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Complex-Valued Recurrent Correlation Neural Networks

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Author(s):
Valle, Marcos Eduardo
Total Authors: 1
Document type: Journal article
Source: IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS; v. 25, n. 9, p. 13-pg., 2014-09-01.
Abstract

In this paper, we generalize the bipolar recurrent correlation neural networks (RCNNs) of Chiueh and Goodman for patterns whose components are in the complex unit circle. The novel networks, referred to as complex-valued RCNNs (CV-RCNNs), are characterized by a possible nonlinear function, which is applied on the real part of the scalar product of the current state and the original patterns. We show that the CV-RCNNs always converge to a stationary state. Thus, they have potential application as associative memories. In this context, we provide sufficient conditions for the retrieval of a memorized vector. Furthermore, computational experiments concerning the reconstruction of corrupted grayscale images reveal that certain CV-RCNNs exhibit an excellent noise tolerance. (AU)

FAPESP's process: 13/12310-4 - Some generalizations of the recurrent correlation associative memories
Grantee:Marcos Eduardo Ribeiro Do Valle Mesquita
Support Opportunities: Regular Research Grants