ff2(x) + x
return self.norm(x)
class ScalableViT(nn.Module):
def __init__(
self,
*,
num_classes,
dim,
depth,
heads,
reduction_factor,
window_size = None,
iwsa_dim_key = 32,
iwsa_dim_value = 32,
ssa_dim_key = 32,
ssa_dim_value = 32,
ff_expansion_factor = 4,
channels = 3,
dropout = 0.
):
super().__init__()
self.to_patches = nn.Conv2d(channels, dim, 7, stride = 4, padding = 3)
assert isinstance(depth, tuple), 'depth needs to be tuple if integers indicating number of transformer blocks at that stage'
num_stages = len(depth)
dims = tuple(map(lambda i: (2 ** i) * dim, range(num_stages)))
hyperparams_per_stage = [
heads,
ssa_dim_key,
ssa_dim_value,
reduction_factor,
iwsa_dim_key,
iwsa_dim_value,
window_size,
]
hyperparams_per_stage = list(map(partial(cast_tuple, length = num_stages), hyperparams_per_stage))
assert all(tuple(map(lambda arr: len(arr) == num_stages, hyperparams_per_stage)))
self.layers = nn.ModuleList([])
for ind, (layer_dim, layer_depth, layer_heads, layer_ssa_dim_key, layer_ssa_dim_value, layer_ssa_reduction_factor, layer_iwsa_dim_key, layer_iwsa_dim_value, layer_window_size) in enumerate(zip(dims, depth, *hyperparams_per_stage)):
is_last = ind == (num_stages - 1)
self.layers.append(nn.ModuleList([
Transformer(dim = layer_dim, depth = layer_depth, heads = layer_heads, ff_expansion_factor = ff_expansion_factor, dropout = dropout, ssa_dim_key = layer_ssa_dim_key, ssa_dim_value = layer_ssa_dim_value, ssa_reduction_factor = layer_ssa_reduction_factor, iwsa_dim_key = layer_iwsa_dim_key, iwsa_dim_value = layer_iwsa_dim_value, iwsa_window_size = layer_window_size, norm_output = not is_last),
Downsample(layer_dim, layer_dim * 2) if not is_last else None
]))
self.mlp_head = nn.Sequential(
Reduce('b d h w -> b d', 'mean'),
nn.LayerNorm(dims[-1]),
nn.Linear(dims[-1], num_classes)
)
def forward(self, img):
x = self.to_patches(img)
for transformer, downsample in self.layers:
x = transformer(x)
if exists(downsample):
x = downsample(x)
return self.mlp_head(x)

290
vit_pytorch/sep_vit.py Normal file
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@@ -0,0 +1,290 @@
from functools import partial
import torch
from torch import nn, einsum
from einops import rearrange, repeat
from einops.layers.torch import Rearrange, Reduce
# helpers
def cast_tuple(val, length = 1):
return val if isinstance(val, tuple) else ((val,) * length)
# helper classes
class ChanLayerNorm(nn.Module):
def __init__(self, dim, eps = 1e-5):
super().__init__()
self.eps = eps
self.g = nn.Parameter(torch.ones(1, dim, 1, 1))
self.b = nn.Parameter(torch.zeros(1, dim, 1, 1))
def forward(self, x):
var = torch.var(x, dim = 1, unbiased = False, keepdim = True)
mean = torch.mean(x, dim = 1, keepdim = True)
return (x - mean) / (var + self.eps).sqrt() * self.g + self.b
class OverlappingPatchEmbed(nn.Module):
def __init__(self, dim_in, dim_out, stride = 2):
super().__init__()
kernel_size = stride * 2 - 1
padding = kernel_size // 2
self.conv = nn.Conv2d(dim_in, dim_out, kernel_size, stride = stride, padding = padding)
def forward(self, x):
return self.conv(x)
class PEG(nn.Module):
def __init__(self, dim, kernel_size = 3):
super().__init__()
self.proj = nn.Conv2d(dim, dim, kernel_size = kernel_size, padding = kernel_size // 2, groups = dim, stride = 1)
def forward(self, x):
return self.proj(x) + x
# feedforward
class FeedForward(nn.Module):
def __init__(self, dim, mult = 4, dropout = 0.):
super().__init__()
inner_dim = int(dim * mult)
self.net = nn.Sequential(
ChanLayerNorm(dim),
nn.Conv2d(dim, inner_dim, 1),
nn.GELU(),
nn.Dropout(dropout),
nn.Conv2d(inner_dim, dim, 1),
nn.Dropout(dropout)
)
def forward(self, x):
return self.net(x)
# attention
class DSSA(nn.Module):
def __init__(
self,
dim,
heads = 8,
dim_head = 32,
dropout = 0.,
window_size = 7
):
super().__init__()
self.heads = heads
self.scale = dim_head ** -0.5
self.window_size = window_size
inner_dim = dim_head * heads
self.norm = ChanLayerNorm(dim)
self.attend = nn.Sequential(
nn.Softmax(dim = -1),
nn.Dropout(dropout)
)
self.to_qkv = nn.Conv1d(dim, inner_dim * 3, 1, bias = False)
# window tokens
self.window_tokens = nn.Parameter(torch.randn(dim))
# prenorm and non-linearity for window tokens
# then projection to queries and keys for window tokens
self.window_tokens_to_qk = nn.Sequential(
nn.LayerNorm(dim_head),
nn.GELU(),
Rearrange('b h n c -> b (h c) n'),
nn.Conv1d(inner_dim, inner_dim * 2, 1),
Rearrange('b (h c) n -> b h n c', h = heads),
)
# window attention
self.window_attend = nn.Sequential(
nn.Softmax(dim = -1),
nn.Dropout(dropout)
)
self.to_out = nn.Sequential(
nn.Conv2d(inner_dim, dim, 1),
nn.Dropout(dropout)
)
def forward(self, x):
"""
einstein notation
b - batch
c - channels
w1 - window size (height)
w2 - also window size (width)
i - sequence dimension (source)
j - sequence dimension (target dimension to be reduced)
h - heads
x - height of feature map divided by window size
y - width of feature map divided by window size
"""
batch, height, width, heads, wsz = x.shape[0], *x.shape[-2:], self.heads, self.window_size
assert (height % wsz) == 0 and (width % wsz) == 0, f'height {height} and width {width} must be divisible by window size {wsz}'
num_windows = (height // wsz) * (width // wsz)
x = self.norm(x)
# fold in windows for "depthwise" attention - not sure why it is named depthwise when it is just "windowed" attention
x = rearrange(x, 'b c (h w1) (w w2) -> (b h w) c (w1 w2)', w1 = wsz, w2 = wsz)
# add windowing tokens
w = repeat(self.window_tokens, 'c -> b c 1', b = x.shape[0])
x = torch.cat((w, x), dim = -1)
# project for queries, keys, value
q, k, v = self.to_qkv(x).chunk(3, dim = 1)
# split out heads
q, k, v = map(lambda t: rearrange(t, 'b (h d) ... -> b h (...) d', h = heads), (q, k, v))
# scale
q = q * self.scale
# similarity
dots = einsum('b h i d, b h j d -> b h i j', q, k)
# attention
attn = self.attend(dots)
# aggregate values
out = torch.matmul(attn, v)
# split out windowed tokens
window_tokens, windowed_fmaps = out[:, :, 0], out[:, :, 1:]
# early return if there is only 1 window
if num_windows == 1:
fmap = rearrange(windowed_fmaps, '(b x y) h (w1 w2) d -> b (h d) (x w1) (y w2)', x = height // wsz, y = width // wsz, w1 = wsz, w2 = wsz)
return self.to_out(fmap)
# carry out the pointwise attention, the main novelty in the paper
window_tokens = rearrange(window_tokens, '(b x y) h d -> b h (x y) d', x = height // wsz, y = width // wsz)
windowed_fmaps = rearrange(windowed_fmaps, '(b x y) h n d -> b h (x y) n d', x = height // wsz, y = width // wsz)
# windowed queries and keys (preceded by prenorm activation)
w_q, w_k = self.window_tokens_to_qk(window_tokens).chunk(2, dim = -1)
# scale
w_q = w_q * self.scale
# similarities
w_dots = einsum('b h i d, b h j d -> b h i j', w_q, w_k)
w_attn = self.window_attend(w_dots)
# aggregate the feature maps from the "depthwise" attention step (the most interesting part of the paper, one i haven't seen before)
aggregated_windowed_fmap = einsum('b h i j, b h j w d -> b h i w d', w_attn, windowed_fmaps)
# fold back the windows and then combine heads for aggregation
fmap = rearrange(aggregated_windowed_fmap, 'b h (x y) (w1 w2) d -> b (h d) (x w1) (y w2)', x = height // wsz, y = width // wsz, w1 = wsz, w2 = wsz)
return self.to_out(fmap)
class Transformer(nn.Module):
def __init__(
self,
dim,
depth,
dim_head = 32,
heads = 8,
ff_mult = 4,
dropout = 0.,
norm_output = True
):
super().__init__()
self.layers = nn.ModuleList([])
for ind in range(depth):
self.layers.append(nn.ModuleList([
DSSA(dim, heads = heads, dim_head = dim_head, dropout = dropout),
FeedForward(dim, mult = ff_mult, dropout = dropout),
]))
self.norm = ChanLayerNorm(dim) if norm_output else nn.Identity()
def forward(self, x):
for attn, ff in self.layers:
x = attn(x) + x
x = ff(x) + x
return self.norm(x)
class SepViT(nn.Module):
def __init__(
self,
*,
num_classes,
dim,
depth,
heads,
window_size = 7,
dim_head = 32,
ff_mult = 4,
channels = 3,
dropout = 0.
):
super().__init__()
assert isinstance(depth, tuple), 'depth needs to be tuple if integers indicating number of transformer blocks at that stage'
num_stages = len(depth)
dims = tuple(map(lambda i: (2 ** i) * dim, range(num_stages)))
dims = (channels, *dims)
dim_pairs = tuple(zip(dims[:-1], dims[1:]))
strides = (4, *((2,) * (num_stages - 1)))
hyperparams_per_stage = [heads, window_size]
hyperparams_per_stage = list(map(partial(cast_tuple, length = num_stages), hyperparams_per_stage))
assert all(tuple(map(lambda arr: len(arr) == num_stages, hyperparams_per_stage)))
self.layers = nn.ModuleList([])
for ind, ((layer_dim_in, layer_dim), layer_depth, layer_stride, layer_heads, layer_window_size) in enumerate(zip(dim_pairs, depth, strides, *hyperparams_per_stage)):
is_last = ind == (num_stages - 1)
self.layers.append(nn.ModuleList([
OverlappingPatchEmbed(layer_dim_in, layer_dim, stride = layer_stride),
PEG(layer_dim),
Transformer(dim = layer_dim, depth = layer_depth, heads = layer_heads, ff_mult = ff_mult, dropout = dropout, norm_output = not is_last),
]))
self.mlp_head = nn.Sequential(
Reduce('b d h w -> b d', 'mean'),
nn.LayerNorm(dims[-1]),
nn.Linear(dims[-1], num_classes)
)
def forward(self, x):
for ope, peg, transformer in self.layers:
x = ope(x)
x = peg(x)
x = transformer(x)
return self.mlp_head(x)

