Geometric Wavelet Scattering Networks on Compact Riemannian Manifolds
- URL: http://arxiv.org/abs/1905.10448v4
- Date: Tue, 25 Jul 2023 17:53:01 GMT
- Title: Geometric Wavelet Scattering Networks on Compact Riemannian Manifolds
- Authors: Michael Perlmutter and Feng Gao and Guy Wolf and Matthew Hirn
- Abstract summary: Similar to the Euclidean scattering transform, the geometric scattering transform is based on a cascade of wavelet filters and pointwise nonlinearities.
Empirical results demonstrate its utility on several geometric learning tasks.
- Score: 9.341436585977913
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The Euclidean scattering transform was introduced nearly a decade ago to
improve the mathematical understanding of convolutional neural networks.
Inspired by recent interest in geometric deep learning, which aims to
generalize convolutional neural networks to manifold and graph-structured
domains, we define a geometric scattering transform on manifolds. Similar to
the Euclidean scattering transform, the geometric scattering transform is based
on a cascade of wavelet filters and pointwise nonlinearities. It is invariant
to local isometries and stable to certain types of diffeomorphisms. Empirical
results demonstrate its utility on several geometric learning tasks. Our
results generalize the deformation stability and local translation invariance
of Euclidean scattering, and demonstrate the importance of linking the used
filter structures to the underlying geometry of the data.
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