VEnhancer, an All-in-One generative video enhancement model that can achieve spatial super-resolution, temporal super-resolution, and video refinement for AI-generated videos.
AIGC video | +VEnhancer |
π For more visual results, go checkout our project page
- [2024.09.12] πΈ Release our version 2 checkpoint: venhancer_v2.pt . It is less creative, but is able to generate more texture details, and has better identity preservation, which is more suitable for enhancing videos with profiles.
- [2024.09.10] πΈ Support Multiple GPU Inference and tiled VAE for temporal VAE decoding. And more stable performance for long video enhancement.
- [2024.08.18] πΈ Support enhancement for abitrary long videos (by spliting the videos into muliple chunks with overlaps); Faster sampling with only 15 steps without obvious quality loss (by setting
--solver_mode 'fast'
in the script command); Use temporal VAE to reduce video flickering. - [2024.07.28] π₯ Inference code and pretrained video enhancement model are released.
- [2024.07.10] π€ This repo is created.
Inputs & Results | Model Version | ||
---|---|---|---|
Prompt: A close-up shot of a woman standing in a dimly lit room. she is wearing a traditional chinese outfit, which includes a red and gold dress with intricate designs and a matching headpiece.profile.mp4 |
v2 |
||
Prompt: Einstein plays guitar.
|
v2 |
||
Prompt: A girl eating noodles.
|
v2 |
||
Prompt: A little brick man visiting an art gallery.brickman_art_gallery.mp4A.little.brick.man.visiting.an.art.gallery.mp4 |
v1 |
VEnhancer achieves spatial super-resolution, temporal super-resolution (i.e, frame interpolation), and video refinement in one model. It is flexible to adapt to different upsampling factors (e.g., 1x~8x) for either spatial or temporal super-resolution. Besides, it provides flexible control to modify the refinement strength for handling diversified video artifacts.
It follows ControlNet and copies the architecures and weights of multi-frame encoder and middle block of a pretrained video diffusion model to build a trainable condition network.
This video ControlNet accepts both low-resolution key frames and full frames of noisy latents as inputs.
Also, the noise level
# clone this repo
git clone https://github.com/Vchitect/VEnhancer.git
cd VEnhancer
# create environment
conda create -n venhancer python=3.10
conda activate venhancer
pip install torch==2.0.1 torchvision==0.15.2 torchaudio==2.0.2
pip install -r requirements.txt
Note that ffmpeg command should be enabled. If you have sudo access, then you can install it using the following command:
sudo apt-get update && apt-get install ffmpeg libsm6 libxext6 -y
Model Name | Description | HuggingFace | BaiduNetdisk |
---|---|---|---|
venhancer_paper.pth | very creative, strong refinement, but sometimes over-smooths edges and texture details. | download | download |
venhancer_v2.pth | less creative, but can generate better texture details, and has better identity preservation. | download | download |
- Download the VEnhancer model and then put the checkpoint in the
VEnhancer/ckpts
directory. (optional as it can be done automatically) - run the following command.
bash run_VEnhancer.sh
for single GPU inference (at least A100 80G is required), or
bash run_VEnhancer_MultiGPU.sh
for multiple GPU inference.
In run_VEnhancer.sh
or run_VEnhancer_MultiGPU.sh
,
-
version
. We now provide two choices:v1
andv2
(venhancer_paper.pth and venhancer_v2.pth, respectively). -
up_scale
is the upsampling factor ($1\sim8$ ) for spatial super-resolution.$\times3,4$ are recommended. Note that the target resolution will be adjusted no higher than 2k resolution. -
target_fps
is your expected target fps, and the default is 24. -
noise_aug
is the noise level ($0\sim300$ ) regarding noise augmentation. Higher noise corresponds to stronger refinement.$200\sim300$ are recommended. - Regarding prompt, you can use
--filename_as_prompt
to automatically use filename as prompt; or you can write the prompt to a txt file, and specify the prompt_path by setting--prompt_path [your_prompt_path]
; or directly provide the prompt by specifying--prompt [your_prompt]
. - Regarding sampling,
--solver_mode fast
has fixed 15 sampling steps. For--solver_mode normal
, you can modifysteps
to trade off efficiency over video quality.
The same functionality is also available as a gradio demo. Please follow the previous guidelines, and specify the model version (v1 or v2).
python gradio_app.py --version v1
If you use our work in your research, please cite our publication:
@article{he2024venhancer,
title={VEnhancer: Generative Space-Time Enhancement for Video Generation},
author={He, Jingwen and Xue, Tianfan and Liu, Dongyang and Lin, Xinqi and Gao, Peng and Lin, Dahua and Qiao, Yu and Ouyang, Wanli and Liu, Ziwei},
journal={arXiv preprint arXiv:2407.07667},
year={2024}
}
Our codebase builds on modelscope. Thanks the authors for sharing their awesome codebases!
If you have any questions, please feel free to reach us at [email protected]
.