The Lightweight Face Recognition Challenge & Workshop will be held in conjunction with the International Conference on Computer Vision (ICCV) 2019, Seoul Korea.
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How To Start:
Training:
- Download ms1m-retinaface from baiducloud or dropbox and unzip it to
$INSIGHTFACE_ROOT/datasets/ - Go into
$INSIGHTFACE_ROOT/recognition/ - Refer to the
retinadataset config section insample_config.pyand copy it to your ownconfig.py. - Start training with
CUDA_VISIBLE_DEVICES='0,1,2,3' python -u train.py --dataset retina --network [your-network] --loss arcface. It will output the accuracy of lfw, cfp_fp and agedb_30 every 2000 batches by default.
Testing:
- testdata-image from baiducloud or dropbox. These face images are all pre-processed and aligned so no need to do further modification.
- To download testdata-video from iQIYI, please visit http://challenge.ai.iqiyi.com/data-cluster. You must download iQIYI-VID-FACE.z01, iQIYI-VID-FACE.z02 and iQIYI-VID-FACE.zip after signin. These face images are all pre-processed and aligned so no need to do further modification.
- To unzip:
zip iQIYI_VID_FACE.zip -s=0 --out iQIYI_VID_FACE_ALL.zip; unzip iQIYI_VID_FACE_ALL.zip - We can get a directory named
iQIYI_VID_FACEafter decompression. Then we have to movevideo_filelist.txtin testdata-image package toiQIYI_VID_FACE/filelist.txt, to indicate the order of videos in our submission feature file.
- To unzip:
- To generate image feature submission file: check
gen_image_feature.py - To generate video feature submission file: check
gen_video_feature.py - Submit binary feature to the right section on test server.
You can also check the verification performance during training time on LFW,CFP_FP,AgeDB_30 datasets.
Evaluation:
Final ranking is determined by the TAR under 1:1 protocal only, for all valid submissions.
For image testset, we evaluate the TAR under FAR@e-8 while we choose the TAR under FAR@e-4 for video testset.
For track-1, we will rank all players as following formula: TAR(glint-light)+TAR(iqiyi-light)
For track-2, we will rank all players as following formula: TAR(glint-large)+TAR(iqiyi-large)
Discussion:
https://github.com/deepinsight/insightface/issues/632
Baseline:
- Network y2(a deeper mobilefacenet): 933M FLOPs. TAR_image: 0.64691, TAR_video: [TODO]
- Network r100fc(ResNet100FC-IR): 24G FLOPs. TAR_image: 0.80312, TAR_video: [TODO]
Candidate solutions: