SoMA: A Real-to-Sim Neural Simulator for Robotic Soft-body Manipulation
About
Simulating deformable objects under rich interactions remains a fundamental challenge for real-to-sim robot manipulation, with dynamics jointly driven by environmental effects and robot actions. Existing simulators rely on predefined physics or data-driven dynamics without robot-conditioned control, limiting accuracy, stability, and generalization. This paper presents SoMA, a 3D Gaussian Splat simulator for soft-body manipulation. SoMA couples deformable dynamics, environmental forces, and robot joint actions in a unified latent neural space for end-to-end real-to-sim simulation. Modeling interactions over learned Gaussian splats enables controllable, stable long-horizon manipulation and generalization beyond observed trajectories without predefined physical models. SoMA improves resimulation accuracy and generalization on real-world robot manipulation by 20%, enabling stable simulation of complex tasks such as long-horizon cloth folding.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Soft-body Manipulation Simulation | Robot Manipulation Datasets (Resimulation) | Abs Rel0.089 | 3 | |
| Soft-body Manipulation Simulation | Robot Manipulation Datasets Generalization | Abs Rel0.112 | 3 | |
| Interaction Dynamics Prediction | PhysTwin (average) | PSNR32.64 | 2 | |
| Robot Manipulation | T-shirt folding | Abs Rel0.112 | 2 | |
| Interaction Dynamics Prediction | PhysTwin rope | PSNR34.261 | 1 | |
| Interaction Dynamics Prediction | PhysTwin cloth | PSNR32.739 | 1 | |
| Interaction Dynamics Prediction | PhysTwin (doll) | PSNR30.92 | 1 |