Myanmar optical character recognition using block definition and featured approach

Zu Zu Aung, Cho Me Me Maung
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引用次数: 2

Abstract

Optical Character Recognition (OCR) can be used in many applications such as machine translation, postal processing, script recognition, text-to-speech, reading aid for blind, etc. Myanmar OCR system is essential to convert numerous published books, newspapers and journals of Myanmar into editable computer text files. It is a challenge for recognizing Myanmar old printed document in case of bad quality, absence of standard alphabets, absence of known fonts, ink through page, uneven background, broken characters, overlapped scripts and mixed scripts. This paper presents a new proposed block definition method for isolation printed Myanmar historical text. The proposed Myanmar optical character recognition (MOCR) system consists of local adaptive thresholding method for binarization and skew-slant correction, thinning algorithm is applied to obtain separation lines and words. For isolation of characters, block definition method is applied and adaptive neuro-fuzzy inference system (ANFIS) is matched the features in the trained database as machine readable text. Myanmar alphabets include consonants, vowels, medials and digits. By using block definition method, consonants and vowels are isolated easily and we obtained more accuracy rate of the OCR. The efficient experimental results are presented by using different Myanmar old documents in our proposed algorithms.
缅文光学字符识别采用分块定义和特征方法
光学字符识别(OCR)可用于许多应用,如机器翻译,邮政处理,文字识别,文本到语音,盲人阅读辅助等。缅甸OCR系统对于将缅甸出版的众多书籍、报纸和期刊转换为可编辑的计算机文本文件至关重要。对缅甸旧印刷文件的识别是一项挑战,如质量差,缺乏标准字母,缺乏已知字体,墨水贯穿页面,背景不均匀,字符破碎,重叠脚本和混合脚本。本文提出了一种新的缅甸印刷历史文本隔离块定义方法。所提出的缅文光学字符识别(MOCR)系统由局部自适应阈值法二值化和斜斜校正组成,采用细化算法获得分隔线和字。对于字符的分离,采用块定义方法,自适应神经模糊推理系统(ANFIS)将训练好的数据库中的特征匹配为机器可读文本。缅甸字母包括辅音、元音、中间音和数字。采用块定义方法,可以很容易地分离出辅音和元音,提高了OCR的正确率。在本文提出的算法中,使用不同的缅甸旧文档,得到了有效的实验结果。
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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