Comparative Study of Devnagari Handwritten Character Recognition Using Different Feature and Classifiers

U. Pal, T. Wakabayashi, F. Kimura
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引用次数: 134

Abstract

In recent years research towards Indian handwritten character recognition is getting increasing attention. Many approaches have been proposed by the researchers towards handwritten Indian character recognition and many recognition systems for isolated handwritten numerals/characters are available in the literature. To get idea of the recognition results of different classifiers and to provide new benchmark for future research, in this paper a comparative study of Devnagari handwritten character recognition using twelve different classifiers and four sets of feature is presented. Projection distance, subspace method, linear discriminant function, support vector machines, modified quadratic discriminant function, mirror image learning, Euclidean distance, nearest neighbour, k-Nearest neighbour, modified projection distance, compound projection distance, and compound modified quadratic discriminant function are used as different classifiers. Feature sets used in the classifiers are computed based on curvature and gradient information obtained from binary as well as gray-scale images.
基于不同特征和分类器的Devnagari手写体字符识别比较研究
近年来,对印度手写体字符识别的研究越来越受到重视。研究人员提出了许多手写印度字符识别的方法,并且文献中有许多针对孤立手写数字/字符的识别系统。为了了解不同分类器的识别结果,为今后的研究提供新的基准,本文采用12种不同的分类器和4组特征对Devnagari手写体字符识别进行了比较研究。将投影距离、子空间法、线性判别函数、支持向量机、修正二次判别函数、镜像学习、欧几里得距离、最近邻、k近邻、修正投影距离、复合投影距离、复合修正二次判别函数作为不同的分类器。分类器中使用的特征集是基于从二值图像和灰度图像中获得的曲率和梯度信息计算的。
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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