Proprio: Latent Self-Scoring and Inference-Time Refinement for Physically Plausible Video Generation 文章

ArXiv CS.CV2026-05-28NEWSen作者: Mariam Hassan, Kaouther Messaoud, Wuyang Li, Alexandre Alahi

摘要

arXiv:2605.28230v1 Announce Type: new Abstract: Modern video generative models produce visually impressive results, yet frequently violate basic physical principles. We propose Proprio, a training-free framework that enables a frozen video generator to assess and improve the physical plausibility of its own outputs. Inspired by proprioception, the biological sense of one's own movement, Proprio treats the model's flow residual under controlled latent perturbations as a self-scoring signal. Samples that are better explained by the generator's learned dynamics induce smaller and more stable residuals. We aggregate this signal across timesteps and perturbations, focus it on motion-relevant regions with a dynamic spatiotemporal mask, and use it for best-of-N search, gradient-based self-refinement, or both.

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