Facelet-Bank for Fast Portrait Manipulation
Prerequisites
- Python 2.7 or Python 3.6
- NVIDIA GPU or CPU (only for testing)
- Linux or MacOS
Getting Started
Installation
Install pytorch from http://pytorch.org. The code is tested on 0.3.1 version. Other version should also work with some modification.
Clone this project to your machine.
git clone https://github.com/yingcong/Facelet_Bank.git
cd Facelet_Bank
Run
pip install -r requirements.txt
to install other packages.
How to use
We support testing on images and videos.
To test an image:
python test_facelet_net.py test_image --input_path examples/input.png --effect facehair --strength 5
If "--input_path" is a folder, all images in this folder will be tested.
To test a video:
python test_facelet_net.py test_video --input_path examples/input.mp4 --effect facehair --strength 5
Note that all required models will be downloaded automatically for the first time. Alternatively, you can also manually download the facelet_bank folder from dropbox or Baidu Netdisk and put them in the root directory.
If you do not have a GPU, please include "-cpu" argument to your command. For speed issue, you can optionally use a smaller image by specifying the "--size " option.
python test_facelet_net.py test_image --input_path examples/input.png --effect facehair --strength 5 --size 400,300 -cpu
For more details, please run
python test_facelet_net.py test_image --help
or
python test_facelet_net.py test_video --help
Note: Although this framework is robust to an extent, testing on extreme cases could cause the degradation of quality. For example, an extremely high strength may cause artifact. Testing on an extremely large image may not work as well as testing on a proper size (from 448 x 448 to 600 x 800).
More effects
The current project supports
- facehair
- older
- younger
- feminization
- masculinization
More effects will be available in the future. Once a new effect is released, the global_vars.py file will be updated accordingly. We also provide an instruction of training your own effect in the following.
Results
Training
Training our network requires two steps, i.e., generating the attribute vector (Eq. (6) in our paper) and training our model.
Generating attribute vector
We utilize the Deep Feature Interpolation project to generate attribute vectors as pseudo labels to supervise our facelet network. Please see https://github.com/paulu/deepfeatinterp for more details.
After setting up the DFI project, copy DFI/demo2_facelet.py to its root directory. Then cd to the DFI project folder and run
python demo2_facelet.py --effect facehair --input_path images/celeba --npz_path attribute_vector
This extracts the facehair effect from images/celeba folder, and save the extracted attribute vectors to attribute_vector folder. For more details, please run
python demo2_facelet.py --help
Note: In our implementation, we use the aligned version of celebA dataset for training, and resize the images to 448 x 448.
From our experience, 2000~3000 samples should be enough to train a facelet model.
Training Facelet model
After generating enough attribute vectors, we can utilize them to train a facelet model. Please cd to the Facelet_bank folder and run
python train_facelet_net.py --effect facehair --input_path ../deepfeatinterp/images/celeba --npz_path ../deepfeatinterp/attribute_vector
where "--input_path" is the training image folder (the one used for generating attribute vector), and "--npz_path" is the folder of the generated attribute vectors.
For more details, please run
python train_facelet_net.py --help
Testing your own model
The trained facelet model is stored in the checkpoint folder. To test the trained model, please include the "--local_model" augment, i.e.,
python test_facelet_net.py test_image --input_path examples/input.png --effect facehair --strength 5 --local_model
Reference
Ying-Cong Chen, Huaijia Lin, Michelle Shu, Ruiyu Li, Xin Tao, Yangang Ye, Xiaoyong Shen, Jiaya Jia, "Facelet-Bank for Fast Portrait Manipulation" ,* Computer Vision and Pattern Recognition (CVPR), 2018 pdf
@inproceedings{Chen2018Facelet,
title={Facelet-Bank for Fast Portrait Manipulation},
author={Chen, Ying-Cong and Lin, Huaijia and Shu, Michelle and Li, Ruiyu and Tao, Xin and Ye, Yangang and Shen, Xiaoyong and Jia, Jiaya},
booktitle={CVPR},
year={2018}
}
Contact
Please contact yingcong.ian.chen@gmail.com if you have any question or suggestion.