β¬ Download weights
Option 1: Download pre-trained weights of base models and other components (sd-image-variations-diffusers and sd-vae-ft-mse). You can run the following command to download weights automatically:
python tools/download_weights.py
Option 2: Download pre-trained weights into the ./pretrained_weights folder from one of the below URLs:
Finally, these weights should be organized as follows:
pretrained_weights
βββ onnx
β βββ unet_opt
β β βββ unet_opt.onnx
β β βββ unet_opt.onnx.data
β βββ unet
βββ SuperCam
β βββ denoising_unet.pth
β βββ motion_encoder.pth
β βββ motion_extractor.pth
β βββ pose_guider.pth
β βββ reference_unet.pth
β βββ temporal_module.pth
βββ sd-vae-ft-mse
β βββ diffusion_pytorch_model.bin
β βββ config.json
βββ sd-image-variations-diffusers
β βββ image_encoder
β β βββ pytorch_model.bin
β β βββ config.json
β βββ unet
β β βββ diffusion_pytorch_model.bin
β β βββ config.json
β βββ model_index.json
βββ tensorrt
βββ unet_work.engine
ποΈ Offline Inference
python inference_offline.py
β οΈ Note for RTX 50-Series (Blackwell) Users: xformers is not yet fully compatible with the new architecture. To avoid crashes, please disable it by running:
python inference_offline.py --use_xformers False
πΈ Online Inference
π¦ Setup Web UI
# install Node.js 18+
curl -o- https://raw.githubusercontent.com/nvm-sh/nvm/v0.39.1/install.sh | bash
nvm install 18
cd webcam
source start.sh
ποΈ Acceleration (Optional)
Converting the model to TensorRT can significantly speed up inference (~ 2x β‘οΈ). Building the engine may take about 20 minutes depending on your device. Note that TensorRT optimizations may lead to slight variations or a small drop in output quality.
pip install -r requirements_trt.txt
python torch2trt.py
The provided TensorRT model is from an H100. We recommend ALL users (including H100 users) re-run python torch2trt.py locally to ensure best compatibility.
βΆοΈ Start Streaming
python inference_online.py --acceleration none (for RTX 50-Series) or xformers or tensorrt
Then open http://0.0.0.0:7860 in your browser. (*If http://0.0.0.0:7860 does not work well, try http://localhost:7860)
How to use: Upload Image β‘οΈ Fuse Reference β‘οΈ Start Animation β‘οΈ Enjoy! π
Regarding Latency: Latency varies depending on your device's computing power. You can try the following methods to optimize it:
- Lower the "Driving FPS" setting in the WebUI to reduce the computational workload.
- You can increase the multiplier (e.g., set to
num_frames_needed * 4or higher) to better match your device's inference speed. https://github.com/GVCLab/SuperCam/blob/6953d1a8b409f360a3ee1d7325093622b29f1e22/webcam/util.py#L73
β Citation
If you find SuperCam useful for your research, welcome to cite our work using the following BibTeX:
@article{li2025SuperCam,
title={SuperCam! Expressive Portrait Image Animation for Live Streaming},
author={Li, Zhiyuan and Pun, Chi-Man and Fang, Chen and Wang, Jue and Cun, Xiaodong},
journal={arXiv preprint arXiv:2512.11253},
year={2025}
}
β€οΈ Acknowledgement
This code is mainly built upon Moore-AnimateAnyone, X-NeMo, StreamDiffusion, RAIN and LivePortrait, thanks to their invaluable contributions.
- Downloads last month
- -