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Automatic CNN multi-template tree generation

Víctor M. Preciado, Domingo Guinea, M. C. García‐Alegre, Ángela Ribeiro

发表年份
2002
引用次数
4

摘要

We deal with the cellular neural network (CNN) research in the development of analogic algorithms that combine single templates to perform complex image processing. The results can be very useful for pattern recognition in industrial and robotic applications. This work presents a general methodology for the automatic generation of analogic algorithms by means of a genetic search. A genetic algorithm for generating multi-template trees, a concept derived from the AI field, is applied to the automatic generation of analogic algorithms based on both the genetic-evolutionary search and heuristic approaches.

关键词

Computer scienceCellular neural networkArtificial intelligenceTemplateHeuristicGenetic algorithmField (mathematics)Artificial neural networkPattern recognition (psychology)Machine learning

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