Combining character classifiers using member classifiers assessment

J. Sas, Michal Luzyna
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引用次数: 7

Abstract

In the paper, the method of combining character classifiers for handprinted text recognition is presented. The combination rule is based on member classifiers reliability assessment. The assessment can be based on probabilistic classifier properties or it can use similarity measures individually evaluated for the character currently being recognized. The approach presented here follows soft classification paradigm, where the classifier not merely selects single class, but it provides the vector of support values corresponding to character likelihood. The proposed methods have been tested and compared in recognizing letters from polish alphabet, including nine difficult do recognize diacritic characters.
使用成员分类器评估组合字符分类器
提出了一种结合字符分类器的手印文本识别方法。该组合规则基于成员分类器的可靠性评估。评估可以基于概率分类器属性,也可以使用针对当前被识别的字符单独评估的相似性度量。本文提出的方法遵循软分类范式,其中分类器不仅选择单个类,而且提供与字符似然相对应的支持值向量。这些方法在波兰语字母识别中进行了测试和比较,包括9个难以识别的变音符。
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