imomin / DPE

[CVPR 2023] DPE: Disentanglement of Pose and Expression for General Video Portrait Editing

Home Page:https://carlyx.github.io/DPE/

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DPE: Disentanglement of Pose and Expression for General Video Portrait Editing

            Open In Colab


1 MAIS & NLPR, Institute of Automation, Chinese Academy of Sciences, Beijing, China   2 School of Artificial Intelligence, University of Chinese Academy of Sciences   3 Tencent AI Lab, ShenZhen, China  

CVPR 2023


🔥 Demo

  • 🔥 Video editing: single source video & a driving video & a piece of audio. We tranfer pose through the video and transfer expression through the audio with the help of SadTalker.
Source video Result
full_s.mp4
dpe.mp4
full_s.mp4
dpe.mp4
full_s.mp4
dpe.mp4
  • 🔥 Video editing: single source image & a driving video & a piece of audio. We tranfer pose through the video and transfer expression through the audio with the help of SadTalker.

demo4_1.mp4
demo5_1.mp4

  • 🔥 Video editing: single source image & two driving videos. We tranfer pose through the first video and transfer expression through the second video. Some videos are selected from here.

dpe dpe

📋 Changelog

  • 2023.07.21 Release code for one-shot driving.
  • 2023.05.26 Release code for training.
  • 2023.05.06 Support Enhancement.
  • 2023.05.05 Support Video editing.
  • 2023.04.30 Add some demos.
  • 2023.03.18 Support Pose drivingExpression driving and Pose and Expression driving.
  • 2023.03.18 Upload the pre-trained model, which is fine-tuning for expression generator.
  • 2023.03.03 Release the test code!
  • 2023.02.28 DPE has been accepted by CVPR 2023!

🚧 TODO

  • Test code for video driving.
  • Some demos.
  • Gradio/Colab Demo.
  • Training code of each componments.
  • Test code for video editing.
  • Test code for one-shot driving.
  • Integrate audio driven methods for video editing.
  • Integrate GFPGAN for face enhancement.

🔮 Inference

Dependence Installation

CLICK ME
git clone https://github.com/Carlyx/DPE
cd DPE 
conda create -n dpe python=3.8
source activate dpe
pip install torch==1.12.1+cu113 torchvision==0.13.1+cu113 torchaudio==0.12.1 --extra-index-url https://download.pytorch.org/whl/cu113
pip install -r requirements.txt
### install gpfgan for enhancer
pip install git+https://github.com/TencentARC/GFPGAN

Trained Models

CLICK ME

Please download our pre-trained model and put it in ./checkpoints.

Model Description
checkpoints/dpe.pt Pre-trained model (V1).

Expression driving

python run_demo.py --s_path ./data/s.mp4 \
 		--d_path ./data/d.mp4 \
		--model_path ./checkpoints/dpe.pt \
		--face exp \
		--output_folder ./res

Pose driving

python run_demo.py --s_path ./data/s.mp4 \
 		--d_path ./data/d.mp4 \
		--model_path ./checkpoints/dpe.pt \
		--face pose \
		--output_folder ./res

Expression and pose driving

Video driving:

python run_demo.py --s_path ./data/s.mp4 \
 		--d_path ./data/d.mp4 \
		--model_path ./checkpoints/dpe.pt \
		--face both \
		--output_folder ./res

One-shot driving:

python run_demo_single.py --s_path ./data/s.jpg \
 		--pose_path ./data/pose.mp4 \
        --exp_path ./data/exp.mp4 \
		--model_path ./checkpoints/dpe.pt \
		--face both \
		--output_folder ./res

Crop full video

python crop_video.py

Video editing

Before video editing, you should run python crop_video.py to process the input full video. For pre-trained segmentation model, you can download from here and put it in ./checkpoints.

(Optional) You can run git clone https://github.com/TencentARC/GFPGAN and download the pre-trained enhancement model from here and put it in ./checkpoints. Then you can use --EN to make the result better.

python run_demo_paste.py --s_path <cropped source video> \
  --d_path <driving video> \
  --box_path <txt after running crop_video.py> \
  --model_path ./checkpoints/dpe.pt \
  --face exp \
  --output_folder ./res \
  --EN 

Video editing for audio driving

  TODO

🔮 Training

  • Data preprocessing.

To train DPE, please follow video-preprocessing to download and pre-process the VoxCelebA dataset. We use the lmdb to improve I/O efficiency. (Or you can rewrite the Class VoxDataset in dataset.py to load data with .mp4 directly.)

  • Train DPE from scratch:
python train.py --data_root <DATA_PATH>
  • (Optional) If you want to accelerate convergence speed, you can download the pre-trained model of LIA and rename it to vox.pt.
python train.py --data_root <DATA_PATH> --resume_ckpt <model_path for vox.pt>

🛎 Citation

If you find our work useful in your research, please consider citing:

@InProceedings{Pang_2023_CVPR,
    author    = {Pang, Youxin and Zhang, Yong and Quan, Weize and Fan, Yanbo and Cun, Xiaodong and Shan, Ying and Yan, Dong-Ming},
    title     = {DPE: Disentanglement of Pose and Expression for General Video Portrait Editing},
    booktitle = {Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)},
    month     = {June},
    year      = {2023},
    pages     = {427-436}
}

💗 Acknowledgements

Part of the code is adapted from LIA, PIRenderer, STIT. We thank authors for their contribution to the community.

🥂 Related Works

📢 Disclaimer

This is not an official product of Tencent. This repository can only be used for personal/research/non-commercial purposes.

About

[CVPR 2023] DPE: Disentanglement of Pose and Expression for General Video Portrait Editing

https://carlyx.github.io/DPE/

License:MIT License


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