Awesome
FACIAL: Synthesizing Dynamic Talking Face with Implicit Attribute Learning
PyTorch implementation for the paper:
FACIAL: Synthesizing Dynamic Talking Face with Implicit Attribute Learning
Chenxu Zhang, Yifan Zhao, Yifei Huang, Ming Zeng, Saifeng Ni, Madhukar Budagavi, Xiaohu Guo
ICCV 2021
Update: train a new person on Google Colab
Run the test demo on Google Colab
Requirements
- Python environment
conda create -n audio_face
conda activate audio_face
- ffmpeg
sudo apt-get install ffmpeg
- python packages
pip install -r requirements.txt
- you may add opencv by conda.
conda install opencv
Citation
@inproceedings{zhang2021facial,
title={FACIAL: Synthesizing Dynamic Talking Face with Implicit Attribute Learning},
author={Zhang, Chenxu and Zhao, Yifan and Huang, Yifei and Zeng, Ming and Ni, Saifeng and Budagavi, Madhukar and Guo, Xiaohu},
booktitle={Proceedings of the IEEE/CVF International Conference on Computer Vision (ICCV)},
pages={3867--3876},
year={2021}
}
Acknowledgments
We use Deep3DFaceReconstruction for face reconstruction, DeepSpeech and VOCA for audio feature extraction, and 3dface for face rendering. Rendering-to-video module borrows heavily from everybody-dance-now.