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Poster

A General Theory of Equivariant CNNs on Homogeneous Spaces

Taco Cohen · Mario Geiger · Maurice Weiler

East Exhibition Hall B, C #129

Keywords: [ Theory ] [ Deep Learning; Deep Learning -> CNN Architectures; Theory ] [ Spaces of Functions and Kernels ]


Abstract:

We present a general theory of Group equivariant Convolutional Neural Networks (G-CNNs) on homogeneous spaces such as Euclidean space and the sphere. Feature maps in these networks represent fields on a homogeneous base space, and layers are equivariant maps between spaces of fields. The theory enables a systematic classification of all existing G-CNNs in terms of their symmetry group, base space, and field type. We also answer a fundamental question: what is the most general kind of equivariant linear map between feature spaces (fields) of given types? We show that such maps correspond one-to-one with generalized convolutions with an equivariant kernel, and characterize the space of such kernels.

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