Comparative Study of KNN, SVM and SR Classifiers in Recognizing Arabic Handwritten Characters Employing Feature Fusion

A. Huque, Mainul Haque, H. A. Khan, Abdullah Al Helal, K. Ahmed
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引用次数: 1

Abstract

This paper evaluates and compares the performance of K-Nearest Neighbors (KNN), Support Vector Machine (SVM) and Sparse Representation Classifier (SRC) for recognition of isolated Arabic handwritten characters. The proposed framework converts the gray-scale character image to a binary image through Otsu thresholding, and size-normalizes the binary image for feature extraction. Next, we exploit image down-sampling and the histogram of image gradients as features for image classification and apply fusion (combination) of these features to improve the recognition accuracy. The performance of the proposed system is evaluated on Isolated Farsi/Arabic Handwritten Character Database (IFHCDB) – a large dataset containing gray scale character images. Experimental results reveal that the histogram of gradient consistently outperforms down-sampling based features, and the fusion of these two feature sets achieves the best performance. Likewise, SRC and SVM both outperform KNN, with the latter performing the best among the three. Finally, we achieved a commanding accuracy of 93.71% in character recognition with fusion of features classified by SVM, where 92.06% and 91.10% is achieved by SRC and KNN respectively.
基于特征融合的KNN、SVM和SR分类器识别阿拉伯手写体的比较研究
本文评估并比较了k -最近邻(KNN)、支持向量机(SVM)和稀疏表示分类器(SRC)在孤立阿拉伯手写字符识别中的性能。该框架通过Otsu阈值法将灰度特征图像转换为二值图像,并对二值图像进行尺寸归一化,进行特征提取。接下来,我们利用图像降采样和图像梯度直方图作为图像分类的特征,并将这些特征融合(组合)以提高识别精度。该系统在孤立波斯语/阿拉伯语手写字符数据库(IFHCDB)上进行了性能评估,IFHCDB是一个包含灰度字符图像的大型数据集。实验结果表明,梯度直方图的性能始终优于下采样特征,两种特征集的融合效果最好。同样,SRC和SVM都优于KNN,后者在三者中表现最好。最后,SVM分类特征融合字符识别的准确率达到了93.71%,其中SRC和KNN的准确率分别为92.06%和91.10%。
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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