Hindi handwritten character recognition using multiple classifiers

Madhuri Yadav, R. Purwar
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引用次数: 15

Abstract

Humans can easily recognize handwritten words, after gaining basic knowledge of languages. This knowledge needs to be transferred to computers for automatic character recognition. The work proposed in this paper tries to automate recognition of handwritten hindi isolated characters using multiple classifiers. For feature extraction, it uses histogram of oriented gradients as one feature and profile projection histogram as another feature. The performance of various classifiers has been evaluated using theses features experimentally and quadratic SVM has been found to produce better results.
使用多个分类器的印地语手写字符识别
在获得基本的语言知识之后,人类可以很容易地识别手写的单词。这些知识需要转移到计算机上进行自动字符识别。本文提出的工作试图使用多个分类器自动识别手写印地语孤立字符。在特征提取方面,采用梯度方向直方图作为特征,轮廓投影直方图作为特征。利用这些特征对各种分类器的性能进行了实验评估,发现二次支持向量机产生了更好的结果。
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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