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HodgeNet: Learning Spectral Geometry on Triangle Meshes

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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.

Dmitriy Smirnov, Justin Solomon• 2021

Related benchmarks

TaskDatasetResultRank
Mesh SegmentationHuman Body dataset
Accuracy85
20
ClassificationSHREC 11 (test)
Accuracy94.7
9
ClassificationSHREC11
Accuracy94.7
9
Mesh classificationSHREC 2011 (10)
Accuracy94.7
8
Mesh classificationSHREC 2011 (16)
Accuracy99.2
7
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