Title :
A signal processing neural network resembling the simple cells of the visual cortex
Author_Institution :
Intelligent Neurons Inc., Deerfield Beach, FL, USA
Abstract :
A single-layer neural network that mimics the quadratic phase relationship between the adjacent simple cells in the visual cortex is described. The input nodes of the network use neurons that have multiple output synapses. The resulting system, called the orthonormal neural network, can approximate any L2 mapping function between the input and output vectors without using hidden layers or the backpropagation rule. It is also free from the problems of local minima. Because the transfer functions of the input nodes are the terms of the Fourier series, the synaptic link values between the input and output layers represent the frequency spectrum of the signals of the output nodes. As a result by auto-associatively training the network with all the synaptic links and testing it with certain selected ones, it is quite easy to build a nonlinear bandpass filter. Several systems built with this new network are discussed
Keywords :
feedforward neural nets; pattern recognition; signal processing; Fourier series; L2 mapping function; auto-associatively training; frequency spectrum; local minima; multiple output synapses; nonlinear bandpass filter; orthonormal neural network; quadratic phase relationship; single-layer neural network; synaptic link values; transfer functions; visual cortex; Backpropagation; Band pass filters; Fourier series; Frequency; Intelligent networks; Neural networks; Neurons; Signal processing; Testing; Transfer functions;
Conference_Titel :
Neuroinformatics and Neurocomputers, 1992., RNNS/IEEE Symposium on
Conference_Location :
Rostov-on-Don
Print_ISBN :
0-7803-0809-3
DOI :
10.1109/RNNS.1992.268533