View File

@@ -18,8 +18,11 @@ class SimMIM(nn.Module):
self.encoder = encoder
num_patches, encoder_dim = encoder.pos_embedding.shape[-2:]
self.to_patch, self.patch_to_emb = encoder.to_patch_embedding[:2]
pixel_values_per_patch = self.patch_to_emb.weight.shape[-1]
self.to_patch = encoder.to_patch_embedding[0]
self.patch_to_emb = nn.Sequential(*encoder.to_patch_embedding[1:])
pixel_values_per_patch = encoder.to_patch_embedding[2].weight.shape[-1]
# simple linear head

View File

@@ -0,0 +1,176 @@
from collections import namedtuple
from packaging import version
import torch
import torch.nn.functional as F
from torch import nn
from einops import rearrange
from einops.layers.torch import Rearrange
# constants
Config = namedtuple('FlashAttentionConfig', ['enable_flash', 'enable_math', 'enable_mem_efficient'])
# helpers
def pair(t):
return t if isinstance(t, tuple) else (t, t)
def posemb_sincos_2d(patches, temperature = 10000, dtype = torch.float32):
_, h, w, dim, device, dtype = *patches.shape, patches.device, patches.dtype
y, x = torch.meshgrid(torch.arange(h, device = device), torch.arange(w, device = device), indexing = 'ij')
assert (dim % 4) == 0, 'feature dimension must be multiple of 4 for sincos emb'
omega = torch.arange(dim // 4, device = device) / (dim // 4 - 1)
omega = 1. / (temperature ** omega)
y = y.flatten()[:, None] * omega[None, :]
x = x.flatten()[:, None] * omega[None, :]
pe = torch.cat((x.sin(), x.cos(), y.sin(), y.cos()), dim = 1)
return pe.type(dtype)
# main class
class Attend(nn.Module):
def __init__(self, use_flash = False):
super().__init__()
self.use_flash = use_flash
assert not (use_flash and version.parse(torch.__version__) < version.parse('2.0.0')), 'in order to use flash attention, you must be using pytorch 2.0 or above'
# determine efficient attention configs for cuda and cpu
self.cpu_config = Config(True, True, True)
self.cuda_config = None
if not torch.cuda.is_available() or not use_flash:
return
device_properties = torch.cuda.get_device_properties(torch.device('cuda'))
if device_properties.major == 8 and device_properties.minor == 0:
self.cuda_config = Config(True, False, False)
else:
self.cuda_config = Config(False, True, True)
def flash_attn(self, q, k, v):
config = self.cuda_config if q.is_cuda else self.cpu_config
# flash attention - https://arxiv.org/abs/2205.14135
with torch.backends.cuda.sdp_kernel(**config._asdict()):
out = F.scaled_dot_product_attention(q, k, v)
return out
def forward(self, q, k, v):
n, device, scale = q.shape[-2], q.device, q.shape[-1] ** -0.5
if self.use_flash:
return self.flash_attn(q, k, v)
# similarity
sim = einsum("b h i d, b j d -> b h i j", q, k) * scale
# attention
attn = sim.softmax(dim=-1)
# aggregate values
out = einsum("b h i j, b j d -> b h i d", attn, v)
return out
# classes
class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim):
super().__init__()
self.net = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, hidden_dim),
nn.GELU(),
nn.Linear(hidden_dim, dim),
)
def forward(self, x):
return self.net(x)
class Attention(nn.Module):
def __init__(self, dim, heads = 8, dim_head = 64, use_flash = True):
super().__init__()
inner_dim = dim_head * heads
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = nn.LayerNorm(dim)
self.attend = Attend(use_flash = use_flash)
self.to_qkv = nn.Linear(dim, inner_dim * 3, bias = False)
self.to_out = nn.Linear(inner_dim, dim, bias = False)
def forward(self, x):
x = self.norm(x)
qkv = self.to_qkv(x).chunk(3, dim = -1)
q, k, v = map(lambda t: rearrange(t, 'b n (h d) -> b h n d', h = self.heads), qkv)
out = self.attend(q, k, v)
out = rearrange(out, 'b h n d -> b n (h d)')
return self.to_out(out)
class Transformer(nn.Module):
def __init__(self, dim, depth, heads, dim_head, mlp_dim, use_flash):
super().__init__()
self.layers = nn.ModuleList([])
for _ in range(depth):
self.layers.append(nn.ModuleList([
Attention(dim, heads = heads, dim_head = dim_head, use_flash = use_flash),
FeedForward(dim, mlp_dim)
]))
def forward(self, x):
for attn, ff in self.layers:
x = attn(x) + x
x = ff(x) + x
return x
class SimpleViT(nn.Module):
def __init__(self, *, image_size, patch_size, num_classes, dim, depth, heads, mlp_dim, channels = 3, dim_head = 64, use_flash = True):
super().__init__()
image_height, image_width = pair(image_size)
patch_height, patch_width = pair(patch_size)
assert image_height % patch_height == 0 and image_width % patch_width == 0, 'Image dimensions must be divisible by the patch size.'
num_patches = (image_height // patch_height) * (image_width // patch_width)
patch_dim = channels * patch_height * patch_width
self.to_patch_embedding = nn.Sequential(
Rearrange('b c (h p1) (w p2) -> b h w (p1 p2 c)', p1 = patch_height, p2 = patch_width),
nn.LayerNorm(patch_dim),
nn.Linear(patch_dim, dim),
nn.LayerNorm(dim),
)
self.transformer = Transformer(dim, depth, heads, dim_head, mlp_dim, use_flash)
self.to_latent = nn.Identity()
self.linear_head = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, num_classes)
)
def forward(self, img):
*_, h, w, dtype = *img.shape, img.dtype
x = self.to_patch_embedding(img)
pe = posemb_sincos_2d(x)
x = rearrange(x, 'b ... d -> b (...) d') + pe
x = self.transformer(x)
x = x.mean(dim = 1)
x = self.to_latent(x)
return self.linear_head(x)

