CVAILGApr 30

PhyCo: Learning Controllable Physical Priors for Generative Motion

arXiv:2604.2816990.91 citations
Predicted impact top 14% in CV · last 90 daysOriginality Highly original
AI Analysis

For generative video model users, PhyCo provides a scalable method to enforce physical consistency and controllability without inference-time simulation.

PhyCo introduces a framework for controllable video generation with physical priors, achieving significant improvements in physical realism on the Physics-IQ benchmark and human studies confirm clearer control over physical attributes.

Modern video diffusion models excel at appearance synthesis but still struggle with physical consistency: objects drift, collisions lack realistic rebound, and material responses seldom match their underlying properties. We present PhyCo, a framework that introduces continuous, interpretable, and physically grounded control into video generation. Our approach integrates three key components: (i) a large-scale dataset of over 100K photorealistic simulation videos where friction, restitution, deformation, and force are systematically varied across diverse scenarios; (ii) physics-supervised fine-tuning of a pretrained diffusion model using a ControlNet conditioned on pixel-aligned physical property maps; and (iii) VLM-guided reward optimization, where a fine-tuned vision-language model evaluates generated videos with targeted physics queries and provides differentiable feedback. This combination enables a generative model to produce physically consistent and controllable outputs through variations in physical attributes-without any simulator or geometry reconstruction at inference. On the Physics-IQ benchmark, PhyCo significantly improves physical realism over strong baselines, and human studies confirm clearer and more faithful control over physical attributes. Our results demonstrate a scalable path toward physically consistent, controllable generative video models that generalize beyond synthetic training environments.

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