ViFeEdit:一种无需视频数据的视频扩散变换器调优器 / ViFeEdit: A Video-Free Tuner of Your Video Diffusion Transformer
1️⃣ 一句话总结
这篇论文提出了一种名为ViFeEdit的新方法,它可以在完全不依赖视频训练数据、仅使用2D图像进行少量调优的情况下,让视频扩散变换器模型实现高质量、时序一致的可控视频生成与编辑。
Diffusion Transformers (DiTs) have demonstrated remarkable scalability and quality in image and video generation, prompting growing interest in extending them to controllable generation and editing tasks. However, compared to the image counterparts, progress in video control and editing remains limited, mainly due to the scarcity of paired video data and the high computational cost of training video diffusion models. To address this issue, in this paper, we propose a video-free tuning framework termed ViFeEdit for video diffusion transformers. Without requiring any forms of video training data, ViFeEdit achieves versatile video generation and editing, adapted solely with 2D images. At the core of our approach is an architectural reparameterization that decouples spatial independence from the full 3D attention in modern video diffusion transformers, which enables visually faithful editing while maintaining temporal consistency with only minimal additional parameters. Moreover, this design operates in a dual-path pipeline with separate timestep embeddings for noise scheduling, exhibiting strong adaptability to diverse conditioning signals. Extensive experiments demonstrate that our method delivers promising results of controllable video generation and editing with only minimal training on 2D image data. Codes are available this https URL.
ViFeEdit:一种无需视频数据的视频扩散变换器调优器 / ViFeEdit: A Video-Free Tuner of Your Video Diffusion Transformer
这篇论文提出了一种名为ViFeEdit的新方法,它可以在完全不依赖视频训练数据、仅使用2D图像进行少量调优的情况下,让视频扩散变换器模型实现高质量、时序一致的可控视频生成与编辑。
源自 arXiv: 2603.15478