VEnhancer: Generative Space-Time Enhancement
for Video Generation
Peng Gao,
Dahua Lin,
Yu Qiao,
Wanli Ouyang,
Ziwei Liu
The Chinese University of Hong Kong, Shanghai Artificial Intelligence Laboratory,
S-Lab, Nanyang Technological University
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 |
|
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:open_book: For more visual results, go checkout our
project page
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## 🔥 Update
- [2024.09.12] 😸 Release our version 2 checkpoint: **[venhancer_v2.pt](https://huggingface.co/jwhejwhe/VEnhancer/resolve/main/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] 😸 Support **Multiple GPU Inference** and **tiled VAE** for temporal VAE decoding. And more stable performance for long video enhancement.
- [2024.08.18] 😸 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] 🔥 Inference code and pretrained video enhancement model are released.
- [2024.07.10] 🤗 This repo is created.
## :astonished: Gallery
| 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.