Analysis of (sub-)Riemannian PDE-G-CNNs
Gijs Bellaard, Daan L. J. Bon, Gautam Pai, Bart M. N. Smets, Remco, Duits

TL;DR
This paper enhances PDE-G-CNNs by introducing a new kernel approximation method suitable for sub-Riemannian geometries, improving accuracy, reducing complexity, and maintaining interpretability in geometric deep learning.
Contribution
The paper develops a new approximative kernel for PDE-G-CNNs that accurately handles anisotropic Riemannian metrics, with improved error estimates and symmetry preservation.
Findings
New kernels improve approximation accuracy.
PDE-G-CNNs reduce network complexity.
Comparable or better performance than existing models.
Abstract
Group equivariant convolutional neural networks (G-CNNs) have been successfully applied in geometric deep learning. Typically, G-CNNs have the advantage over CNNs that they do not waste network capacity on training symmetries that should have been hard-coded in the network. The recently introduced framework of PDE-based G-CNNs (PDE-G-CNNs) generalises G-CNNs. PDE-G-CNNs have the core advantages that they simultaneously 1) reduce network complexity, 2) increase classification performance, and 3) provide geometric interpretability. Their implementations primarily consist of linear and morphological convolutions with kernels. In this paper we show that the previously suggested approximative morphological kernels do not always accurately approximate the exact kernels accurately. More specifically, depending on the spatial anisotropy of the Riemannian metric, we argue that one must resort…
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Taxonomy
TopicsMedical Imaging and Analysis · Brain Tumor Detection and Classification · AI in cancer detection
MethodsTest
