Printed Thai character recognition using fuzzy-rough sets

W. Kasemsiri, C. Kimpan
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引用次数: 11

Abstract

This paper proposes the method of fuzzy rough sets for the recognition of Thai Characters. We divide the classification process into 2 levels, coarse and fine classification. Both levels of classification have the same processes, applying the rough set lower approximation and then using fuzzy rough sets. The difference between the two levels is in the features of the input data used for classifying. There are 40 coarse groups and some of them need not pass through the second level of classification. We trained this system with 2816 training samples, which were composed of 4 fonts and 4 sizes of characters. The system is tested with an unknown sample, which is composed of 7 fonts and 7 sizes of characters; 4 fonts and 4 sizes of the training sample are inclusive. The accuracy of this proposed system is as high as 89%.
使用模糊粗糙集的印刷泰语字符识别
本文提出了一种基于模糊粗糙集的泰文字符识别方法。我们将分类过程分为粗分类和细分类2个层次。两个层次的分类过程相同,先使用粗糙集下近似,再使用模糊粗糙集。这两个级别之间的区别在于用于分类的输入数据的特征。有40个粗组,其中一些不需要通过第二级分类。我们用2816个训练样本来训练这个系统,这些样本由4种字体和4种大小的字符组成。系统使用未知样本进行测试,该样本由7种字体和7种大小的字符组成;包含4种字体和4种大小的训练样本。该系统的准确率高达89%。
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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