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MotiMotion: Motion-Controlled Video Generation with Visual Reasoning

About

Current motion-controlled image-to-video generation models rigidly follow user-provided trajectories that are often sparse, imprecise, and causally incomplete. Such reliance often yields unnatural or implausible outcomes, especially by missing secondary causal consequences. To address this, we introduce MotiMotion, a novel framework that reformulates motion control as a reasoning-then-generation problem. To encourage causally grounded and commonsense-consistent interactions, we leverage a training-free vision-language reasoner to refine image-space coordinates of primary trajectories and to hallucinate plausible secondary motions. To further improve motion naturalness, we propose a confidence-aware control scheme that modulates guidance strength, enabling the model to closely follow high-confidence plans while correcting artifacts under low-confidence inputs with its internal generative priors. To support systematic evaluation, we curate a new image-to-video benchmark, MotiBench, consisting of interaction-centric scenes where new events are triggered by motion. Both VLM-based evaluation and a human study on MotiBench demonstrate that MotiMotion produces videos with more plausible object behaviors and interaction, and is preferred over existing approaches.

Lee Hsin-Ying, Hanwen Jiang, Yiqun Mei, Jing Shi, Ming-Hsuan Yang, Zhixin Shu• 2026

Related benchmarks

TaskDatasetResultRank
Motion-Controlled Video GenerationMotion Prompting (test)
FVD712.8
8
Motion-Controlled Video GenerationMotion Prompting Evaluation Set (test)
FVD724.4
4
Motion-controlled image-to-video generationMotiBench
Physical Fidelity30.2
3
Motion-controlled image-to-video generationMotiBench
Object Property Win Rate72.9
2
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