120
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@@ -0,0 +1,120 @@
import torch
from torch import nn
from einops import rearrange
from einops.layers.torch import Rearrange
# helpers
def pair(t):
return t if isinstance(t, tuple) else (t, t)
def posemb_sincos_2d(h, w, dim, temperature: int = 10000, dtype = torch.float32):
y, x = torch.meshgrid(torch.arange(h), torch.arange(w), indexing="ij")
assert (dim % 4) == 0, "feature dimension must be multiple of 4 for sincos emb"
omega = torch.arange(dim // 4) / (dim // 4 - 1)
omega = 1.0 / (temperature ** omega)
y = y.flatten()[:, None] * omega[None, :]
x = x.flatten()[:, None] * omega[None, :]
pe = torch.cat((x.sin(), x.cos(), y.sin(), y.cos()), dim=1)
return pe.type(dtype)
# classes
class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim):
super().__init__()
self.net = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, hidden_dim),
nn.GELU(),
nn.Linear(hidden_dim, dim),
)
def forward(self, x):
return self.net(x)
class Attention(nn.Module):
def __init__(self, dim, heads = 8, dim_head = 64):
super().__init__()
inner_dim = dim_head * heads
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = nn.LayerNorm(dim)
self.attend = nn.Softmax(dim = -1)
self.to_qkv = nn.Linear(dim, inner_dim * 3, bias = False)
self.to_out = nn.Linear(inner_dim, dim, bias = False)
def forward(self, x):
x = self.norm(x)
qkv = self.to_qkv(x).chunk(3, dim = -1)
q, k, v = map(lambda t: rearrange(t, 'b n (h d) -> b h n d', h = self.heads), qkv)
dots = torch.matmul(q, k.transpose(-1, -2)) * self.scale
attn = self.attend(dots)
out = torch.matmul(attn, v)
out = rearrange(out, 'b h n d -> b n (h d)')
return self.to_out(out)
class Transformer(nn.Module):
def __init__(self, dim, depth, heads, dim_head, mlp_dim):
super().__init__()
self.norm = nn.LayerNorm(dim)
self.layers = nn.ModuleList([])
for _ in range(depth):
self.layers.append(nn.ModuleList([
Attention(dim, heads = heads, dim_head = dim_head),
FeedForward(dim, mlp_dim)
]))
def forward(self, x):
for attn, ff in self.layers:
x = attn(x) + x
x = ff(x) + x
return self.norm(x)
class SimpleViT(nn.Module):
def __init__(self, *, image_size, patch_size, num_classes, dim, depth, heads, mlp_dim, channels = 3, dim_head = 64):
super().__init__()
image_height, image_width = pair(image_size)
patch_height, patch_width = pair(patch_size)
assert image_height % patch_height == 0 and image_width % patch_width == 0, 'Image dimensions must be divisible by the patch size.'
patch_dim = channels * patch_height * patch_width
self.to_patch_embedding = nn.Sequential(
Rearrange("b c (h p1) (w p2) -> b (h w) (p1 p2 c)", p1 = patch_height, p2 = patch_width),
nn.LayerNorm(patch_dim),
nn.Linear(patch_dim, dim),
nn.LayerNorm(dim),
)
self.pos_embedding = posemb_sincos_2d(
h = image_height // patch_height,
w = image_width // patch_width,
dim = dim,
)
self.transformer = Transformer(dim, depth, heads, dim_head, mlp_dim)
self.pool = "mean"
self.to_latent = nn.Identity()
self.linear_head = nn.Linear(dim, num_classes)
def forward(self, img):
device = img.device
x = self.to_patch_embedding(img)
x += self.pos_embedding.to(device, dtype=x.dtype)
x = self.transformer(x)
x = x.mean(dim = 1)
x = self.to_latent(x)
return self.linear_head(x)

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@@ -0,0 +1,125 @@
import torch
from torch import nn
from einops import rearrange
from einops.layers.torch import Rearrange
# helpers
def posemb_sincos_1d(patches, temperature = 10000, dtype = torch.float32):
_, n, dim, device, dtype = *patches.shape, patches.device, patches.dtype
n = torch.arange(n, device = device)
assert (dim % 2) == 0, 'feature dimension must be multiple of 2 for sincos emb'
omega = torch.arange(dim // 2, device = device) / (dim // 2 - 1)
omega = 1. / (temperature ** omega)
n = n.flatten()[:, None] * omega[None, :]
pe = torch.cat((n.sin(), n.cos()), dim = 1)
return pe.type(dtype)
# classes
class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim):
super().__init__()
self.net = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, hidden_dim),
nn.GELU(),
nn.Linear(hidden_dim, dim),
)
def forward(self, x):
return self.net(x)
class Attention(nn.Module):
def __init__(self, dim, heads = 8, dim_head = 64):
super().__init__()
inner_dim = dim_head * heads
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = nn.LayerNorm(dim)
self.attend = nn.Softmax(dim = -1)
self.to_qkv = nn.Linear(dim, inner_dim * 3, bias = False)
self.to_out = nn.Linear(inner_dim, dim, bias = False)
def forward(self, x):
x = self.norm(x)
qkv = self.to_qkv(x).chunk(3, dim = -1)
q, k, v = map(lambda t: rearrange(t, 'b n (h d) -> b h n d', h = self.heads), qkv)
dots = torch.matmul(q, k.transpose(-1, -2)) * self.scale
attn = self.attend(dots)
out = torch.matmul(attn, v)
out = rearrange(out, 'b h n d -> b n (h d)')
return self.to_out(out)
class Transformer(nn.Module):
def __init__(self, dim, depth, heads, dim_head, mlp_dim):
super().__init__()
self.norm = nn.LayerNorm(dim)
self.layers = nn.ModuleList([])
for _ in range(depth):
self.layers.append(nn.ModuleList([
Attention(dim, heads = heads, dim_head = dim_head),
FeedForward(dim, mlp_dim)
]))
def forward(self, x):
for attn, ff in self.layers:
x = attn(x) + x
x = ff(x) + x
return self.norm(x)
class SimpleViT(nn.Module):
def __init__(self, *, seq_len, patch_size, num_classes, dim, depth, heads, mlp_dim, channels = 3, dim_head = 64):
super().__init__()
assert seq_len % patch_size == 0
num_patches = seq_len // patch_size
patch_dim = channels * patch_size
self.to_patch_embedding = nn.Sequential(
Rearrange('b c (n p) -> b n (p c)', p = patch_size),
nn.LayerNorm(patch_dim),
nn.Linear(patch_dim, dim),
nn.LayerNorm(dim),
)
self.transformer = Transformer(dim, depth, heads, dim_head, mlp_dim)
self.to_latent = nn.Identity()
self.linear_head = nn.Linear(dim, num_classes)
def forward(self, series):
*_, n, dtype = *series.shape, series.dtype
x = self.to_patch_embedding(series)
pe = posemb_sincos_1d(x)
x = rearrange(x, 'b ... d -> b (...) d') + pe
x = self.transformer(x)
x = x.mean(dim = 1)
x = self.to_latent(x)
return self.linear_head(x)
if __name__ == '__main__':
v = SimpleViT(
seq_len = 256,
patch_size = 16,
num_classes = 1000,
dim = 1024,
depth = 6,
heads = 8,
mlp_dim = 2048
)
time_series = torch.randn(4, 3, 256)
logits = v(time_series) # (4, 1000)

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@@ -0,0 +1,128 @@
import torch
import torch.nn.functional as F
from torch import nn
from einops import rearrange
from einops.layers.torch import Rearrange
# helpers
def pair(t):
return t if isinstance(t, tuple) else (t, t)
def posemb_sincos_3d(patches, temperature = 10000, dtype = torch.float32):
_, f, h, w, dim, device, dtype = *patches.shape, patches.device, patches.dtype
z, y, x = torch.meshgrid(
torch.arange(f, device = device),
torch.arange(h, device = device),
torch.arange(w, device = device),
indexing = 'ij')
fourier_dim = dim // 6
omega = torch.arange(fourier_dim, device = device) / (fourier_dim - 1)
omega = 1. / (temperature ** omega)
z = z.flatten()[:, None] * omega[None, :]
y = y.flatten()[:, None] * omega[None, :]
x = x.flatten()[:, None] * omega[None, :]
pe = torch.cat((x.sin(), x.cos(), y.sin(), y.cos(), z.sin(), z.cos()), dim = 1)
pe = F.pad(pe, (0, dim - (fourier_dim * 6))) # pad if feature dimension not cleanly divisible by 6
return pe.type(dtype)
# classes
class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim):
super().__init__()
self.net = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, hidden_dim),
nn.GELU(),
nn.Linear(hidden_dim, dim),
)
def forward(self, x):
return self.net(x)
class Attention(nn.Module):
def __init__(self, dim, heads = 8, dim_head = 64):
super().__init__()
inner_dim = dim_head * heads
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = nn.LayerNorm(dim)
self.attend = nn.Softmax(dim = -1)
self.to_qkv = nn.Linear(dim, inner_dim * 3, bias = False)
self.to_out = nn.Linear(inner_dim, dim, bias = False)
def forward(self, x):
x = self.norm(x)
qkv = self.to_qkv(x).chunk(3, dim = -1)
q, k, v = map(lambda t: rearrange(t, 'b n (h d) -> b h n d', h = self.heads), qkv)
dots = torch.matmul(q, k.transpose(-1, -2)) * self.scale
attn = self.attend(dots)
out = torch.matmul(attn, v)
out = rearrange(out, 'b h n d -> b n (h d)')
return self.to_out(out)
class Transformer(nn.Module):
def __init__(self, dim, depth, heads, dim_head, mlp_dim):
super().__init__()
self.norm = nn.LayerNorm(dim)
self.layers = nn.ModuleList([])
for _ in range(depth):
self.layers.append(nn.ModuleList([
Attention(dim, heads = heads, dim_head = dim_head),
FeedForward(dim, mlp_dim)
]))
def forward(self, x):
for attn, ff in self.layers:
x = attn(x) + x
x = ff(x) + x
return self.norm(x)
class SimpleViT(nn.Module):
def __init__(self, *, image_size, image_patch_size, frames, frame_patch_size, num_classes, dim, depth, heads, mlp_dim, channels = 3, dim_head = 64):
super().__init__()
image_height, image_width = pair(image_size)
patch_height, patch_width = pair(image_patch_size)
assert image_height % patch_height == 0 and image_width % patch_width == 0, 'Image dimensions must be divisible by the patch size.'
assert frames % frame_patch_size == 0, 'Frames must be divisible by the frame patch size'
num_patches = (image_height // patch_height) * (image_width // patch_width) * (frames // frame_patch_size)
patch_dim = channels * patch_height * patch_width * frame_patch_size
self.to_patch_embedding = nn.Sequential(
Rearrange('b c (f pf) (h p1) (w p2) -> b f h w (p1 p2 pf c)', p1 = patch_height, p2 = patch_width, pf = frame_patch_size),
nn.LayerNorm(patch_dim),
nn.Linear(patch_dim, dim),
nn.LayerNorm(dim),
)
self.transformer = Transformer(dim, depth, heads, dim_head, mlp_dim)
self.to_latent = nn.Identity()
self.linear_head = nn.Linear(dim, num_classes)
def forward(self, video):
*_, h, w, dtype = *video.shape, video.dtype
x = self.to_patch_embedding(video)
pe = posemb_sincos_3d(x)
x = rearrange(x, 'b ... d -> b (...) d') + pe
x = self.transformer(x)
x = x.mean(dim = 1)
x = self.to_latent(x)
return self.linear_head(x)

