HOG and Zone Base Features for Handwritten Javanese Character Classification

Rismiyati, Khadijah, D. E. Riyanto
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引用次数: 4

Abstract

The recognition of handwritten characters remain one of challenging task in character recognition problems. The variations created by each person in writing the characters affect the character recognition result. Many studies have been performed to increase the performance of Javanese character recognition. The efforts are to extract the best feature for classification or to get the best classifier for classification. In this study, HOG feature and Zoning Based Feature will be used to classify Javanese Characters. The performance of both features will be compared for classifying Javanese character by using SVM classifier. Two types of inputs will be used for each feature extractor, binary and skeleton of the character image. The experiment showed that HOG feature is able to show higher accuracy as compared to the simple zone based feature (88.45%). The best accuracy for HOG is achieved by using binary input. On the other hand, despite its simplicity zone based feature is able to achive 81.98% accuracy by using skeleton input. Considering that the zone based feature used in this research is simply the pixel count in each zone, future research may be performed to extract more statistical properties on each zone. Future works may also focus on rotation free feature extraction for Javanese character classification.
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手写爪哇文字分类的HOG和区域基特征
手写体字符的识别一直是字符识别领域的难点之一。每个人在书写汉字时产生的差异会影响汉字识别的结果。为了提高爪哇文字识别的性能,已经进行了许多研究。其目的是提取最佳特征进行分类,或者得到最佳分类器进行分类。本研究将使用HOG特征和Zoning Based feature对爪哇文字进行分类。比较了这两种特征在使用SVM分类器进行爪哇文字分类时的性能。对于每个特征提取器,将使用两种类型的输入,即字符图像的二进制和骨架。实验表明,HOG特征比简单的基于区域的特征具有更高的准确率(88.45%)。采用二进制输入可以达到最佳的HOG精度。另一方面,基于区域的特征虽然简单,但使用骨架输入可以达到81.98%的准确率。考虑到本研究中使用的基于区域的特征仅仅是每个区域的像素数,未来的研究可以提取更多关于每个区域的统计属性。未来的工作还可能集中在爪哇文字分类的无旋转特征提取上。
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