A comparative Study of Handwritten Devanagari Script Character Recognition Techniques

Ranadeep Dey, P. Gawade, Ria Sigtia, Shrushti Naikare, Atharva Gadre, Diptee Chikmurge
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Abstract

In the discipline of pattern recognition, optical character recognition is a critical task. A significant amount of research has been done on character recognition in the English language but in the Indian context, the research has been limited. Devanagari is a commonly used Indian script that is the foundation of languages like Hindi, Sanskrit, Kashmiri, and Marathi. Several researchers have published their work on this topic in recent years with some promising results. To expand upon the existing work and to provide a benchmark for future studies, a comparative study of four different classifiers and two different feature extraction techniques have been proposed in this paper. Multi-Layer Perceptron, K-Nearest Neighbor, Support Vector Machine, and Random Forest algorithms are used as classifiers whereas Convolutional Neural Network and Histogram of Oriented Gradients are used as feature extraction techniques.
手写体梵文文字字符识别技术比较研究
在模式识别学科中,光学字符识别是一项关键任务。在英语文字识别方面已经做了大量的研究,但在印度语境下,研究是有限的。Devanagari是一种常用的印度文字,是印地语、梵语、克什米尔语和马拉地语等语言的基础。近年来,几位研究人员发表了关于这一主题的研究成果,并取得了一些有希望的结果。为了扩展现有的工作,并为未来的研究提供基准,本文提出了四种不同的分类器和两种不同的特征提取技术的比较研究。多层感知器、k近邻、支持向量机和随机森林算法被用作分类器,卷积神经网络和定向梯度直方图被用作特征提取技术。
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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