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@@ -0,0 +1,141 @@
import torch
from torch import nn
from einops import rearrange
from einops.layers.torch import Rearrange
# helpers
def pair(t):
return t if isinstance(t, tuple) else (t, t)
def posemb_sincos_2d(patches, temperature = 10000, dtype = torch.float32):
_, h, w, dim, device, dtype = *patches.shape, patches.device, patches.dtype
y, x = torch.meshgrid(torch.arange(h, device = device), torch.arange(w, device = device), indexing = 'ij')
assert (dim % 4) == 0, 'feature dimension must be multiple of 4 for sincos emb'
omega = torch.arange(dim // 4, device = device) / (dim // 4 - 1)
omega = 1. / (temperature ** omega)
y = y.flatten()[:, None] * omega[None, :]
x = x.flatten()[:, None] * omega[None, :]
pe = torch.cat((x.sin(), x.cos(), y.sin(), y.cos()), dim = 1)
return pe.type(dtype)
# patch dropout
class PatchDropout(nn.Module):
def __init__(self, prob):
super().__init__()
assert 0 <= prob < 1.
self.prob = prob
def forward(self, x):
if not self.training or self.prob == 0.:
return x
b, n, _, device = *x.shape, x.device
batch_indices = torch.arange(b, device = device)
batch_indices = rearrange(batch_indices, '... -> ... 1')
num_patches_keep = max(1, int(n * (1 - self.prob)))
patch_indices_keep = torch.randn(b, n, device = device).topk(num_patches_keep, dim = -1).indices
return x[batch_indices, patch_indices_keep]
# classes
class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim):
super().__init__()
self.net = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, hidden_dim),
nn.GELU(),
nn.Linear(hidden_dim, dim),
)
def forward(self, x):
return self.net(x)
class Attention(nn.Module):
def __init__(self, dim, heads = 8, dim_head = 64):
super().__init__()
inner_dim = dim_head * heads
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = nn.LayerNorm(dim)
self.attend = nn.Softmax(dim = -1)
self.to_qkv = nn.Linear(dim, inner_dim * 3, bias = False)
self.to_out = nn.Linear(inner_dim, dim, bias = False)
def forward(self, x):
x = self.norm(x)
qkv = self.to_qkv(x).chunk(3, dim = -1)
q, k, v = map(lambda t: rearrange(t, 'b n (h d) -> b h n d', h = self.heads), qkv)
dots = torch.matmul(q, k.transpose(-1, -2)) * self.scale
attn = self.attend(dots)
out = torch.matmul(attn, v)
out = rearrange(out, 'b h n d -> b n (h d)')
return self.to_out(out)
class Transformer(nn.Module):
def __init__(self, dim, depth, heads, dim_head, mlp_dim):
super().__init__()
self.norm = nn.LayerNorm(dim)
self.layers = nn.ModuleList([])
for _ in range(depth):
self.layers.append(nn.ModuleList([
Attention(dim, heads = heads, dim_head = dim_head),
FeedForward(dim, mlp_dim)
]))
def forward(self, x):
for attn, ff in self.layers:
x = attn(x) + x
x = ff(x) + x
return self.norm(x)
class SimpleViT(nn.Module):
def __init__(self, *, image_size, patch_size, num_classes, dim, depth, heads, mlp_dim, channels = 3, dim_head = 64, patch_dropout = 0.5):
super().__init__()
image_height, image_width = pair(image_size)
patch_height, patch_width = pair(patch_size)
assert image_height % patch_height == 0 and image_width % patch_width == 0, 'Image dimensions must be divisible by the patch size.'
num_patches = (image_height // patch_height) * (image_width // patch_width)
patch_dim = channels * patch_height * patch_width
self.to_patch_embedding = nn.Sequential(
Rearrange('b c (h p1) (w p2) -> b h w (p1 p2 c)', p1 = patch_height, p2 = patch_width),
nn.LayerNorm(patch_dim),
nn.Linear(patch_dim, dim),
nn.LayerNorm(dim)
)
self.patch_dropout = PatchDropout(patch_dropout)
self.transformer = Transformer(dim, depth, heads, dim_head, mlp_dim)
self.to_latent = nn.Identity()
self.linear_head = nn.Linear(dim, num_classes)
def forward(self, img):
*_, h, w, dtype = *img.shape, img.dtype
x = self.to_patch_embedding(img)
pe = posemb_sincos_2d(x)
x = rearrange(x, 'b ... d -> b (...) d') + pe
x = self.patch_dropout(x)
x = self.transformer(x)
x = x.mean(dim = 1)
x = self.to_latent(x)
return self.linear_head(x)

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@@ -0,0 +1,141 @@
import torch
from torch import nn
import torch.nn.functional as F
from einops import rearrange
from einops.layers.torch import Rearrange
# helpers
def pair(t):
return t if isinstance(t, tuple) else (t, t)
def posemb_sincos_2d(h, w, dim, temperature: int = 10000, dtype = torch.float32):
y, x = torch.meshgrid(torch.arange(h), torch.arange(w), indexing="ij")
assert (dim % 4) == 0, "feature dimension must be multiple of 4 for sincos emb"
omega = torch.arange(dim // 4) / (dim // 4 - 1)
omega = 1.0 / (temperature ** omega)
y = y.flatten()[:, None] * omega[None, :]
x = x.flatten()[:, None] * omega[None, :]
pe = torch.cat((x.sin(), x.cos(), y.sin(), y.cos()), dim=1)
return pe.type(dtype)
# they use a query-key normalization that is equivalent to rms norm (no mean-centering, learned gamma), from vit 22B paper
# in latest tweet, seem to claim more stable training at higher learning rates
# unsure if this has taken off within Brain, or it has some hidden drawback
class RMSNorm(nn.Module):
def __init__(self, heads, dim):
super().__init__()
self.scale = dim ** 0.5
self.gamma = nn.Parameter(torch.ones(heads, 1, dim) / self.scale)
def forward(self, x):
normed = F.normalize(x, dim = -1)
return normed * self.scale * self.gamma
# classes
class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim):
super().__init__()
self.net = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, hidden_dim),
nn.GELU(),
nn.Linear(hidden_dim, dim),
)
def forward(self, x):
return self.net(x)
class Attention(nn.Module):
def __init__(self, dim, heads = 8, dim_head = 64):
super().__init__()
inner_dim = dim_head * heads
self.heads = heads
self.norm = nn.LayerNorm(dim)
self.attend = nn.Softmax(dim = -1)
self.q_norm = RMSNorm(heads, dim_head)
self.k_norm = RMSNorm(heads, dim_head)
self.to_qkv = nn.Linear(dim, inner_dim * 3, bias = False)
self.to_out = nn.Linear(inner_dim, dim, bias = False)
def forward(self, x):
x = self.norm(x)
qkv = self.to_qkv(x).chunk(3, dim = -1)
q, k, v = map(lambda t: rearrange(t, 'b n (h d) -> b h n d', h = self.heads), qkv)
q = self.q_norm(q)
k = self.k_norm(k)
dots = torch.matmul(q, k.transpose(-1, -2))
attn = self.attend(dots)
out = torch.matmul(attn, v)
out = rearrange(out, 'b h n d -> b n (h d)')
return self.to_out(out)
class Transformer(nn.Module):
def __init__(self, dim, depth, heads, dim_head, mlp_dim):
super().__init__()
self.norm = nn.LayerNorm(dim)
self.layers = nn.ModuleList([])
for _ in range(depth):
self.layers.append(nn.ModuleList([
Attention(dim, heads = heads, dim_head = dim_head),
FeedForward(dim, mlp_dim)
]))
def forward(self, x):
for attn, ff in self.layers:
x = attn(x) + x
x = ff(x) + x
return self.norm(x)
class SimpleViT(nn.Module):
def __init__(self, *, image_size, patch_size, num_classes, dim, depth, heads, mlp_dim, channels = 3, dim_head = 64):
super().__init__()
image_height, image_width = pair(image_size)
patch_height, patch_width = pair(patch_size)
assert image_height % patch_height == 0 and image_width % patch_width == 0, 'Image dimensions must be divisible by the patch size.'
patch_dim = channels * patch_height * patch_width
self.to_patch_embedding = nn.Sequential(
Rearrange("b c (h p1) (w p2) -> b (h w) (p1 p2 c)", p1 = patch_height, p2 = patch_width),
nn.LayerNorm(patch_dim),
nn.Linear(patch_dim, dim),
nn.LayerNorm(dim),
)
self.pos_embedding = posemb_sincos_2d(
h = image_height // patch_height,
w = image_width // patch_width,
dim = dim,
)
self.transformer = Transformer(dim, depth, heads, dim_head, mlp_dim)
self.pool = "mean"
self.to_latent = nn.Identity()
self.linear_head = nn.LayerNorm(dim)
def forward(self, img):
device = img.device
x = self.to_patch_embedding(img)
x += self.pos_embedding.to(device, dtype=x.dtype)
x = self.transformer(x)
x = x.mean(dim = 1)
x = self.to_latent(x)
return self.linear_head(x)

