- EchoMimicV1: Lifelike Audio-Driven Portrait Animations through Editable Landmark Conditioning. GitHub
- EchoMimicV2: Towards Striking, Simplified, and Semi-Body Human Animation. GitHub
- [2024.11.27] 🔥 Installation tutorial is now available. Thanks AiMotionStudio for the contribution.
- [2024.11.22] 🔥 GradioUI is now available. Thanks @gluttony-10 for the contribution.
- [2024.11.21] 🔥 We release the EMTD dataset list and processing scripts.
- [2024.11.21] 🔥 We release our EchoMimicV2 codes and models.
- [2024.11.15] 🔥 Our paper is in public on arxiv.
ch_intro_git.mp4 |
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echomimicv2_demo_video.mp4 |
en_01.mp4 |
en_02.mp4 |
en_03.mp4 |
en_04.mp4 |
en_05.mp4 |
en_06.mp4 |
en_07.mp4 |
en_08.mp4 |
en_09.mp4 |
ch_01.mp4 |
ch_02.mp4 |
ch_03.mp4 |
ch_04.mp4 |
ch_05.mp4 |
ch_06.mp4 |
ch_07.mp4 |
ch_08.mp4 |
ch_09.mp4 |
git clone https://github.com/antgroup/echomimic_v2
cd echomimic_v2
- CUDA >= 11.7, Python == 3.10
sh linux_setup.sh
git clone https://github.com/antgroup/echomimic_v2
cd echomimic_v2
- Tested System Environment: Centos 7.2/Ubuntu 22.04, Cuda >= 11.7
- Tested GPUs: A100(80G) / RTX4090D (24G) / V100(16G)
- Tested Python Version: 3.8 / 3.10 / 3.11
Create conda environment (Recommended):
conda create -n echomimic python=3.10
conda activate echomimic
Install packages with pip
pip install pip -U
pip install torch==2.5.1 torchvision==0.20.1 torchaudio==2.5.1 xformers==0.0.28.post3 --index-url https://download.pytorch.org/whl/cu124
pip install torchao --index-url https://download.pytorch.org/whl/nightly/cu124
pip install -r requirements.txt
pip install --no-deps facenet_pytorch==2.6.0
Download and decompress ffmpeg-static, then
export FFMPEG_PATH=/path/to/ffmpeg-4.4-amd64-static
git lfs install
git clone https://huggingface.co/BadToBest/EchoMimicV2 pretrained_weights
The pretrained_weights is organized as follows.
./pretrained_weights/
├── denoising_unet.pth
├── reference_unet.pth
├── motion_module.pth
├── pose_encoder.pth
├── sd-vae-ft-mse
│ └── ...
├── sd-image-variations-diffusers
│ └── ...
└── audio_processor
└── tiny.pt
In which denoising_unet.pth / reference_unet.pth / motion_module.pth / pose_encoder.pth are the main checkpoints of EchoMimic. Other models in this hub can be also downloaded from it's original hub, thanks to their brilliant works:
Run the gradio:
python app.py
Run the python inference script:
python infer.py --config='./configs/prompts/infer.yaml'
Download dataset:
python ./EMTD_dataset/download.py
Slice dataset:
bash ./EMTD_dataset/slice.sh
Process dataset:
python ./EMTD_dataset/preprocess.py
Status | Milestone | ETA |
---|---|---|
✅ | The inference source code of EchoMimicV2 meet everyone on GitHub | 21st Nov, 2024 |
✅ | Pretrained models trained on English and Mandarin Chinese on HuggingFace | 21st Nov, 2024 |
✅ | Pretrained models trained on English and Mandarin Chinese on ModelScope | 21st Nov, 2024 |
✅ | EMTD dataset list and processing scripts | 21st Nov, 2024 |
🚀 | Accelerated models to be released | TBD |
🚀 | Online Demo on ModelScope to be released | TBD |
🚀 | Online Demo on HuggingFace to be released | TBD |
This project is intended for academic research, and we explicitly disclaim any responsibility for user-generated content. Users are solely liable for their actions while using the generative model. The project contributors have no legal affiliation with, nor accountability for, users' behaviors. It is imperative to use the generative model responsibly, adhering to both ethical and legal standards.
We would like to thank the contributors to the MimicMotion and Moore-AnimateAnyone repositories, for their open research and exploration.
We are also grateful to CyberHost and Vlogger for their outstanding work in the area of audio-driven human animation.
If we missed any open-source projects or related articles, we would like to complement the acknowledgement of this specific work immediately.
If you find our work useful for your research, please consider citing the paper :
@misc{meng2024echomimic,
title={EchoMimicV2: Towards Striking, Simplified, and Semi-Body Human Animation},
author={Rang Meng, Xingyu Zhang, Yuming Li, Chenguang Ma},
year={2024},
eprint={2411.10061},
archivePrefix={arXiv},
primaryClass={cs.CV}
}