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Field Convolutions for Surface CNNs

About

We present a novel surface convolution operator acting on vector fields that is based on a simple observation: instead of combining neighboring features with respect to a single coordinate parameterization defined at a given point, we have every neighbor describe the position of the point within its own coordinate frame. This formulation combines intrinsic spatial convolution with parallel transport in a scattering operation while placing no constraints on the filters themselves, providing a definition of convolution that commutes with the action of isometries, has increased descriptive potential, and is robust to noise and other nuisance factors. The result is a rich notion of convolution which we call field convolution, well-suited for CNNs on surfaces. Field convolutions are flexible, straight-forward to incorporate into surface learning frameworks, and their highly discriminating nature has cascading effects throughout the learning pipeline. Using simple networks constructed from residual field convolution blocks, we achieve state-of-the-art results on standard benchmarks in fundamental geometry processing tasks, such as shape classification, segmentation, correspondence, and sparse matching.

Thomas W. Mitchel, Vladimir G. Kim, Michael Kazhdan• 2021

Related benchmarks

TaskDatasetResultRank
3D Shape CorrespondenceFAUST remeshed (test)--
65
Human part segmentationSHREC07 Human Body (test)
Accuracy92.5
11
ClassificationSHREC 11 (test)
Accuracy99.2
9
ClassificationSHREC11
Accuracy99.2
9
Shape CorrespondenceSHREC Partial Holes 2016 (test)
Centaur Correspondence Error0.038
7
Shape CorrespondenceSHREC Partial Cuts 2016
Cat0.054
7
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