View File

@@ -38,24 +38,15 @@ class LayerNorm(nn.Module):
self.b = nn.Parameter(torch.zeros(1, dim, 1, 1))
def forward(self, x):
std = torch.var(x, dim = 1, unbiased = False, keepdim = True).sqrt()
var = torch.var(x, dim = 1, unbiased = False, keepdim = True)
mean = torch.mean(x, dim = 1, keepdim = True)
return (x - mean) / (std + self.eps) * self.g + self.b
class PreNorm(nn.Module):
def __init__(self, dim, fn):
super().__init__()
self.norm = LayerNorm(dim)
self.fn = fn
def forward(self, x, **kwargs):
x = self.norm(x)
return self.fn(x, **kwargs)
return (x - mean) / (var + self.eps).sqrt() * self.g + self.b
class FeedForward(nn.Module):
def __init__(self, dim, mult = 4, dropout = 0.):
super().__init__()
self.net = nn.Sequential(
LayerNorm(dim),
nn.Conv2d(dim, dim * mult, 1),
nn.GELU(),
nn.Dropout(dropout),
@@ -71,7 +62,12 @@ class PatchEmbedding(nn.Module):
self.dim = dim
self.dim_out = dim_out
self.patch_size = patch_size
self.proj = nn.Conv2d(patch_size ** 2 * dim, dim_out, 1)
self.proj = nn.Sequential(
LayerNorm(patch_size ** 2 * dim),
nn.Conv2d(patch_size ** 2 * dim, dim_out, 1),
LayerNorm(dim_out)
)
def forward(self, fmap):
p = self.patch_size
@@ -94,6 +90,7 @@ class LocalAttention(nn.Module):
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = LayerNorm(dim)
self.to_q = nn.Conv2d(dim, inner_dim, 1, bias = False)
self.to_kv = nn.Conv2d(dim, inner_dim * 2, 1, bias = False)
@@ -103,6 +100,8 @@ class LocalAttention(nn.Module):
)
def forward(self, fmap):
fmap = self.norm(fmap)
shape, p = fmap.shape, self.patch_size
b, n, x, y, h = *shape, self.heads
x, y = map(lambda t: t // p, (x, y))
@@ -127,15 +126,21 @@ class GlobalAttention(nn.Module):
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = LayerNorm(dim)
self.to_q = nn.Conv2d(dim, inner_dim, 1, bias = False)
self.to_kv = nn.Conv2d(dim, inner_dim * 2, k, stride = k, bias = False)
self.dropout = nn.Dropout(dropout)
self.to_out = nn.Sequential(
nn.Conv2d(inner_dim, dim, 1),
nn.Dropout(dropout)
)
def forward(self, x):
x = self.norm(x)
shape = x.shape
b, n, _, y, h = *shape, self.heads
q, k, v = (self.to_q(x), *self.to_kv(x).chunk(2, dim = 1))
@@ -145,6 +150,7 @@ class GlobalAttention(nn.Module):
dots = einsum('b i d, b j d -> b i j', q, k) * self.scale
attn = dots.softmax(dim = -1)
attn = self.dropout(attn)
out = einsum('b i j, b j d -> b i d', attn, v)
out = rearrange(out, '(b h) (x y) d -> b (h d) x y', h = h, y = y)
@@ -156,10 +162,10 @@ class Transformer(nn.Module):
self.layers = nn.ModuleList([])
for _ in range(depth):
self.layers.append(nn.ModuleList([
Residual(PreNorm(dim, LocalAttention(dim, heads = heads, dim_head = dim_head, dropout = dropout, patch_size = local_patch_size))) if has_local else nn.Identity(),
Residual(PreNorm(dim, FeedForward(dim, mlp_mult, dropout = dropout))) if has_local else nn.Identity(),
Residual(PreNorm(dim, GlobalAttention(dim, heads = heads, dim_head = dim_head, dropout = dropout, k = global_k))),
Residual(PreNorm(dim, FeedForward(dim, mlp_mult, dropout = dropout)))
Residual(LocalAttention(dim, heads = heads, dim_head = dim_head, dropout = dropout, patch_size = local_patch_size)) if has_local else nn.Identity(),
Residual(FeedForward(dim, mlp_mult, dropout = dropout)) if has_local else nn.Identity(),
Residual(GlobalAttention(dim, heads = heads, dim_head = dim_head, dropout = dropout, k = global_k)),
Residual(FeedForward(dim, mlp_mult, dropout = dropout))
]))
def forward(self, x):
for local_attn, ff1, global_attn, ff2 in self.layers:

View File

@@ -11,24 +11,18 @@ def pair(t):
# classes
class PreNorm(nn.Module):
def __init__(self, dim, fn):
super().__init__()
self.norm = nn.LayerNorm(dim)
self.fn = fn
def forward(self, x, **kwargs):
return self.fn(self.norm(x), **kwargs)
class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim, dropout = 0.):
super().__init__()
self.net = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, hidden_dim),
nn.GELU(),
nn.Dropout(dropout),
nn.Linear(hidden_dim, dim),
nn.Dropout(dropout)
)
def forward(self, x):
return self.net(x)
@@ -41,7 +35,11 @@ class Attention(nn.Module):
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = nn.LayerNorm(dim)
self.attend = nn.Softmax(dim = -1)
self.dropout = nn.Dropout(dropout)
self.to_qkv = nn.Linear(dim, inner_dim * 3, bias = False)
self.to_out = nn.Sequential(
@@ -50,12 +48,15 @@ class Attention(nn.Module):
) if project_out else nn.Identity()
def forward(self, x):
x = self.norm(x)
qkv = self.to_qkv(x).chunk(3, dim = -1)
q, k, v = map(lambda t: rearrange(t, 'b n (h d) -> b h n d', h = self.heads), qkv)
dots = torch.matmul(q, k.transpose(-1, -2)) * self.scale
attn = self.attend(dots)
attn = self.dropout(attn)
out = torch.matmul(attn, v)
out = rearrange(out, 'b h n d -> b n (h d)')
@@ -64,17 +65,20 @@ class Attention(nn.Module):
class Transformer(nn.Module):
def __init__(self, dim, depth, heads, dim_head, mlp_dim, dropout = 0.):
super().__init__()
self.norm = nn.LayerNorm(dim)
self.layers = nn.ModuleList([])
for _ in range(depth):
self.layers.append(nn.ModuleList([
PreNorm(dim, Attention(dim, heads = heads, dim_head = dim_head, dropout = dropout)),
PreNorm(dim, FeedForward(dim, mlp_dim, dropout = dropout))
Attention(dim, heads = heads, dim_head = dim_head, dropout = dropout),
FeedForward(dim, mlp_dim, dropout = dropout)
]))
def forward(self, x):
for attn, ff in self.layers:
x = attn(x) + x
x = ff(x) + x
return x
return self.norm(x)
class ViT(nn.Module):
def __init__(self, *, image_size, patch_size, num_classes, dim, depth, heads, mlp_dim, pool = 'cls', channels = 3, dim_head = 64, dropout = 0., emb_dropout = 0.):
@@ -90,7 +94,9 @@ class ViT(nn.Module):
self.to_patch_embedding = nn.Sequential(
Rearrange('b c (h p1) (w p2) -> b (h w) (p1 p2 c)', p1 = patch_height, p2 = patch_width),
nn.LayerNorm(patch_dim),
nn.Linear(patch_dim, dim),
nn.LayerNorm(dim),
)
self.pos_embedding = nn.Parameter(torch.randn(1, num_patches + 1, dim))
@@ -102,16 +108,13 @@ class ViT(nn.Module):
self.pool = pool
self.to_latent = nn.Identity()
self.mlp_head = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, num_classes)
)
self.mlp_head = nn.Linear(dim, num_classes)
def forward(self, img):
x = self.to_patch_embedding(img)
b, n, _ = x.shape
cls_tokens = repeat(self.cls_token, '() n d -> b n d', b = b)
cls_tokens = repeat(self.cls_token, '1 1 d -> b 1 d', b = b)
x = torch.cat((cls_tokens, x), dim=1)
x += self.pos_embedding[:, :(n + 1)]
x = self.dropout(x)

