Comparison of Feature Extraction Techniques for Handwriting Recognition

Gaye Ediboglu Bartos, E. Hajnal, Yasar Hoscan
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Abstract

Feature extraction is an important phase for image processing purposes since the output of the feature extraction is the input for classifiers. The importance of it applies to handwriting recognition problem, too. Distinctive features result in higher accuracy recognition of characters, or words. Therefore, it is crucial to be able to extract relevant and distinctive features from the image. In this study, we compare different feature extraction techniques for Hungarian handwriting recognition purpose. In order to be able to compare the techniques, the output of feature extraction phase is classifier using three classifiers namely, Support Vector Machines (SVM), Rough Sets Theory (RST) and Bayesian Networks (BN) using the WEKA machine learning tool. The results indicated that, the best classification results were retrieved using features calculated by the distribution of points in the image. However, it can be said that the combinations of different feature extraction types provide a greater deal of distinctiveness.
笔迹识别的特征提取技术比较
特征提取是图像处理的重要阶段,因为特征提取的输出是分类器的输入。它的重要性也适用于手写识别问题。鲜明的特征可以提高字符或单词的识别精度。因此,能否从图像中提取出相关且鲜明的特征是至关重要的。在这项研究中,我们比较了不同的特征提取技术,匈牙利语手写识别的目的。为了能够比较技术,特征提取阶段的输出是使用三种分类器的分类器,即支持向量机(SVM),粗糙集理论(RST)和贝叶斯网络(BN),使用WEKA机器学习工具。结果表明,利用图像中点的分布计算出的特征可以获得最佳的分类结果。然而,可以说不同特征提取类型的组合提供了更大的独特性。
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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