2021
DOI: 10.48550/arxiv.2104.12826
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HodgeNet: Learning Spectral Geometry on Triangle Meshes

Dmitriy Smirnov,
Justin Solomon

Abstract: Fig. 1. Mesh segmentation results on the full-resolution MIT animation dataset. Each mesh in the dataset contains 20,000 faces (10,000 vertices). We show an example ground truth segmentation in the bottom-left. In contrast to previous works, which downsample each mesh by more than 10×, we efficiently process dense meshes both at train and test time.Constrained by the limitations of learning toolkits engineered for other applications, such as those in image processing, many mesh-based learning algorithms employ… Show more

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