SVM Based Scheme for Thai and English Script Identification

S. Chanda, O. R. Terrades, U. Pal
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引用次数: 32

Abstract

In some Thai documents, a single text line of a document page may contain both Thai and English scripts. For the optical character recognition (OCR) of such a document page it is better to identify, at first, Thai and English script portions and then to use individual OCR system of the respective scripts on these identified portions. In this paper, a SVM based method is proposed for identification of word-wise printed English and Thai scripts from a single line of a document page. Here, at first, the document is segmented into lines and then lines are segmented into character groups (words). In the proposed scheme, we identify the script of the individual character group combining different character features obtained from structural shape, profile, component overlapping information, topological properties, water reservoir concept etc. Based on the experiment on 6110 data we obtained 99.36% script identification accuracy from the proposed scheme.
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基于支持向量机的泰英文字识别方案
在某些泰语文档中,文档页面的单个文本行可能同时包含泰语和英语脚本。对于这种文档页面的光学字符识别(OCR),最好先识别泰语和英语脚本部分,然后在这些已识别的部分上使用各自脚本的单独OCR系统。本文提出了一种基于支持向量机的方法,用于从文档页面的单行中识别打印的英语和泰语脚本。在这里,首先将文档分割成行,然后将行分割成字符组(单词)。在该方案中,我们结合从结构形状、剖面、组件重叠信息、拓扑属性、水库概念等获得的不同特征特征,识别单个特征组的脚本。通过对6110个数据的实验,该方案的文字识别准确率达到99.36%。
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