将缅甸印刷文件图像转换为机器可理解的文本格式

Htwe Pa Pa Win, Phyo Thu Thu Khine, Khin Nwe Ni Tun
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引用次数: 11

摘要

数字图书馆正在归档大量的缅甸文件图像,需要一种有效的策略将文件图像转换为机器可理解的文本格式。最先进的OCR系统无法处理缅甸文字,因为我们的语言对文档理解构成了许多挑战。因此,本文设计了一个缅甸语打印文档OCR系统,并提出了几种方法,可以自动将缅甸语打印文本转换为机器可理解的文本。首先,通过对噪声变量进行校正,增强输入图像。然后,采用一种新颖的分割方法对字符进行分割。采用混合特征提取方法提取孤立汉字的特征,克服了缅文文字的相似度问题。最后,利用层次机制对SVM分类器进行字符图像的识别。在各种缅甸印刷品上进行了实验,结果表明了所提算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Converting Myanmar printed document image into machine understandable text format
The large amount of Myanmar document images are getting archived by the Digital Libraries, an efficient strategy is needed to convert document image into machine understandable text format. The state of the art OCR systems can't do for Myanmar scripts as our language pose many challenges for document understanding. Therefore, this paper plans an OCR system for Myanmar Printed Document (OCRMPD) with several proposed methods that can automatically convert Myanmar printed text to machine understandable text. Firstly, the input image is enhanced by making some correction on noise variants. Then, the characters are segmented with a novel segmentation method. The features of the isolated characters are extracted with a hybrid feature extraction method to overcome the similarity problems of the Myanmar scripts. Finally, hierarchical mechanism is used for SVM classifier for recognition of the character image. The experiments are carried out on a variety of Myanmar printed documents and results show the efficiency of the proposed algorithms.
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