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An Unconstrained and Effective Approach of Script Identification for Online Bilingual Handwritten Text

机译:在线双语手写文本的脚本识别不受约束有效的方法

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摘要

A number of monolingual online handwriting recognition (OHR) systems were proposed by researchers for languages like English, Chinese, Japanese, Hindi, Punjabi, Tamil, Bangla, Arabic and many more. But very few researchers have worked on bilingual or multilingual OHR systems, as the challenging part of these systems is the identification of scripts during recognition of intermixed words. In this paper, a bilingual OHR system is proposed for the mixed text containing words, written by using two scripts Gurmukhi (for Punjabi language) and Roman (for English language). For converting handwritten intermixed text to digital text, two steps have been implemented: first, to identify the script of segmented handwritten word and second, to run the respective script recognition engine. Multilayered perceptron neural network classifier along with directional code feature has been implemented to identify the script of segmented handwritten word. Considerable results have been observed for the script identification process.
机译:诸如英语,汉语,日语,印地文,旁遮普,泰米尔,孟加拉,阿拉伯语等语言等语言的研究人员提出了许多单机网上手写识别(OHR)系统。但很少有研究人员在双语或多语言OCR系统上工作,因为这些系统的具有挑战性部分是在识别混合词时识别脚本。在本文中,提出了一种双语OHR系统,用于包含单词的混合文本,通过使用两个脚本Gurmukhi(针对旁遮普语)和罗马(英语)。为了将手写的混合文本转换为数字文本,已经实现了两个步骤:首先,要识别分段手写单词和第二的脚本,以运行相应的脚本识别引擎。已经实现了多层的Perceptron神经网络分类器以及定向代码特征以识别分段手写词的脚本。已观察到脚本识别过程的相当大的结果。

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