130
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@@ -0,0 +1,130 @@
import torch
from torch import nn
from einops import rearrange, repeat, pack, unpack
from einops.layers.torch import Rearrange
# classes
class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim, dropout = 0.):
super().__init__()
self.net = nn.Sequential(
nn.Layernorm(dim),
nn.Linear(dim, hidden_dim),
nn.GELU(),
nn.Dropout(dropout),
nn.Linear(hidden_dim, dim),
nn.Dropout(dropout)
)
def forward(self, x):
return self.net(x)
class Attention(nn.Module):
def __init__(self, dim, heads = 8, dim_head = 64, dropout = 0.):
super().__init__()
inner_dim = dim_head * heads
project_out = not (heads == 1 and dim_head == dim)
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = nn.LayerNorm(dim)
self.attend = nn.Softmax(dim = -1)
self.dropout = nn.Dropout(dropout)
self.to_qkv = nn.Linear(dim, inner_dim * 3, bias = False)
self.to_out = nn.Sequential(
nn.Linear(inner_dim, dim),
nn.Dropout(dropout)
) if project_out else nn.Identity()
def forward(self, x):
x = self.norm(x)
qkv = self.to_qkv(x).chunk(3, dim = -1)
q, k, v = map(lambda t: rearrange(t, 'b n (h d) -> b h n d', h = self.heads), qkv)
dots = torch.matmul(q, k.transpose(-1, -2)) * self.scale
attn = self.attend(dots)
attn = self.dropout(attn)
out = torch.matmul(attn, v)
out = rearrange(out, 'b h n d -> b n (h d)')
return self.to_out(out)
class Transformer(nn.Module):
def __init__(self, dim, depth, heads, dim_head, mlp_dim, dropout = 0.):
super().__init__()
self.layers = nn.ModuleList([])
for _ in range(depth):
self.layers.append(nn.ModuleList([
Attention(dim, heads = heads, dim_head = dim_head, dropout = dropout),
FeedForward(dim, mlp_dim, dropout = dropout)
]))
def forward(self, x):
for attn, ff in self.layers:
x = attn(x) + x
x = ff(x) + x
return x
class ViT(nn.Module):
def __init__(self, *, seq_len, patch_size, num_classes, dim, depth, heads, mlp_dim, channels = 3, dim_head = 64, dropout = 0., emb_dropout = 0.):
super().__init__()
assert (seq_len % patch_size) == 0
num_patches = seq_len // patch_size
patch_dim = channels * patch_size
self.to_patch_embedding = nn.Sequential(
Rearrange('b c (n p) -> b n (p c)', p = patch_size),
nn.LayerNorm(patch_dim),
nn.Linear(patch_dim, dim),
nn.LayerNorm(dim),
)
self.pos_embedding = nn.Parameter(torch.randn(1, num_patches + 1, dim))
self.cls_token = nn.Parameter(torch.randn(dim))
self.dropout = nn.Dropout(emb_dropout)
self.transformer = Transformer(dim, depth, heads, dim_head, mlp_dim, dropout)
self.mlp_head = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, num_classes)
)
def forward(self, series):
x = self.to_patch_embedding(series)
b, n, _ = x.shape
cls_tokens = repeat(self.cls_token, 'd -> b d', b = b)
x, ps = pack([cls_tokens, x], 'b * d')
x += self.pos_embedding[:, :(n + 1)]
x = self.dropout(x)
x = self.transformer(x)
cls_tokens, _ = unpack(x, ps, 'b * d')
return self.mlp_head(cls_tokens)
if __name__ == '__main__':
v = ViT(
seq_len = 256,
patch_size = 16,
num_classes = 1000,
dim = 1024,
depth = 6,
heads = 8,
mlp_dim = 2048,
dropout = 0.1,
emb_dropout = 0.1
)
time_series = torch.randn(4, 3, 256)
logits = v(time_series) # (4, 1000)

126
vit_pytorch/vit_3d.py Normal file
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@@ -0,0 +1,126 @@
import torch
from torch import nn
from einops import rearrange, repeat
from einops.layers.torch import Rearrange
# helpers
def pair(t):
return t if isinstance(t, tuple) else (t, t)
# classes
class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim, dropout = 0.):
super().__init__()
self.net = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, hidden_dim),
nn.GELU(),
nn.Dropout(dropout),
nn.Linear(hidden_dim, dim),
nn.Dropout(dropout)
)
def forward(self, x):
return self.net(x)
class Attention(nn.Module):
def __init__(self, dim, heads = 8, dim_head = 64, dropout = 0.):
super().__init__()
inner_dim = dim_head * heads
project_out = not (heads == 1 and dim_head == dim)
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = nn.LayerNorm(dim)
self.attend = nn.Softmax(dim = -1)
self.dropout = nn.Dropout(dropout)
self.to_qkv = nn.Linear(dim, inner_dim * 3, bias = False)
self.to_out = nn.Sequential(
nn.Linear(inner_dim, dim),
nn.Dropout(dropout)
) if project_out else nn.Identity()
def forward(self, x):
x = self.norm(x)
qkv = self.to_qkv(x).chunk(3, dim = -1)
q, k, v = map(lambda t: rearrange(t, 'b n (h d) -> b h n d', h = self.heads), qkv)
dots = torch.matmul(q, k.transpose(-1, -2)) * self.scale
attn = self.attend(dots)
attn = self.dropout(attn)
out = torch.matmul(attn, v)
out = rearrange(out, 'b h n d -> b n (h d)')
return self.to_out(out)
class Transformer(nn.Module):
def __init__(self, dim, depth, heads, dim_head, mlp_dim, dropout = 0.):
super().__init__()
self.layers = nn.ModuleList([])
for _ in range(depth):
self.layers.append(nn.ModuleList([
Attention(dim, heads = heads, dim_head = dim_head, dropout = dropout),
FeedForward(dim, mlp_dim, dropout = dropout)
]))
def forward(self, x):
for attn, ff in self.layers:
x = attn(x) + x
x = ff(x) + x
return x
class ViT(nn.Module):
def __init__(self, *, image_size, image_patch_size, frames, frame_patch_size, num_classes, dim, depth, heads, mlp_dim, pool = 'cls', channels = 3, dim_head = 64, dropout = 0., emb_dropout = 0.):
super().__init__()
image_height, image_width = pair(image_size)
patch_height, patch_width = pair(image_patch_size)
assert image_height % patch_height == 0 and image_width % patch_width == 0, 'Image dimensions must be divisible by the patch size.'
assert frames % frame_patch_size == 0, 'Frames must be divisible by frame patch size'
num_patches = (image_height // patch_height) * (image_width // patch_width) * (frames // frame_patch_size)
patch_dim = channels * patch_height * patch_width * frame_patch_size
assert pool in {'cls', 'mean'}, 'pool type must be either cls (cls token) or mean (mean pooling)'
self.to_patch_embedding = nn.Sequential(
Rearrange('b c (f pf) (h p1) (w p2) -> b (f h w) (p1 p2 pf c)', p1 = patch_height, p2 = patch_width, pf = frame_patch_size),
nn.LayerNorm(patch_dim),
nn.Linear(patch_dim, dim),
nn.LayerNorm(dim),
)
self.pos_embedding = nn.Parameter(torch.randn(1, num_patches + 1, dim))
self.cls_token = nn.Parameter(torch.randn(1, 1, dim))
self.dropout = nn.Dropout(emb_dropout)
self.transformer = Transformer(dim, depth, heads, dim_head, mlp_dim, dropout)
self.pool = pool
self.to_latent = nn.Identity()
self.mlp_head = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, num_classes)
)
def forward(self, video):
x = self.to_patch_embedding(video)
b, n, _ = x.shape
cls_tokens = repeat(self.cls_token, '1 1 d -> b 1 d', b = b)
x = torch.cat((cls_tokens, x), dim=1)
x += self.pos_embedding[:, :(n + 1)]
x = self.dropout(x)
x = self.transformer(x)
x = x.mean(dim = 1) if self.pool == 'mean' else x[:, 0]
x = self.to_latent(x)
return self.mlp_head(x)

