VoMP: Predicting Volumetric Mechanical Property Fields
About
Physical simulation relies on spatially-varying mechanical properties, often laboriously hand-crafted. VoMP is a feed-forward method trained to predict Young's modulus ($E$), Poisson's ratio ($\nu$), and density ($\rho$) throughout the volume of 3D objects, in any representation that can be rendered and voxelized. VoMP aggregates per-voxel multi-view features and passes them to our trained Geometry Transformer to predict per-voxel material latent codes. These latents reside on a manifold of physically plausible materials, which we learn from a real-world dataset, guaranteeing the validity of decoded per-voxel materials. To obtain object-level training data, we propose an annotation pipeline combining knowledge from segmented 3D datasets, material databases, and a vision-language model, along with a new benchmark. Experiments show that VoMP estimates accurate volumetric properties, far outperforming prior art in accuracy and speed.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Inference Time | GVM (test) | Inference Time (s)3.20e-4 | 11 | |
| Voxel Mechanical Property Estimation | Voxelized 3D Objects (test) | Young's Modulus ALDE0.3765 | 8 | |
| Mechanical Property Estimation | Released dataset public (test) | Young's Modulus ALDE0.3794 | 4 |