Improving character recognition rate by a multi-net neural classifier

Q4 Computer Science
L. Cordella, C. Stefano, F. Tortorella, M. Vento
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引用次数: 3

Abstract

A neural classifier for isolated omnifont characters is discussed. A method for characterizing a given training set of characters, based on the definition of some statistical parameters is introduced; on the basis of such characterization an architecture is defined made of a set of neural networks properly connected. Depending on the value of the parameters characterizing the training set, both sizing and training of each network are separately carried out according to a suitable methodology. It is shown that higher recognition rates can be achieved than those obtained by using a single neural network as classifier.<>
利用多网络神经分类器提高字符识别率
讨论了一种孤立全字字符的神经分类器。介绍了一种基于统计参数定义对给定训练集特征化的方法;在这种表征的基础上,定义了由一组适当连接的神经网络组成的体系结构。根据表征训练集的参数值,根据合适的方法分别对每个网络进行大小调整和训练。结果表明,与使用单个神经网络作为分类器相比,该方法可以获得更高的识别率。
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来源期刊
模式识别与人工智能
模式识别与人工智能 Computer Science-Artificial Intelligence
CiteScore
1.60
自引率
0.00%
发文量
3316
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