CNNs with radial basis input function

M. E. Yalcin*, C. Guzelis

*Corresponding author for this work

Research output: Contribution to conferencePaperpeer-review

1 Citation (Scopus)

Abstract

This paper proposes a Cellular Neural Network (CNN) [1] model with radial basis input function (henceforth called as radial basis input CNN) for improving function approximation ability of CNNs. The model can be viewed as a cascade of two units: First unit is a multi-input, multi-output Radial Basis Function Network (RBFN) [2], second unit is original CNN model. The weights and centers of RBFN unit are chosen identical for all RBFN outputs yielding a space-invariant connection weight pattern over the network. With such a weight sharing property, the proposed model becomes a special kind of nonlinear B-template CNN [3]. The ability of the radial basis input CNN model in approximation to functions as its input-(steady state)output mapping is examined on edge detection task for noisy images. Herein, a modified version of Recurrent Perceptron Learning Algorithm (RPLA) [4] is used for training radial basis input CNN.

Original languageEnglish
Pages231-236
Number of pages6
Publication statusPublished - 1996
EventProceedings of the 1996 4th IEEE International Workshop on Cellular Neural Networks, and Their Applications, CNNA-96 - Seville, Spain
Duration: 24 Jun 199626 Jun 1996

Conference

ConferenceProceedings of the 1996 4th IEEE International Workshop on Cellular Neural Networks, and Their Applications, CNNA-96
CitySeville, Spain
Period24/06/9626/06/96

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