CVAIGRLGNov 25, 2025

MotionV2V: Editing Motion in a Video

arXiv:2511.20640v18 citations
Originality Incremental advance
AI Analysis

This addresses the problem of complex video editing for users by enabling motion modifications that start at any timestamp and propagate naturally, representing an incremental advancement in motion controllability.

The paper tackles the challenge of precise motion control for editing existing videos by proposing a method to modify video motion through editing sparse trajectories, achieving over 65% preference in a user study against prior work.

While generative video models have achieved remarkable fidelity and consistency, applying these capabilities to video editing remains a complex challenge. Recent research has explored motion controllability as a means to enhance text-to-video generation or image animation; however, we identify precise motion control as a promising yet under-explored paradigm for editing existing videos. In this work, we propose modifying video motion by directly editing sparse trajectories extracted from the input. We term the deviation between input and output trajectories a "motion edit" and demonstrate that this representation, when coupled with a generative backbone, enables powerful video editing capabilities. To achieve this, we introduce a pipeline for generating "motion counterfactuals", video pairs that share identical content but distinct motion, and we fine-tune a motion-conditioned video diffusion architecture on this dataset. Our approach allows for edits that start at any timestamp and propagate naturally. In a four-way head-to-head user study, our model achieves over 65 percent preference against prior work. Please see our project page: https://ryanndagreat.github.io/MotionV2V

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes