基于分组匹配竞争法的多类模式识别

Q4 Computer Science
Xiao-yu LIU, Zhong-yuan YU, Yu-min LIU, Hou-jian KANG, Jin-hong MU
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引用次数: 1

摘要

多类模式识别的高识别率很难获得,特别是在特征提取不理想的情况下。因此,利用非理想特征提取实现高识别率具有重要意义。本文在对多集竞争法(MSCM)和结果可靠性算法进行研究的基础上,提出了一种新的识别方法——分组匹配竞争法(GMCM)。GMCM先于早期工作,应用范围更广。作者早期所做的工作只能处理2类的幂次数的识别工作,而GMCM可以处理任何数量的类。本文进一步阐述了MSCM、结果可靠性算法及其在GMCM中的作用。给出了三组实例,并讨论了分组的格式。识别结果表明,该方法具有很强的鲁棒性,能够实现高识别率的多类模式识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-class pattern recognition with the group match competition method

High recognition rate of multi-class pattern recognition is difficult to obtain, especially when the feature extraction is not ideal. So achieving a high recognition rate with nonideal feature extraction makes great sense. Based on the early study of multiple-set-compete method (MSCM) and the algorithm of result reliability, this article proposes a new recognition method named group match competition method (GMCM). The GMCM precedes the early work with a larger scope of applications. Early work which the authors did can only deal with the recognition work with the number of powers of 2 classes, while GMCM can cope with the classes of any number. This article further illustrates the MSCM, the algorithm of result reliability and their functions in the GMCM. Three sets of cases are demonstrated and formats of grouping are discussed. The recognition results show that the GMCM is a robust method and it is capable of achieving the high recognition rate of the multi-class pattern recognition.

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CiteScore
0.50
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