HairMapper is a hair-removal network that can be applied in hair design and 3D face reconstruction.
Published in 2022 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR’2022)
Yiqian Wu, Yongliang Yang, Xiaogang Jin*
Abstract:
Removing hair from portrait images is challenging due to the complex occlusions between hair and face, as well as the lack of paired portrait data with/without hair. To this end, we present a dataset and a baseline method for removing hair from portrait images using generative adversarial networks (GANs). Our core idea is to train a fully connected network HairMapper to find the direction of hair removal in the latent space of StyleGAN for the training stage. We develop a new separation boundary and diffuse method to generate paired training data for males, and a novel ''female-male-bald'' pipeline for paired data of females. Experiments show that our method can naturally deal with portrait images with variations on gender, age, etc. We validate the superior performance of our method by comparing it to state-of-the-art methods through extensive experiments and user studies. We also demonstrate its applications in hair design and 3D face reconstruction.
You can use, redistribute, and adapt this software for NON-COMMERCIAL purposes only.
- Windows (not tested on Linux yet)
- Python 3.7
- NVIDIA GPU + CUDA11.1 + CuDNN
-
git clone git@github.com:oneThousand1000/HairMapper.git
-
Download the following pretrained models, put each of them to path:
model path StyleGAN2-ada-Generator.pth ./ckpts e4e_ffhq_encode.pt ./ckpts model_ir_se50.pth ./ckpts face_parsing.pth ./ckpts vgg16.pth ./ckpts classification_model.pth ./classifier/gender_classification classification_model.pth ./classifier/hair_classification
face_parsing.pth from: https://github.com/switchablenorms/CelebAMask-HQ/tree/master/face_parsing (79999_iter.pth)
e4e_ffhq_encode.pt from: https://github.com/omertov/encoder4editing
model_ir_se50.pth from: https://github.com/orpatashnik/StyleCLIP
The StyleGAN2-ada-Generator.pth contains the same model parameters as the original stylegan2 pkl model stylegan2-ffhq-config-f.pkl
.
-
Create conda environment:
conda create -n HairMapper python=3.7 activate HairMapper
-
StyleGAN2-ada requirements: The code relies heavily on custom PyTorch extensions that are compiled on the fly using NVCC. On Windows, the compilation requires Microsoft Visual Studio. We recommend installing Visual Studio Community Edition and adding it into
PATH
using"C:\Program Files (x86)\Microsoft Visual Studio\<VERSION>\Community\VC\Auxiliary\Build\vcvars64.bat"
.Please modify
compiler path
in./styleGAN2_ada_model/stylegan2_ada/torch_utils/custom_ops.py
according to your own Microsoft Visual Studio installation path (default:C:\Program Files (x86)\Microsoft Visual Studio
).def _find_compiler_bindir(): patterns = [ ''' modify the compiler dir according to your own VS installation path ''' ] for pattern in patterns: matches = sorted(glob.glob(pattern)) if len(matches): return matches[-1] return None
-
Then install other dependencies by
pip install torch===1.7.1+cu110 torchvision===0.8.2+cu110 torchaudio===0.7.2 -f https://download.pytorch.org/whl/torch_stable.html
pip install -r requirements.txt
We modified the stylegan-ada pytorch version to output latent codes in Z, W, W+
and StyleSpace
more conveniently.
Since we find that getting those CUDA extensions to run on Windows is a hassle (stytlegan2-ada issue#97), we also modified the stylegan-ada so that you can choose to use a slow reference implementation of upfirdn2d()
and bias_act()
(slower, but can be directly used without compiling CUDA extensions).
For those who can not compile the CUDA extensions successfully, please set USING_CUDA_TO_SPEED_UP = False
in styleGAN2_ada_model/stylegan2_ada/torch_utils/ops/bias_act.py
and styleGAN2_ada_model/stylegan2_ada/torch_utils/ops/upfirdn2d.py
to use the slow reference implementation.
Please fill out this google form for pre-trained models access:
https://forms.gle/a5pRbE3yxEr7sZDm7
Then download and put the pre-trained models to path:
model | path |
---|---|
Final HairMapper (can be applied to female and male) | mapper/checkpoints/final/best_model.pt |
Man HairMapper (can only be applied to male) | mapper/checkpoints/man/best_model.pt |
Directly use our pre-trained model for hair removal.
step1:
Real images should be extracted and aligned using DLib and a function from the original FFHQ dataset preparation step, you can use the image align code provided by stylegan-encoder.
Please put the aligned real images to ./test_data/origin (examplar data can be found in ./data/test_data/final/origin).
step2:
Then using encoder4editing to get the corresponding latent codes:
cd encoder4editing
python encode.py --data_dir ../test_data
latent codes will be saved to ./test_data/code
.
step3:
Then run HairMapper:
cd ../
python main_mapper.py --data_dir ./test_data
If you want to perform an additional diffusion (slower, but can achieve better results):
python main_mapper.py --data_dir ./test_data --diffuse
Considering that our method involves several optimizations and several network trainings, we provide a step-by-step training procedure.
