Paper | Supplementary | Demo
Tao Yang1, Peiran Ren1, Xuansong Xie1, Lei Zhang1,2
1DAMO Academy, Alibaba Group, Hangzhou, China
2Department of Computing, The Hong Kong Polytechnic University, Hong Kong, China
(2021-07-06) The training code will be released soon. Stay tuned.
(2021-10-11) The Colab demo for GPEN is available now .
(2021-10-22) GPEN can now work with SR methods. A SR model trained by myself is provided. Replace it with your own model if necessary.
- Clone this repository:
git clone https://github.com/yangxy/GPEN.git
cd GPEN
-
Download RetinaFace model and our pre-trained model (not our best model due to commercial issues) and put them into
weights/
.RetinaFace-R50 | GPEN-BFR-512 | GPEN-BFR-512-D | GPEN-BFR-256 | GPEN-Colorization-1024 | GPEN-Inpainting-1024 | GPEN-Seg2face-512 | rrdb_realesrnet_psnr
-
Restore face images:
python face_enhancement.py --model GPEN-BFR-512 --size 512 --channel_multiplier 2 --narrow 1 --use_sr --indir examples/imgs --outdir examples/outs-BFR
- Colorize faces:
python face_colorization.py
- Complete faces:
python face_inpainting.py
- Synthesize faces:
python segmentation2face.py
If our work is useful for your research, please consider citing:
@inproceedings{Yang2021GPEN,
title={GAN Prior Embedded Network for Blind Face Restoration in the Wild},
author={Tao Yang, Peiran Ren, Xuansong Xie, and Lei Zhang},
booktitle={IEEE Conference on Computer Vision and Pattern Recognition (CVPR)},
year={2021}
}
© Alibaba, 2021. For academic and non-commercial use only.
We borrow some codes from Pytorch_Retinaface, stylegan2-pytorch, and Real-ESRGAN.
If you have any questions or suggestions about this paper, feel free to reach me at [email protected].