DS1 spectrogram: PhysCtrl: Generative Physics for Controllable and Physics-Grounded Video
  Generation

PhysCtrl: Generative Physics for Controllable and Physics-Grounded Video Generation

September 24, 20252509.20358

Authors

Lingjie Liu,Chen Wang,Chuhao Chen,Yiming Huang,Zhiyang Dou

Abstract

Existing video generation models excel at producing photo-realistic videos from text or images, but often lack physical plausibility and 3D controllability. To overcome these limitations, we introduce PhysCtrl, a novel framework for physics-grounded image-to-video generation with physical parameters and force control.

At its core is a generative physics network that learns the distribution of physical dynamics across four materials (elastic, sand, plasticine, and rigid) via a diffusion model conditioned on physics parameters and applied forces. We represent physical dynamics as 3D point trajectories and train on a large-scale synthetic dataset of 550K animations generated by physics simulators.

We enhance the diffusion model with a novel spatiotemporal attention block that emulates particle interactions and incorporates physics-based constraints during training to enforce physical plausibility. Experiments show that PhysCtrl generates realistic, physics-grounded motion trajectories which, when used to drive image-to-video models, yield high-fidelity, controllable videos that outperform existing methods in both visual quality and physical plausibility.

Project Page: https://cwchenwang.github.io/physctrl

Resources

Stay in the loop

Every AI paper that matters, free in your inbox daily.

Details

  • © 2026 takara.ai Ltd
  • Content is sourced from third-party publications.