Grouping of Handwritten Bangla Basic Characters, Numerals and Vowel Modifiers for Multilayer Classification

Khondker Nayef Reza, Mumit Khan
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引用次数: 8

Abstract

For better performance in multilayer or hierarchical classification of handwritten text, appropriate grouping of similar symbols is very important. Here we aim to develop a reliable grouping schema for the similar looking basic characters, numerals and vowel modifiers of Bangla language. We experimented with thickened and thinned segmented handwritten text to compare which type of image is better for which group. For classification we chose Support Vector Machine (SVM) as it outperforms other classifiers in this field. We used both “one against one” and “one against all” strategies for multiclass SVM and compared their performance.
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手写体孟加拉语基本字、数字和元音修饰语的分层分类
为了在多层或分层的手写文本分类中获得更好的性能,对相似符号进行适当的分组是非常重要的。本文旨在为孟加拉语相似的基本字、数字和元音修饰语建立一个可靠的分组模式。我们实验了加厚和稀释的分割手写文本,以比较哪种类型的图像更适合哪一组。对于分类,我们选择支持向量机(SVM),因为它优于该领域的其他分类器。我们对多类支持向量机分别采用了“一对一”和“一对全”两种策略,并比较了它们的性能。
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