English

Video Diffusion Models are Training-free Motion Interpreter and Controller

Computer Vision and Pattern Recognition 2024-11-13 v3

Abstract

Video generation primarily aims to model authentic and customized motion across frames, making understanding and controlling the motion a crucial topic. Most diffusion-based studies on video motion focus on motion customization with training-based paradigms, which, however, demands substantial training resources and necessitates retraining for diverse models. Crucially, these approaches do not explore how video diffusion models encode cross-frame motion information in their features, lacking interpretability and transparency in their effectiveness. To answer this question, this paper introduces a novel perspective to understand, localize, and manipulate motion-aware features in video diffusion models. Through analysis using Principal Component Analysis (PCA), our work discloses that robust motion-aware feature already exists in video diffusion models. We present a new MOtion FeaTure (MOFT) by eliminating content correlation information and filtering motion channels. MOFT provides a distinct set of benefits, including the ability to encode comprehensive motion information with clear interpretability, extraction without the need for training, and generalizability across diverse architectures. Leveraging MOFT, we propose a novel training-free video motion control framework. Our method demonstrates competitive performance in generating natural and faithful motion, providing architecture-agnostic insights and applicability in a variety of downstream tasks.

Keywords

Cite

@article{arxiv.2405.14864,
  title  = {Video Diffusion Models are Training-free Motion Interpreter and Controller},
  author = {Zeqi Xiao and Yifan Zhou and Shuai Yang and Xingang Pan},
  journal= {arXiv preprint arXiv:2405.14864},
  year   = {2024}
}

Comments

Accepted by NeurIPS 2024. Project Page: https://xizaoqu.github.io/moft/

R2 v1 2026-06-28T16:37:46.515Z