Published in ACM Transactions on Graphics (Proc. of Siggraph 2021), 40(4): Article 46., 2021
Yiqian Wu, Yongliang Yang, Qinjie Xiao, Xiaogang Jin.
Abstract:
Facial structure editing of portrait images is challenging given the facial variety, the lack of ground-truth, the necessity of jointly adjusting color and shape, and the requirement of no visual artifacts. In this paper, we investigate how to perform chin editing as a case study of editing facial structures. We present a novel method that can automatically remove the double chin effect in portrait images. Our core idea is to train a fine classification boundary in the latent space of the portrait images. This can be used to edit the chin appearance by manipulating the latent code of the input portrait image while preserving the original portrait features. To achieve such a fine separation boundary, we employ a carefully designed training stage based on latent codes of paired synthetic images with and without a double chin. In the testing stage, our method can automatically handle portrait images with only a refinement to subtle misalignment before and after double chin editing. Our model enables alteration to the neck region of the input portrait image while keeping other regions unchanged, and guarantees the rationality of neck structure and the consistency of facial characteristics. To the best of our knowledge, this presents the first effort towards an effective application for editing double chins. We validate the efficacy and efficiency of our approach through extensive experiments and user studies.
You can use, redistribute, and adapt this software for NON-COMMERCIAL purposes only.
For business inquiries, please contact onethousand@zju.edu.cn / onethousand1250@gmail.com / jin@cad.zju.edu.cn
- Windows
- Python 3.6
- NVIDIA GPU + CUDA10.0 + CuDNN (also tested in CUDA10.1)
- Download the following pretrained models, put each of them to PATH:
model | PATH |
---|---|
classification_model.pth | ./classifier/double_chin_classification |
79999_iter.pth | ./classifier/src/feature_extractor/face_parsing_PyTorch/res/cp |
Gs.pth | ./styleGAN2_model/pretrain |
vgg16.pth | ./styleGAN2_model/pretrain |
shape_predictor_68_face_landmarks.dat.bz2 | ./models |
- Create conda environment:
conda create -n Coarse2Fine python=3.6
activate Coarse2Fine
- Then install other dependencies by
pip install -r requirements.txt
Pre-trained separation boundaries can be found at ./interface/boundaries:
dir | information |
---|---|
├ coarse | coarse separation boundaries of StyleGAN2 |
│ ├ psi_0.5 | coarse separation boundaries trained from psi-0.5 dataset |
│ └ psi_0.8 | coarse separation boundaries trained from psi-0.8 dataset |
├ fine | fine separation boundaries of StyleGAN2 |
│ ├ psi_0.5 | fine separation boundaries trained from psi-0.5 dataset |
│ ├ psi_0.8 | fine separation boundaries trained from psi-0.8 dataset |
└ └ all | fine separation boundaries trained from overall dataset |
Notice that psi-0.5 dataset and psi-0.8 dataset are generated by stylegan2 with psi=0.5(faces are more stable ) and psi=0.8(faces are more diverse)
For real images, first find the matching latent vectors.
First, align faces from input images and save aligned images {name}.jpg
to DATA_PATH/origin.
python align_images.py --raw_dir DATA_PATH/raw --aligned_dir DATA_PATH/origin
Second, we recommend to use the projector of official stylegan2 to obtain the latent codes of real images, to correctly run the StyleGAN2 projector, please follow the Requirements in stylegan2 .
The corresponding latent code (in WP(W+) latent space) {name}_wp.npy
should be placed in DATA_PATH/code
.
Please find the examplar data in ./test
For diffuse method:
python main_diffuse.py --data_dir DATA_PATH --boundary_path ./interface/boundaries/fine/all --alpha -5.0 --latent_space_type WP
The resulting images will be saved in DATA_PATH/diffuse_res, the resulting latent codes will be saved in DATA_PATH/diffuse_code
For warp method:
python main_warp.py --data_dir DATA_PATH --boundary_path ./interface/boundaries/fine/all --alpha -5.0 --latent_space_type WP
The resulting images will be saved in DATA_PATH/warp_res.
-
Data generation:
python generate_data_and_score.py --output_dir DATASET_PATH --num DATASET_SIZE --truncation_psi 0.8
2.Coarse separation boundary training:
python train_coarse_boundary.py --output_dir COARSE_BOUNDARY_DIR --latent_codes_path DATASET_PATH/w.npy --scores_path DATASET_PATH/double_chin_scores.npy --chosen_num_or_ratio 0.1 --split_ratio 0.9
The coarse separation boundary will be saved in COARSE_BOUNDARY_DIR
.
You can also use the pretrained coarse separation boundary in ./interface/boundaries/coarse/psi_0.8/stylegan2_ffhq_double_chin_w
- First, prepare data for diffusion:
python remove_double_chin_step1.py --output_dir TRAINING_DIR --boundary_path COARSE_BOUNDARY_DIR --input_data_dir DATASET_PATH
- Then diffuse the prepared data:
python remove_double_chin_step2.py --data_dir TRAINING_DIR
Resulting images of diffusion will be saved in TRAINING_DIR/diffused
, resulting latent codes will be saved in TRAINING_DIR/codes
.
- After diffuse, you can use the results of diffuse to train the fine separation boundary:
python train_fine_boundary.py --output_dir FINE_BOUNDARY_DIR --latent_codes_path TRAINING_DIR/codes --split_ratio 0.9
The coarse separation boundary will be saved in FINE_BOUNDARY_DIR
onethousand@zju.edu.cn / onethousand1250@gmail.com
If you use this code for your research, please cite our paper:
@article{DBLP:journals/tog/WuYX021,
author = {Yiqian Wu and
Yong{-}Liang Yang and
Qinjie Xiao and
Xiaogang Jin},
title = {Coarse-to-fine: facial structure editing of portrait images via latent
space classifications},
journal = {{ACM} Trans. Graph.},
volume = {40},
number = {4},
pages = {46:1--46:13},
year = {2021}
}
We thanks the following works:
@inproceedings{zhu2020indomain,
title = {In-domain GAN Inversion for Real Image Editing},
author = {Zhu, Jiapeng and Shen, Yujun and Zhao, Deli and Zhou, Bolei},
booktitle = {Proceedings of European Conference on Computer Vision (ECCV)},
year = {2020}
}
@inproceedings{bulat2017far,
title={How far are we from solving the 2D \& 3D Face Alignment problem? (and a dataset of 230,000 3D facial landmarks)},
author={Bulat, Adrian and Tzimiropoulos, Georgios},
booktitle={International Conference on Computer Vision},
year={2017}
}
@inproceedings{shen2020interpreting,
title = {Interpreting the Latent Space of GANs for Semantic Face Editing},
author = {Shen, Yujun and Gu, Jinjin and Tang, Xiaoou and Zhou, Bolei},
booktitle = {CVPR},
year = {2020}
}
@inproceedings{Karras2019stylegan2,
title = {Analyzing and Improving the Image Quality of {StyleGAN}},
author = {Tero Karras and Samuli Laine and Miika Aittala and Janne Hellsten and Jaakko Lehtinen and Timo Aila},
booktitle = {Proc. CVPR},
year = {2020}
}
@inproceedings{CelebAMask-HQ,
title={MaskGAN: Towards Diverse and Interactive Facial Image Manipulation},
author={Lee, Cheng-Han and Liu, Ziwei and Wu, Lingyun and Luo, Ping},
booktitle={IEEE Conference on Computer Vision and Pattern Recognition (CVPR)},
year={2020}
}