HodgeNet: Learning Spectral Geometry on Triangle Meshes
About
Constrained by the limitations of learning toolkits engineered for other applications, such as those in image processing, many mesh-based learning algorithms employ data flows that would be atypical from the perspective of conventional geometry processing. As an alternative, we present a technique for learning from meshes built from standard geometry processing modules and operations. We show that low-order eigenvalue/eigenvector computation from operators parameterized using discrete exterior calculus is amenable to efficient approximate backpropagation, yielding spectral per-element or per-mesh features with similar formulas to classical descriptors like the heat/wave kernel signatures. Our model uses few parameters, generalizes to high-resolution meshes, and exhibits performance and time complexity on par with past work.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Mesh Segmentation | Human Body dataset | Accuracy85 | 20 | |
| Classification | SHREC 11 (test) | Accuracy94.7 | 9 | |
| Classification | SHREC11 | Accuracy94.7 | 9 | |
| Mesh classification | SHREC 2011 (10) | Accuracy94.7 | 8 | |
| Mesh classification | SHREC 2011 (16) | Accuracy99.2 | 7 |