license: mit
LivePortrait: Efficient Portrait Animation with Stitching and Retargeting Control
π₯ For more results, visit our homepage π₯
π₯ Updates
2024/07/10
: πͺ We support audio and video concatenating, driving video auto-cropping, and template making to protect privacy. More to see here.2024/07/09
: π€ We released the HuggingFace Space, thanks to the HF team and Gradio!2024/07/04
: π We released the initial version of the inference code and models. Continuous updates, stay tuned!2024/07/04
: π₯ We released the homepage and technical report on arXiv.
Introduction
This repo, named LivePortrait, contains the official PyTorch implementation of our paper LivePortrait: Efficient Portrait Animation with Stitching and Retargeting Control. We are actively updating and improving this repository. If you find any bugs or have suggestions, welcome to raise issues or submit pull requests (PR) π.
π₯ Getting Started
1. Clone the code and prepare the environment
git clone https://github.com/KwaiVGI/LivePortrait
cd LivePortrait
# create env using conda
conda create -n LivePortrait python==3.9.18
conda activate LivePortrait
# install dependencies with pip
pip install -r requirements.txt
Note: make sure your system has FFmpeg installed!
2. Download pretrained weights
The easiest way to download the pretrained weights is from HuggingFace:
# you may need to run `git lfs install` first
git clone https://huggingface.co/KwaiVGI/liveportrait pretrained_weights
Alternatively, you can download all pretrained weights from Google Drive or Baidu Yun. Unzip and place them in ./pretrained_weights
.
Ensuring the directory structure is as follows, or contains:
pretrained_weights
βββ insightface
β βββ models
β βββ buffalo_l
β βββ 2d106det.onnx
β βββ det_10g.onnx
βββ liveportrait
βββ base_models
β βββ appearance_feature_extractor.pth
β βββ motion_extractor.pth
β βββ spade_generator.pth
β βββ warping_module.pth
βββ landmark.onnx
βββ retargeting_models
βββ stitching_retargeting_module.pth
3. Inference π
Fast hands-on
python inference.py
If the script runs successfully, you will get an output mp4 file named animations/s6--d0_concat.mp4
. This file includes the following results: driving video, input image, and generated result.
Or, you can change the input by specifying the -s
and -d
arguments:
python inference.py -s assets/examples/source/s9.jpg -d assets/examples/driving/d0.mp4
# disable pasting back to run faster
python inference.py -s assets/examples/source/s9.jpg -d assets/examples/driving/d0.mp4 --no_flag_pasteback
# more options to see
python inference.py -h
Driving video auto-cropping
π To use your own driving video, we recommend:
- Crop it to a 1:1 aspect ratio (e.g., 512x512 or 256x256 pixels), or enable auto-cropping by
--flag_crop_driving_video
. - Focus on the head area, similar to the example videos.
- Minimize shoulder movement.
- Make sure the first frame of driving video is a frontal face with neutral expression.
Below is a auto-cropping case by --flag_crop_driving_video
:
python inference.py -s assets/examples/source/s9.jpg -d assets/examples/driving/d13.mp4 --flag_crop_driving_video
If you find the results of auto-cropping is not well, you can modify the --scale_crop_video
, --vy_ratio_crop_video
options to adjust the scale and offset, or do it manually.
Motion template making
You can also use the auto-generated motion template files ending with .pkl
to speed up inference, and protect privacy, such as:
python inference.py -s assets/examples/source/s9.jpg -d assets/examples/driving/d5.pkl
Discover more interesting results on our Homepage π
4. Gradio interface π€
We also provide a Gradio interface for a better experience, just run by:
python app.py
You can specify the --server_port
, --share
, --server_name
arguments to satisfy your needs!
π We also provide an acceleration option --flag_do_torch_compile
. The first-time inference triggers an optimization process (about one minute), making subsequent inferences 20-30% faster. Performance gains may vary with different CUDA versions.
# enable torch.compile for faster inference
python app.py --flag_do_torch_compile
Note: This method has not been fully tested. e.g., on Windows.
Or, try it out effortlessly on HuggingFace π€
5. Inference speed evaluation πππ
We have also provided a script to evaluate the inference speed of each module:
python speed.py
Below are the results of inferring one frame on an RTX 4090 GPU using the native PyTorch framework with torch.compile
:
Model | Parameters(M) | Model Size(MB) | Inference(ms) |
---|---|---|---|
Appearance Feature Extractor | 0.84 | 3.3 | 0.82 |
Motion Extractor | 28.12 | 108 | 0.84 |
Spade Generator | 55.37 | 212 | 7.59 |
Warping Module | 45.53 | 174 | 5.21 |
Stitching and Retargeting Modules | 0.23 | 2.3 | 0.31 |
Note: The values for the Stitching and Retargeting Modules represent the combined parameter counts and total inference time of three sequential MLP networks.
Community Resources π€
Discover the invaluable resources contributed by our community to enhance your LivePortrait experience:
- ComfyUI-LivePortraitKJ by @kijai
- comfyui-liveportrait by @shadowcz007
- LivePortrait hands-on tutorial by @AI Search
- ComfyUI tutorial by @Sebastian Kamph
- LivePortrait In ComfyUI by @Benji
- Replicate Playground and cog-comfyui by @fofr
And many more amazing contributions from our community!
Acknowledgements
We would like to thank the contributors of FOMM, Open Facevid2vid, SPADE, InsightFace repositories, for their open research and contributions.
Citation π
If you find LivePortrait useful for your research, welcome to π this repo and cite our work using the following BibTeX:
@article{guo2024liveportrait,
title = {LivePortrait: Efficient Portrait Animation with Stitching and Retargeting Control},
author = {Guo, Jianzhu and Zhang, Dingyun and Liu, Xiaoqiang and Zhong, Zhizhou and Zhang, Yuan and Wan, Pengfei and Zhang, Di},
journal = {arXiv preprint arXiv:2407.03168},
year = {2024}
}