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Arabic Hand Written Character Recognition Based on Contour Matching and Neural Network

机译:基于轮廓匹配和神经网络的阿拉伯手写文字识别

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摘要

Complexity of Arabic writing language makes its handwritten recognition very complex in terms of computer algorithms. The Arabic handwritten recognition has high importance in modern applications. The contour analysis of word image can extract special contour features that discriminate one character from another by the mean of vector features. This paper implements a set of pre-processing functions over a handwritten Arabic characters, with contour analysis, to enter the contour vector to neural network to recognize it. The selection of this set of preprocessing algorithms was completed after hundreds of tests and validation. The feed forward neural network architecture was trained using many patterns regardless of the Arabic font style building a rigid recognition model. Because of the shortcomings in Arabic written databases or datasets, the testing was done by non-standard data set. The presented algorithm structure got recognition ratio about 97%.
机译:阿拉伯文字的复杂性使得其手写识别在计算机算法方面非常复杂。阿拉伯语手写识别在现代应用中非常重要。单词图像的轮廓分析可以提取特殊的轮廓特征,这些特征通过矢量特征将一个字符与另一个字符区分开。本文通过手写阿拉伯字符实现了一组预处理功能,并进行了轮廓分析,以将轮廓矢量输入到神经网络以对其进行识别。经过数百次测试和验证后,才选择了这套预处理算法。前馈神经网络体系结构使用多种模式进行了训练,无论阿拉伯语字体样式如何建立严格的识别模型。由于阿拉伯语书面数据库或数据集的缺点,因此测试是通过非标准数据集完成的。提出的算法结构识别率约97%。

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