Generate D_0 dataset:
python step1_generate_data.py --dataset_name D0 --num DatasetSize
Generate D_noise dataset:
python step1_generate_data.py --dataset_name Dnoise --num DatasetSize --add_noise
Datasets will be saved to ./training_runs/dataset/D0
and ./training_runs/dataset/Dnoise
.
There should be enough bald-data in D0 to train a hair separation boundary, but a randomly sampled dataset consists of 10000-images may only contains 100 bald-images. So that we recommend you to directly use our pre-trained male hair separation boundary in ./data/boundaries/stylegan2_ada/coarse/stylegan2_ffhq_hair_w_male
and gender separation boundary in ./data/boundaries/stylegan2_ada/coarse/stylegan2_ffhq_gender_styleflow
.
Or you can train male hair separation boundary on D_0 for yourself. (not recommended)
python step2_train_man_hair_coarse_boundary.py --output_dir $HairBoundaryDir$ --dataset_path ./training_runs/dataset/D0
Train gender separation boundary on StyleFlow results. (We prepared the gender transition results in ./data/styleflow_gender_training_data
)
python step2_train_gender_boundary.py --output_dir $GenderBoundaryDir$ --dataset_path ./data/styleflow_gender_training_data
For D_0
python step3_train_bald_male_data.py --dataset_name D0 --num 2500
to use your own hair boundary:
python step3_train_bald_male_data.py --dataset_name D0 --hair_boundary_dir $HairBoundaryDir$ --num 2500
Results will be saved to ./training_runs/male_training/D0
For D_noise
python step3_train_bald_male_data.py --dataset_name Dnoise --num 2500
to use your own hair boundary:
python step3_train_bald_male_data.py --dataset_name Dnoise --hair_boundary_dir $HairBoundaryDir$ --num 2500
Results will be saved to ./training_runs/male_training/Dnoise
First, prepare training data:
python step4_male_mapper_data_preparation.py --dataset_name D0 --noise_dataset_name Dnoise --mapper_name male_mapper
Training data list will be saved to ./training_runs/male_mapper/data
Train male mapper:
python train_mapper.py --mapper_name male_mapper --max_steps 52000
python step6_train_bald_female_data.py --dataset_name D0 --male_mapper_name male_mapper --num 2500
python step6_train_bald_female_data.py --dataset_name Dnoise --male_mapper_name male_mapper --num 2500
Results will be saved to ./training_runs/female_training/D0
or use the pre-trained male mapper:
python step6_train_bald_female_data.py --dataset_name D0 --mapper_ckpt_path mapper/checkpoints/man/best_model.pt --num 2500
python step6_train_bald_female_data.py --dataset_name Dnoise --mapper_ckpt_path mapper/checkpoints/man/best_model.pt --num 2500
Results will be saved to ./training_runs/female_training/Dnoise
First, prepare training data:
python step7_final_mapper_data_preparation.py --dataset_name D0 --noise_dataset_name Dnoise --mapper_name final_mapper
Training data list will be saved to ./training_runs/final_mapper/data
Train final mapper:
python train_mapper.py --mapper_name final_mapper --max_steps 26000
onethousand@zju.edu.cn / onethousand1250@gmail.com
@InProceedings{Wu_2022_CVPR,
author = {Wu, Yiqian and Yang, Yong-Liang and Jin, Xiaogang},
title = {HairMapper: Removing Hair From Portraits Using GANs},
booktitle = {Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)},
month = {June},
year = {2022},
pages = {4227-4236}
}
We thanks the following works:
@InProceedings{Patashnik_2021_ICCV,
author = {Patashnik, Or and Wu, Zongze and Shechtman, Eli and Cohen-Or, Daniel and Lischinski, Dani},
title = {StyleCLIP: Text-Driven Manipulation of StyleGAN Imagery},
booktitle = {Proceedings of the IEEE/CVF International Conference on Computer Vision (ICCV)},
month = {October},
year = {2021},
pages = {2085-2094}
}
@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{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}
}
@article{tov2021designing,
title={Designing an Encoder for StyleGAN Image Manipulation},
author={Tov, Omer and Alaluf, Yuval and Nitzan, Yotam and Patashnik, Or and Cohen-Or, Daniel},
journal={arXiv preprint arXiv:2102.02766},
year={2021}
}
@inproceedings{Karras2020ada,
title = {Training Generative Adversarial Networks with Limited Data},
author = {Tero Karras and Miika Aittala and Janne Hellsten and Samuli Laine and Jaakko Lehtinen and Timo Aila},
booktitle = {Proc. NeurIPS},
year = {2020}
}