Title :
Image processing using cellular neural networks based on multi-valued and universal binary neurons
Author :
Aizenberg, Igor ; Aizenberg, N. ; Bregin, Taras ; Butakov, Constantine ; Farberov, Elya
Author_Institution :
Neural Network Technol. Ltd., Bnei-Brak, Israel
Abstract :
Multi-valued neurons (MVNs) and universal binary neurons (UBNs) are neural processing elements with complex-valued weights and high functionality. It is possible to implement an arbitrary mapping described by a partially-defined multiple-valued function on a single MVN, and an arbitrary mapping described by a partially-defined or fully-defined Boolean function (which does not have to be a threshold function) on a single UBN. Rapidly-converging learning algorithms exist for both types of neurons. Such features of MVNs and UBNs may be used to solve different kinds of problems. One of the most successful applications of MVNs and UBNs is their use as basic neurons in cellular neural networks (CNNs) to solve image processing and image analysis problems
Keywords :
Boolean functions; cellular neural nets; convergence; image processing; learning (artificial intelligence); multivalued logic; Boolean function; arbitrary mapping; cellular neural networks; complex-valued weights; image analysis; image processing; multi-valued neurons; neural processing elements; neuron functionality; partially-defined multiple-valued function; rapidly-converging learning algorithms; threshold function; universal binary neurons; Boolean functions; Cellular neural networks; Filtering algorithms; Filters; Image color analysis; Image processing; Image recognition; Neural networks; Neurons; Pixel;
Conference_Titel :
Neural Networks for Signal Processing X, 2000. Proceedings of the 2000 IEEE Signal Processing Society Workshop
Conference_Location :
Sydney, NSW
Print_ISBN :
0-7803-6278-0
DOI :
10.1109/NNSP.2000.890134