Cellular neural network with trapezoidal activation function

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Wiley

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info:eu-repo/semantics/openAccess

Özet

This paper presents a cellular neural network (CNN) scheme employing a new non-linear activation function, called trapezoidal activation function (TAF). The new CNN structure can classify linearly non-separable data points and realize Boolean operations (including eXclusive OR) by using only a single-layer CNN. In order to simplify the stability analysis, a feedback matrix W is defined as a function of the feedback template A and 2D equations are converted to 1D equations. The stability conditions of CNN with TAF are investigated and a sufficient condition for the existence of a unique equilibrium and global asymptotic stability is derived. By processing several examples of synthetic images, the analytically derived stability condition is also confirmed. Copyright (c) 2005 John Wiley & Sons, Ltd.

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cellular neural network, Lyapunov stability criterion, non-linear activation function, XOR operation, linearly separable

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International Journal of Circuit Theory and Applications

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33

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5

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Onay

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