基于叙利亚语(亚述语)和英语或阿拉伯语文档的哈拉里克纹理特征分类

Basima Z. Yacob
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引用次数: 0

摘要

在运行单个OCR系统之前,脚本识别是非常必要的。从文档图像中自动识别语言脚本有助于许多重要的应用,如多语言文档的排序、转录和大量此类图像的索引,或者作为光学字符识别(OCR)的先驱,本文通过提取哈拉里克纹理特征来实现叙利亚语和英语文档之间或叙利亚语和阿拉伯语文档之间的特征。在观察到文本具有独特的视觉纹理的基础上,研究了纹理作为判断文档图像脚本的工具。此外,基于Haralick纹理特征,使用K近邻算法将300个文本块分类为两种脚本之一:叙利亚语和英语,或叙利亚语和阿拉伯语。将该脚本以0º和135º之间不同的旋转角度插入到系统中,识别效果良好。
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Haralick Texture Features based Syriac(Assyrian) and English or Arabic documents Classification
Script identification is very essential before running an individual OCR system. Automatic language script identification from document images facilitates many important applications such as sorting, transcription of multilingual documents and indexing of large collection of such images, or as a precursor to optical character recognition (OCR), in this paper the characterized are between Syriac and English documents or between Syriac and Arabic documents were the characterized is achieved by extracting Haralick texture Features. it is investigated a texture as a tool for determining the script of document image ,based on the observation that text has a distinct visual texture. Further, K nearest neighbour algorithm is used to classify 300 text blocks into one of the two scripts: Syriac, and English , or Syriac and Arabic based on Haralick texture Features . The script was inserted to the System with different rotation angles between 0º and 135º and the results of recognition were good.
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