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Zernike moment feature extraction for handwritten Devanagari compound character recognition

机译:Zernike Mocton Featuring提取手写Devanagari复合字符识别

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Compound character recognition of Devanagari script is one of the challenging tasks since the characters are complex in structure and can be modified by writing combination of two or more characters. These compound characters occurs 12 to 15% in the Devanagari Script. The moment based techniques are being successfully applied to several image processing problems and represents a fundamental tool to generate feature descriptors where the Zernike moment technique has a rotation invariance property which found to be desirable for handwritten character recognition. This paper discusses extraction of features from handwritten compound characters using Zernike moment feature descriptor and proposes SVM and k-NN based classification system. The proposed classification system preprocess and normalize the 27000 handwritten character images into 30x30 pixels images and divides them into zones. The pre-classification produces three classes depending on presence or absence of vertical bar. Further Zernike moment feature extraction is performed on each zone. The overall recognition rate of proposed system using SVM and k-NN classifier is upto 98.37%, and 95.82% respectively.
机译:Devanagari脚本的复合字符识别是一个具有挑战性的任务之一,因为字符结构复杂,并且可以通过写入两个或更多个字符的组合来修改。这些复合字符发生在Devanagari脚本中的12至15%。基于矩基于若干图像处理问题的时刻基础技术,并且表示基本工具,用于生成Zernike Slion技术具有旋转不变性属性的特征描述符,该特征描述符被发现对于手写的字符识别是期望的。本文讨论了使用Zernike Slion特征描述符从手写复合字符的提取,并提出了基于SVM和基于K-NN的分类系统。所提出的分类系统预处理并将27000手写字符图像标准化为30x30像素图像,并将其划分为区域。预分类根据垂直杆的存在或不存在产生三个类。在每个区域执行进一步的Zernike Slion特征提取。使用SVM和K-NN分类器的提出系统的总识识别率分别为98.37%和95.82%。

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