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Provably scale-covariant networks from oriented quasi quadrature measures in cascade

Abstract

This article presents a continuous model for hierarchical networks based on a combination of mathematically derived models of receptive fields and biologically inspired computations. Based on a functional model of complex cells in terms of an oriented quasi quadrature combination of first- and second-order directional Gaussian derivatives, we couple such primitive computations in cascade over combinatorial expansions over image orientations. Scale-space properties of the computational primitives are analysed and it is shown that the resulting representation allows for provable scale and rotation covariance. A prototype application to texture analysis is developed and it is demonstrated that a simplified mean-reduced representation of the resulting QuasiQuadNet leads to promising experimental results on three texture datasets.QC 20190305Scale-space theory for covariant and invariant visual perceptio

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Digitala Vetenskapliga Arkivet - Academic Archive On-line

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Last time updated on 11/07/2019

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