Facial Geometric Detail Recovery via Implicit Representation
🌿 Facial Geometric Detail Recovery via Implicit Representation
Xingyu Ren, Alexandros Lattas, Baris Gecer, Jiankang Deng, Chao Ma, Xiaokang Yang, and Stefanos Zafeiriou.
arXiv Preprint 2022
Introduction
This paper introduces a single facial image geometric detail recovery algorithm. The method generates complete high-fidelity texture maps from occluded facial images, and employs implicit renderer and shape functions, to derive fine geometric details by decoupled specular normals. As a bonus, it disentangles the facial texture into approximate diffuse albedo, diffuse and specular shading in a self-supervision manner.
Installation
Please refer to the installation and usage of IDR.
The code is compatible with python 3.7 and pytorch 1.7.1. In addition, the following packages are required:
numpy, scikit-image, trimesh (with pyembree), opencv, torchvision, pytorch3d 0.4.0.
You can see INSTALL.md for manual installation.
Tutorial
Data Preprocessing
We have provided several textured meshes from Google Drive and Baidu Drive (password: wp47). Otherwise, please refer to OSTeC to make a textured mesh firstly.
Please download raw textured meshes and run:
cd ./code
bash script/data_process.sh
You can synthesize the auxiliary image sets for the next implicit details recovery.
Train & Eval
You can start the training phase with the following script.
cd ./code
bash script/fast_train.sh
We also provide a script for eval:
cd ./code
bash script/fast_eval.sh
Citation
If any parts of our paper and codes are helpful to your work, please generously citing:
@misc{ren2022facial,
title={Facial Geometric Detail Recovery via Implicit Representation},
author={Xingyu Ren and Alexandros Lattas and Baris Gecer and Jiankang Deng and Chao Ma and Xiaokang Yang and Stefanos Zafeiriou},
year={2022},
eprint={2203.09692},
archivePrefix={arXiv},
primaryClass={cs.CV}
}
Reference
We refer to the following repositories when implementing our whole pipeline. Thanks for their great work.
