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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >A class-modular feedforward neural network for handwriting recognition
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A class-modular feedforward neural network for handwriting recognition

机译:用于手写识别的类模块化前馈神经网络

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摘要

Since the conventional feedforward neural networks for character recognition have been deigned to classify a large number of classes with one large network structure, inevitably it poses the very complex problem of determining the optimal decision boundaries for all the classes involved in a high-dimensional feature space. Limitations also exist in several aspects of the training and recognition processes. This paper introduces the class modularity concept to the feedforward neural network classifier to overcome such limitations. In the class-modular concept, the original K-classification problem is decomposed into K 2-classification subproblems. A modular architecture is adopted which consists of K subnetworks. each responsible for discriminating a class from the other K-1 classes. The primary purpose of this paper is to prove the effectiveness of class-modular neural networks in terms of their convergence and recognition power. Several cases have been studied, including the recognition of handwritten numerals (10 classes), English capital letters (26 classes). touching numeral pairs (100 classes), and Korean characters in postal addresses (352 classes). The test results confirmed the superiority of the class-modular neural network and the interesting aspects on further investigations of the class modularity paradigm. (C) 2001 Pattern Recognition Society. Published by Elsevier Science Ltd. All rights reserved. [References: 37]
机译:由于已经设计了用于字符识别的常规前馈神经网络来对具有一个大型网络结构的大量类别进行分类,因此不可避免地会带来非常复杂的问题,即确定涉及高维特征空间的所有类别的最佳决策边界。培训和认可过程的多个方面也存在局限性。本文将类模块化概念引入前馈神经网络分类器,以克服此类限制。在类模块化概念中,原始的K分类问题被分解为K 2分类子问题。采用了由K个子网组成的模块化体系结构。每个人负责将一个班级与其他K-1班级区分开。本文的主要目的是证明类模块化神经网络的有效性和收敛性。研究了几种情况,包括手写数字(10类),英文大写字母(26类)的识别。触碰数字对(100个类别),以及在邮政地址中的韩文字符(352个类别)。测试结果证实了类模块化神经网络的优越性以及在进一步研究类模块化范例方面的有趣方面。 (C)2001模式识别学会。由Elsevier Science Ltd.出版。保留所有权利。 [参考:37]

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