1. Enhance-A-Video: Better Generated Video for Free
- Author
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Luo, Yang, Zhao, Xuanlei, Chen, Mengzhao, Zhang, Kaipeng, Shao, Wenqi, Wang, Kai, Wang, Zhangyang, and You, Yang
- Subjects
Computer Science - Computer Vision and Pattern Recognition - Abstract
DiT-based video generation has achieved remarkable results, but research into enhancing existing models remains relatively unexplored. In this work, we introduce a training-free approach to enhance the coherence and quality of DiT-based generated videos, named Enhance-A-Video. The core idea is enhancing the cross-frame correlations based on non-diagonal temporal attention distributions. Thanks to its simple design, our approach can be easily applied to most DiT-based video generation frameworks without any retraining or fine-tuning. Across various DiT-based video generation models, our approach demonstrates promising improvements in both temporal consistency and visual quality. We hope this research can inspire future explorations in video generation enhancement.
- Published
- 2025