$\Delta$ynamics: Language-Based Representation for Inferring Rigid-Body Dynamics From Videos
About
Inferring rigid-body physical states and properties from monocular videos is a fundamental step toward physics-based perception and simulation. Existing approaches assume specific underlying physical systems, object types, and camera poses, making them unable to generalize to complex real-world settings. We introduce $\Delta$YNAMICS, a vision-language framework that uses language as a unified representation of rigid-body dynamics. Instead of directly predicting parameters, $\Delta$YNAMICS generates scene configurations in a structured text format for physics simulation. We enhance the model's generalization by integrating natural language motion reasoning and leveraging optical flow as a semantic-agnostic input. On the CLEVRER dataset, $\Delta$YNAMICS achieves a segmentation IoU of 0.30, a 7x improvement over leading VLMs (InternVL3-8B, Qwen2.5-VL-7B and Claude-4-Sonnet). Additionally, test-time sampling and evolutionary search further boost performance by 27% and 120% in segmentation IoU, respectively. Finally, we demonstrate strong transfer to a new dataset of 235 real-world rigid-body videos, highlighting the potential of language-driven physics inference for bridging perception and simulation.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Object Composition | MuJoCo in-distribution | Object Composition Accuracy99 | 8 | |
| Optical Flow Estimation | MuJoCo in-distribution | EPE (First-Frame)4.88 | 8 | |
| Segmentation | MuJoCo in-distribution | Segmentation Map IoU (First-Frame)91 | 8 | |
| Object Segmentation | CLEVRER First Frame Blender (test) | Segmentation Map IoU67 | 6 | |
| Object Segmentation | CLEVRER Full Sequence Blender (test) | Segmentation Map IoU30 | 6 | |
| Optical Flow | CLEVRER First Frame Blender (test) | Optical Flow EPE2.79 | 6 | |
| Physics Parameter Estimation | MuJoCo in-distribution | MAE (Damping)1.52 | 6 | |
| Segmentation | CLEVRER (Blender engine) zero-shot | Segmentation Map IoU (First Frame)67 | 6 | |
| Optical Flow | CLEVRER Full Sequence Blender (test) | Optical Flow EPE5.94 | 6 | |
| Optical Flow Estimation | Real-world video dataset iPhone 13 and Canon camera collection (First Frame) | EPE (Optical Flow)1.06 | 4 |