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@@ -0,0 +1,140 @@
from math import sqrt
import torch
import torch.nn.functional as F
from torch import nn
from einops import rearrange, repeat
from einops.layers.torch import Rearrange
# helpers
def pair(t):
return t if isinstance(t, tuple) else (t, t)
# classes
class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim, dropout = 0.):
super().__init__()
self.net = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, hidden_dim),
nn.GELU(),
nn.Dropout(dropout),
nn.Linear(hidden_dim, dim),
nn.Dropout(dropout)
)
def forward(self, x):
return self.net(x)
class LSA(nn.Module):
def __init__(self, dim, heads = 8, dim_head = 64, dropout = 0.):
super().__init__()
inner_dim = dim_head * heads
self.heads = heads
self.temperature = nn.Parameter(torch.log(torch.tensor(dim_head ** -0.5)))
self.norm = nn.LayerNorm(dim)
self.attend = nn.Softmax(dim = -1)
self.dropout = nn.Dropout(dropout)
self.to_qkv = nn.Linear(dim, inner_dim * 3, bias = False)
self.to_out = nn.Sequential(
nn.Linear(inner_dim, dim),
nn.Dropout(dropout)
)
def forward(self, x):
x = self.norm(x)
qkv = self.to_qkv(x).chunk(3, dim = -1)
q, k, v = map(lambda t: rearrange(t, 'b n (h d) -> b h n d', h = self.heads), qkv)
dots = torch.matmul(q, k.transpose(-1, -2)) * self.temperature.exp()
mask = torch.eye(dots.shape[-1], device = dots.device, dtype = torch.bool)
mask_value = -torch.finfo(dots.dtype).max
dots = dots.masked_fill(mask, mask_value)
attn = self.attend(dots)
attn = self.dropout(attn)
out = torch.matmul(attn, v)
out = rearrange(out, 'b h n d -> b n (h d)')
return self.to_out(out)
class Transformer(nn.Module):
def __init__(self, dim, depth, heads, dim_head, mlp_dim, dropout = 0.):
super().__init__()
self.layers = nn.ModuleList([])
for _ in range(depth):
self.layers.append(nn.ModuleList([
LSA(dim, heads = heads, dim_head = dim_head, dropout = dropout),
FeedForward(dim, mlp_dim, dropout = dropout)
]))
def forward(self, x):
for attn, ff in self.layers:
x = attn(x) + x
x = ff(x) + x
return x
class SPT(nn.Module):
def __init__(self, *, dim, patch_size, channels = 3):
super().__init__()
patch_dim = patch_size * patch_size * 5 * channels
self.to_patch_tokens = nn.Sequential(
Rearrange('b c (h p1) (w p2) -> b (h w) (p1 p2 c)', p1 = patch_size, p2 = patch_size),
nn.LayerNorm(patch_dim),
nn.Linear(patch_dim, dim)
)
def forward(self, x):
shifts = ((1, -1, 0, 0), (-1, 1, 0, 0), (0, 0, 1, -1), (0, 0, -1, 1))
shifted_x = list(map(lambda shift: F.pad(x, shift), shifts))
x_with_shifts = torch.cat((x, *shifted_x), dim = 1)
return self.to_patch_tokens(x_with_shifts)
class ViT(nn.Module):
def __init__(self, *, image_size, patch_size, num_classes, dim, depth, heads, mlp_dim, pool = 'cls', channels = 3, dim_head = 64, dropout = 0., emb_dropout = 0.):
super().__init__()
image_height, image_width = pair(image_size)
patch_height, patch_width = pair(patch_size)
assert image_height % patch_height == 0 and image_width % patch_width == 0, 'Image dimensions must be divisible by the patch size.'
num_patches = (image_height // patch_height) * (image_width // patch_width)
patch_dim = channels * patch_height * patch_width
assert pool in {'cls', 'mean'}, 'pool type must be either cls (cls token) or mean (mean pooling)'
self.to_patch_embedding = SPT(dim = dim, patch_size = patch_size, channels = channels)
self.pos_embedding = nn.Parameter(torch.randn(1, num_patches + 1, dim))
self.cls_token = nn.Parameter(torch.randn(1, 1, dim))
self.dropout = nn.Dropout(emb_dropout)
self.transformer = Transformer(dim, depth, heads, dim_head, mlp_dim, dropout)
self.pool = pool
self.to_latent = nn.Identity()
self.mlp_head = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, num_classes)
)
def forward(self, img):
x = self.to_patch_embedding(img)
b, n, _ = x.shape
cls_tokens = repeat(self.cls_token, '() n d -> b n d', b = b)
x = torch.cat((cls_tokens, x), dim=1)
x += self.pos_embedding[:, :(n + 1)]
x = self.dropout(x)
x = self.transformer(x)
x = x.mean(dim = 1) if self.pool == 'mean' else x[:, 0]
x = self.to_latent(x)
return self.mlp_head(x)

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@@ -0,0 +1,147 @@
import torch
from torch import nn
from einops import rearrange, repeat
from einops.layers.torch import Rearrange
# helpers
def pair(t):
return t if isinstance(t, tuple) else (t, t)
# classes
class PatchDropout(nn.Module):
def __init__(self, prob):
super().__init__()
assert 0 <= prob < 1.
self.prob = prob
def forward(self, x):
if not self.training or self.prob == 0.:
return x
b, n, _, device = *x.shape, x.device
batch_indices = torch.arange(b, device = device)
batch_indices = rearrange(batch_indices, '... -> ... 1')
num_patches_keep = max(1, int(n * (1 - self.prob)))
patch_indices_keep = torch.randn(b, n, device = device).topk(num_patches_keep, dim = -1).indices
return x[batch_indices, patch_indices_keep]
class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim, dropout = 0.):
super().__init__()
self.net = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, hidden_dim),
nn.GELU(),
nn.Dropout(dropout),
nn.Linear(hidden_dim, dim),
nn.Dropout(dropout)
)
def forward(self, x):
return self.net(x)
class Attention(nn.Module):
def __init__(self, dim, heads = 8, dim_head = 64, dropout = 0.):
super().__init__()
inner_dim = dim_head * heads
project_out = not (heads == 1 and dim_head == dim)
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = nn.LayerNorm(dim)
self.attend = nn.Softmax(dim = -1)
self.dropout = nn.Dropout(dropout)
self.to_qkv = nn.Linear(dim, inner_dim * 3, bias = False)
self.to_out = nn.Sequential(
nn.Linear(inner_dim, dim),
nn.Dropout(dropout)
) if project_out else nn.Identity()
def forward(self, x):
x = self.norm(x)
qkv = self.to_qkv(x).chunk(3, dim = -1)
q, k, v = map(lambda t: rearrange(t, 'b n (h d) -> b h n d', h = self.heads), qkv)
dots = torch.matmul(q, k.transpose(-1, -2)) * self.scale
attn = self.attend(dots)
attn = self.dropout(attn)
out = torch.matmul(attn, v)
out = rearrange(out, 'b h n d -> b n (h d)')
return self.to_out(out)
class Transformer(nn.Module):
def __init__(self, dim, depth, heads, dim_head, mlp_dim, dropout = 0.):
super().__init__()
self.layers = nn.ModuleList([])
for _ in range(depth):
self.layers.append(nn.ModuleList([
Attention(dim, heads = heads, dim_head = dim_head, dropout = dropout),
FeedForward(dim, mlp_dim, dropout = dropout)
]))
def forward(self, x):
for attn, ff in self.layers:
x = attn(x) + x
x = ff(x) + x
return x
class ViT(nn.Module):
def __init__(self, *, image_size, patch_size, num_classes, dim, depth, heads, mlp_dim, pool = 'cls', channels = 3, dim_head = 64, dropout = 0., emb_dropout = 0., patch_dropout = 0.25):
super().__init__()
image_height, image_width = pair(image_size)
patch_height, patch_width = pair(patch_size)
assert image_height % patch_height == 0 and image_width % patch_width == 0, 'Image dimensions must be divisible by the patch size.'
num_patches = (image_height // patch_height) * (image_width // patch_width)
patch_dim = channels * patch_height * patch_width
assert pool in {'cls', 'mean'}, 'pool type must be either cls (cls token) or mean (mean pooling)'
self.to_patch_embedding = nn.Sequential(
Rearrange('b c (h p1) (w p2) -> b (h w) (p1 p2 c)', p1 = patch_height, p2 = patch_width),
nn.Linear(patch_dim, dim),
)
self.pos_embedding = nn.Parameter(torch.randn(num_patches, dim))
self.cls_token = nn.Parameter(torch.randn(1, 1, dim))
self.patch_dropout = PatchDropout(patch_dropout)
self.dropout = nn.Dropout(emb_dropout)
self.transformer = Transformer(dim, depth, heads, dim_head, mlp_dim, dropout)
self.pool = pool
self.to_latent = nn.Identity()
self.mlp_head = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, num_classes)
)
def forward(self, img):
x = self.to_patch_embedding(img)
b, n, _ = x.shape
x += self.pos_embedding
x = self.patch_dropout(x)
cls_tokens = repeat(self.cls_token, '1 1 d -> b 1 d', b = b)
x = torch.cat((cls_tokens, x), dim=1)
x = self.dropout(x)
x = self.transformer(x)
x = x.mean(dim = 1) if self.pool == 'mean' else x[:, 0]
x = self.to_latent(x)
return self.mlp_head(x)

