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Recognition of Bangla Handwritten Characters using Feature Combinations

机译:使用特征组合识别Bangla手写字符

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The success of any character recognition system largely depends on how well the distinguishing features of different characters describe the classes of characters. This paper studies the effect of the combinations of three different feature sets (i.e. chain code histogram (CH), longest run (LR) and Gabor wavelet based (GW) feature) on Bangla handwritten character recognition in order to maximize the number of discriminative features among different character classes. Different combinations of the three feature sets, namely LR & GW, CH & GW, LR & CH, and LR, CH & GW tested on a standard database of Bangla characters revealed that the combination of LR and CH features yielded better recognition accuracy compared to the other cases. It was also observed that size of the feature vectors in the combination played a key role in the recognition process.
机译:任何字符识别系统的成功在很大程度上取决于不同字符的显着特征如何描述字符类。本文研究了三种不同特征集的组合(即链条代码直方图(CH),最长的运行(LR)和GABOR小波(GW)特征的效果)在Bangla手写的字符识别上,以最大化鉴别特征的数量在不同的字符类中。三个特征集的不同组合,即LR&GW,CH&GW,LR&CH和LR,CH&GW在BANGLA字符的标准数据库上测试,显示LR和CH特征的组合,与此相比产生了更好的识别准确性。另一个情况。还观察到,组合中的特征向量的大小在识别过程中发挥了关键作用。

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