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Efficient zone identification approach for the recognition of online handwritten Gurmukhi script

机译:高效区域识别在线手写Gurmukhi脚本的识别方法

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摘要

In this paper, a real-time recognition approach for online handwritten Gurmukhi character combinations with matras (Gurmukhi Vowels) has been addressed. Moreover, various challenges in the recognition of online handwritten Gurmukhi script have also been discussed. The strokes for writing Gurmukhi words can be drawn in one of the three horizontal zones, namely upper, middle and lower. With the huge variation in handwriting styles of writers, zone identification of online capturing strokes has become one of the major issues in Gurmukhi script recognition. In this connection, a robust zone identification algorithm has been proposed in this paper. We have considered 93 stroke classes (12 for upper zone and 81 for lower zone) to implement the proposed zone identification algorithm. The statistical tool, support vector machine, has been employed as the classifier for stroke classification. A total of 52,500 word samples were collected from 175 writers in order to train the classifier. The proposed zone identification algorithm yielded an accuracy of 99.75% when tested on a data set of 21,500 character combinations with matras, written by 10 new writers.
机译:在本文中,已经解决了具有Matras(Gurmukhi元音)的网上手写的Gurmukhi字符组合的实时识别方法。此外,还讨论了识别在线手写的Gurmukhi脚本中的各种挑战。写作Gurmukhi单词的笔画可以在三个水平区域中的一个中绘制,即上部,中间和下部。凭借作家手写样式的巨大变化,在线捕获笔画的区域识别已成为Gurmukhi脚本识别的主要问题之一。在这方面,本文提出了一种鲁棒区域识别算法。我们已经考虑了93个笔划类(12个用于下部区域和下部区域的第81个)来实现所提出的区域识别算法。统计工具支持向量机已被使用为笔划分类的分类器。从175个作者收集总共52,500个单词样本,以培训分类器。当在与Matras的21,500个字符组合的数据集上测试时,所提出的区域识别算法的精度为99.75%,由10个新作者编写。

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