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@@ -0,0 +1,144 @@
import torch
from torch import nn
from einops import rearrange, repeat
from einops.layers.torch import Rearrange, Reduce
# helpers
def exists(val):
return val is not None
def default(val ,d):
return val if exists(val) else d
def pair(t):
return t if isinstance(t, tuple) else (t, t)
# patch merger class
class PatchMerger(nn.Module):
def __init__(self, dim, num_tokens_out):
super().__init__()
self.scale = dim ** -0.5
self.norm = nn.LayerNorm(dim)
self.queries = nn.Parameter(torch.randn(num_tokens_out, dim))
def forward(self, x):
x = self.norm(x)
sim = torch.matmul(self.queries, x.transpose(-1, -2)) * self.scale
attn = sim.softmax(dim = -1)
return torch.matmul(attn, x)
# classes
class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim, dropout = 0.):
super().__init__()
self.net = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, hidden_dim),
nn.GELU(),
nn.Dropout(dropout),
nn.Linear(hidden_dim, dim),
nn.Dropout(dropout)
)
def forward(self, x):
return self.net(x)
class Attention(nn.Module):
def __init__(self, dim, heads = 8, dim_head = 64, dropout = 0.):
super().__init__()
inner_dim = dim_head * heads
project_out = not (heads == 1 and dim_head == dim)
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = nn.LayerNorm(dim)
self.attend = nn.Softmax(dim = -1)
self.dropout = nn.Dropout(dropout)
self.to_qkv = nn.Linear(dim, inner_dim * 3, bias = False)
self.to_out = nn.Sequential(
nn.Linear(inner_dim, dim),
nn.Dropout(dropout)
) if project_out else nn.Identity()
def forward(self, x):
x = self.norm(x)
qkv = self.to_qkv(x).chunk(3, dim = -1)
q, k, v = map(lambda t: rearrange(t, 'b n (h d) -> b h n d', h = self.heads), qkv)
dots = torch.matmul(q, k.transpose(-1, -2)) * self.scale
attn = self.attend(dots)
attn = self.dropout(attn)
out = torch.matmul(attn, v)
out = rearrange(out, 'b h n d -> b n (h d)')
return self.to_out(out)
class Transformer(nn.Module):
def __init__(self, dim, depth, heads, dim_head, mlp_dim, dropout = 0., patch_merge_layer = None, patch_merge_num_tokens = 8):
super().__init__()
self.norm = nn.LayerNorm(dim)
self.layers = nn.ModuleList([])
self.patch_merge_layer_index = default(patch_merge_layer, depth // 2) - 1 # default to mid-way through transformer, as shown in paper
self.patch_merger = PatchMerger(dim = dim, num_tokens_out = patch_merge_num_tokens)
for _ in range(depth):
self.layers.append(nn.ModuleList([
Attention(dim, heads = heads, dim_head = dim_head, dropout = dropout),
FeedForward(dim, mlp_dim, dropout = dropout)
]))
def forward(self, x):
for index, (attn, ff) in enumerate(self.layers):
x = attn(x) + x
x = ff(x) + x
if index == self.patch_merge_layer_index:
x = self.patch_merger(x)
return self.norm(x)
class ViT(nn.Module):
def __init__(self, *, image_size, patch_size, num_classes, dim, depth, heads, mlp_dim, patch_merge_layer = None, patch_merge_num_tokens = 8, channels = 3, dim_head = 64, dropout = 0., emb_dropout = 0.):
super().__init__()
image_height, image_width = pair(image_size)
patch_height, patch_width = pair(patch_size)
assert image_height % patch_height == 0 and image_width % patch_width == 0, 'Image dimensions must be divisible by the patch size.'
num_patches = (image_height // patch_height) * (image_width // patch_width)
patch_dim = channels * patch_height * patch_width
self.to_patch_embedding = nn.Sequential(
Rearrange('b c (h p1) (w p2) -> b (h w) (p1 p2 c)', p1 = patch_height, p2 = patch_width),
nn.LayerNorm(patch_dim),
nn.Linear(patch_dim, dim),
nn.LayerNorm(dim)
)
self.pos_embedding = nn.Parameter(torch.randn(1, num_patches + 1, dim))
self.dropout = nn.Dropout(emb_dropout)
self.transformer = Transformer(dim, depth, heads, dim_head, mlp_dim, dropout, patch_merge_layer, patch_merge_num_tokens)
self.mlp_head = nn.Sequential(
Reduce('b n d -> b d', 'mean'),
nn.Linear(dim, num_classes)
)
def forward(self, img):
x = self.to_patch_embedding(img)
b, n, _ = x.shape
x += self.pos_embedding[:, :n]
x = self.dropout(x)
x = self.transformer(x)
return self.mlp_head(x)

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import torch
from torch import nn
from einops import rearrange, repeat, reduce
from einops.layers.torch import Rearrange
# helpers
def exists(val):
return val is not None
def pair(t):
return t if isinstance(t, tuple) else (t, t)
# classes
class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim, dropout = 0.):
super().__init__()
self.net = nn.Sequential(
nn.LayerNorm(dim),
nn.Linear(dim, hidden_dim),
nn.GELU(),
nn.Dropout(dropout),
nn.Linear(hidden_dim, dim),
nn.Dropout(dropout)
)
def forward(self, x):
return self.net(x)
class Attention(nn.Module):
def __init__(self, dim, heads = 8, dim_head = 64, dropout = 0.):
super().__init__()
inner_dim = dim_head * heads
project_out = not (heads == 1 and dim_head == dim)
self.heads = heads
self.scale = dim_head ** -0.5
self.norm = nn.LayerNorm(dim)
self.attend = nn.Softmax(dim = -1)
self.dropout = nn.Dropout(dropout)
self.to_qkv = nn.Linear(dim, inner_dim * 3, bias = False)
self.to_out = nn.Sequential(
nn.Linear(inner_dim, dim),
nn.Dropout(dropout)
) if project_out else nn.Identity()
def forward(self, x):
x = self.norm(x)
qkv = self.to_qkv(x).chunk(3, dim = -1)
q, k, v = map(lambda t: rearrange(t, 'b n (h d) -> b h n d', h = self.heads), qkv)
dots = torch.matmul(q, k.transpose(-1, -2)) * self.scale
attn = self.attend(dots)
attn = self.dropout(attn)
out = torch.matmul(attn, v)
out = rearrange(out, 'b h n d -> b n (h d)')
return self.to_out(out)
class Transformer(nn.Module):
def __init__(self, dim, depth, heads, dim_head, mlp_dim, dropout = 0.):
super().__init__()
self.norm = nn.LayerNorm(dim)
self.layers = nn.ModuleList([])
for _ in range(depth):
self.layers.append(nn.ModuleList([
Attention(dim, heads = heads, dim_head = dim_head, dropout = dropout),
FeedForward(dim, mlp_dim, dropout = dropout)
]))
def forward(self, x):
for attn, ff in self.layers:
x = attn(x) + x
x = ff(x) + x
return self.norm(x)
class ViT(nn.Module):
def __init__(
self,
*,
image_size,
image_patch_size,
frames,
frame_patch_size,
num_classes,
dim,
spatial_depth,
temporal_depth,
heads,
mlp_dim,
pool = 'cls',
channels = 3,
dim_head = 64,
dropout = 0.,
emb_dropout = 0.
):
super().__init__()
image_height, image_width = pair(image_size)
patch_height, patch_width = pair(image_patch_size)
assert image_height % patch_height == 0 and image_width % patch_width == 0, 'Image dimensions must be divisible by the patch size.'
assert frames % frame_patch_size == 0, 'Frames must be divisible by frame patch size'
num_image_patches = (image_height // patch_height) * (image_width // patch_width)
num_frame_patches = (frames // frame_patch_size)
patch_dim = channels * patch_height * patch_width * frame_patch_size
assert pool in {'cls', 'mean'}, 'pool type must be either cls (cls token) or mean (mean pooling)'
self.global_average_pool = pool == 'mean'
self.to_patch_embedding = nn.Sequential(
Rearrange('b c (f pf) (h p1) (w p2) -> b f (h w) (p1 p2 pf c)', p1 = patch_height, p2 = patch_width, pf = frame_patch_size),
nn.LayerNorm(patch_dim),
nn.Linear(patch_dim, dim),
nn.LayerNorm(dim)
)
self.pos_embedding = nn.Parameter(torch.randn(1, num_frame_patches, num_image_patches, dim))
self.dropout = nn.Dropout(emb_dropout)
self.spatial_cls_token = nn.Parameter(torch.randn(1, 1, dim)) if not self.global_average_pool else None
self.temporal_cls_token = nn.Parameter(torch.randn(1, 1, dim)) if not self.global_average_pool else None
self.spatial_transformer = Transformer(dim, spatial_depth, heads, dim_head, mlp_dim, dropout)
self.temporal_transformer = Transformer(dim, temporal_depth, heads, dim_head, mlp_dim, dropout)
self.pool = pool
self.to_latent = nn.Identity()
self.mlp_head = nn.Linear(dim, num_classes)
def forward(self, video):
x = self.to_patch_embedding(video)
b, f, n, _ = x.shape
x = x + self.pos_embedding[:, :f, :n]
if exists(self.spatial_cls_token):
spatial_cls_tokens = repeat(self.spatial_cls_token, '1 1 d -> b f 1 d', b = b, f = f)
x = torch.cat((spatial_cls_tokens, x), dim = 2)
x = self.dropout(x)
x = rearrange(x, 'b f n d -> (b f) n d')
# attend across space
x = self.spatial_transformer(x)
x = rearrange(x, '(b f) n d -> b f n d', b = b)
# excise out the spatial cls tokens or average pool for temporal attention
x = x[:, :, 0] if not self.global_average_pool else reduce(x, 'b f n d -> b f d', 'mean')
# append temporal CLS tokens
if exists(self.temporal_cls_token):
temporal_cls_tokens = repeat(self.temporal_cls_token, '1 1 d-> b 1 d', b = b)
x = torch.cat((temporal_cls_tokens, x), dim = 1)
# attend across time
x = self.temporal_transformer(x)
# excise out temporal cls token or average pool
x = x[:, 0] if not self.global_average_pool else reduce(x, 'b f d -> b d', 'mean')
x = self.to_latent(x)
return self.mlp_head(x)