Automatic design of cellular neural networks by means of genetic algorithms: finding a feature detector

F. Dellaert, J. Vandewalle
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引用次数: 14

Abstract

The paper aims to examine the use of genetic algorithms to optimize subsystems of cellular neural network architectures. The application at hand is character recognition: the aim is to evolve an optimal feature detector in order to aid a conventional classifier network to generalize across different fonts. To this end, a performance function and a genetic encoding for a feature detector are presented. An experiment is described where an optimal feature detector is indeed found by the genetic algorithm.<>
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基于遗传算法的细胞神经网络自动设计:寻找特征检测器
本文旨在研究使用遗传算法来优化细胞神经网络体系结构的子系统。当前的应用是字符识别:目的是发展一个最优的特征检测器,以帮助传统的分类器网络泛化不同的字体。为此,提出了特征检测器的性能函数和遗传编码。本文描述了一个用遗传算法找到最优特征检测器的实验
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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