2007 JMLR JMLR 2007

Learning Equivariant Functions with Matrix Valued Kernels

Abstract

This paper presents a new class of matrix valued kernels that are ideally suited to learn vector valued equivariant functions. Matrix valued kernels are a natural generalization of the common notion of a kernel. We set the theoretical foundations of so called equivariant matrix valued kernels. We work out several properties of equivariant kernels, we give an interpretation of their behavior and show relations to scalar kernels. The notion of (ir)reducibility of group representations is transferred into the framework of matrix valued kernels. At the end to two exemplary applications are demonstrated. We design a non-linear rotation and translation equivariant filter for 2D-images and propose an invariant object detector based on the generalized Hough transform. [abs] [ pdf ][ bib ] © JMLR 2007. (edit, beta)

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📈 Trend Setter — Optimization
🧭 Keyword Pioneer — group representation
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