We provide the training and testing codes for SAN, implemented in PyTorch. This project is inspired by supervision-by-registration.
- Download 300W-Style and AFLW-Style from Google Drive, and extract the downloaded files into
~/datasets/
. - In 300W-Style and AFLW-Style directories, the
Original
sub-directory contains the original images from 300-W and AFLW - The sketch, light, and gray style images are used to analyze the image style variance in facial landmark detection.
- For simplification, we change some file names, such as removing the space or unifying the file extension.
300W-Style.tgz
should be extracted into ~/datasets/300W-Style
by typing tar xzvf 300W-Style.tgz; mv 300W-Convert 300W-Style
.
It has the following structure:
--300W-Gray
--300W ; afw ; helen ; ibug ; lfpw
--300W-Light
--300W ; afw ; helen ; ibug ; lfpw
--300W-Sketch
--300W ; afw ; helen ; ibug ; lfpw
--300W-Original
--300W ; afw ; helen ; ibug ; lfpw
--Bounding_Boxes
--*.mat
AFLW-Style.tgz
should be extracted into ~/datasets/AFLW-Style
by typing tar xzvf AFLW-Style.tgz; mv AFLW-Convert AFLW-Style
.
It has the following structure (annotation
is generated by python aflw_from_mat.py
):
--aflw-Gray
--0 2 3
--aflw-Light
--0 2 3
--aflw-Sketch
--0 2 3
--aflw-Original
--0 2 3
--annotation
--0 2 3
cd cache_data
python aflw_from_mat.py
python generate_300W.py
The generated list file will be saved into ./cache_data/lists/300W
and ./cache_data/lists/AFLW
.
python crop_pic.py
The above commands will pre-crop the face images, and save them into ./cache_data/cache/300W
and ./cache_data/cache/AFLW
.
- Step-1 : cluster images into different groups, for example
sh scripts/300W/300W_Cluster.sh 0,1 GTB 3
. - Step-2 : use
sh scripts/300W/300W_CYCLE_128.sh 0,1 GTB
orsh scripts/300W/300W_CYCLE_128.sh 0,1 DET
to train SAN on 300-W. GTB
means using the ground truth face bounding box, andDET
means using the face detection results from a pre-trained detector (these results are provided from the official 300-W website).
- Step-1 : cluster images into different groups, for example
sh scripts/AFLW/AFLW_Cluster.sh 0,1 GTB 3
. - Step-2 : use
sh scripts/AFLW/AFLW_CYCLE_128.FULL.sh
orsh scripts/AFLW/AFLW_CYCLE_128.FRONT.sh
to train SAN on AFLW.
You can donwload a pre-trained model from the snapshots
directory of here, which is trained on 300-W. Put it in snapshots
and use the following command to evaluate a single image. This command will print the location of each landmark.
CUDA_VISIBLE_DEVICES=1 python san_eval.py --image ./cache_data/cache/test_1.jpg --model ./snapshots/SAN_300W_GTB_itn_cpm_3_50_sigma4_128x128x8/checkpoint_49.pth.tar --face 819.27 432.15 971.70 575.87
The parameter image
is the image path to be evaluated, model
is the trained SAN model, and face
denotes the coordinates of the face bounding box.
The ground truth landmark annotation for ./cache_data/cache/test_1.jpg
is ./cache_data/cache/test_1.pts
.
If this project helps your research, please cite the following papers:
@inproceedings{dong2018san,
title={Style Aggregated Network for Facial Landmark Detection},
author={Dong, Xuanyi and Yan, Yan and Ouyang, Wanli and Yang, Yi},
booktitle={Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition (CVPR)},
pages={379--388},
year={2018}
}
@inproceedings{dong2018sbr,
title={{Supervision-by-Registration}: An Unsupervised Approach to Improve the Precision of Facial Landmark Detectors},
author={Dong, Xuanyi and Yu, Shoou-I and Weng, Xinshuo and Wei, Shih-En and Yang, Yi and Sheikh, Yaser},
booktitle={Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition (CVPR)},
pages={360--368},
year={2018}
}
To ask questions or report issues, please open an issue on the issues tracker.