Arabic Handwritten Word Recognition System Based on the Wavelet Packet Decomposition

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Abstract

This paper attempts to recognize Arabic handwriting based on the Wavelet Packet Decomposition (WPD) using two different classifiers (Support Vector Machine SVM with three kernels and k-Nearest Neighbors K-NN). The proposed approach of recognizing Arabic handwriting contains three major stages including image preprocessing, extracting the features of the image, and classification. Firstly, the diacritics are removed using the opening morphological operation (i.e image preprocessing). Secondly, extracting the structure of the paragraph using the morphological method. Finally, the word image size is converted into a suitable size for the next stages. To extract features from the image, the WPD method was adopted to extract the features of Arabic handwriting as the transformation method of feature space. This extracts the Arabic global features to be classified in the last stage using the SVM with polynomial kernel and K-NN. The proposed approach of recognizing Arabic handwriting was tested on IFN/ENIT dataset by rescaling images into various sizes, 93.7% when the SVM with polynomial kernel is used, K-NN classifier achieved accuracy rate is 88.4%.
基于小波包分解的阿拉伯手写词识别系统
本文尝试使用两种不同的分类器(三核支持向量机SVM和k近邻K-NN)基于小波包分解(WPD)识别阿拉伯笔迹。本文提出的识别阿拉伯文笔迹的方法包括图像预处理、图像特征提取和分类三个阶段。首先,使用开放形态学操作(即图像预处理)去除变音符。其次,运用形态学方法提取段落结构。最后,将单词图像大小转换为适合下一阶段的大小。为了从图像中提取特征,采用WPD方法提取阿拉伯文笔迹的特征作为特征空间的变换方法。利用多项式核支持向量机和K-NN结合提取出最后阶段需要分类的阿拉伯语全局特征。在IFN/ENIT数据集上对该方法进行了阿拉伯文笔迹识别的测试,将图像重新缩放为不同的大小,使用多项式核支持向量机的准确率为93.7%,K-NN分类器的准确率为88.4%。
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