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Similar Handwritten Chinese Character Recognition Using Hierarchical CNN Model

机译:使用分层CNN模型类似的手写汉字识别

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We propose a hierarchical CNN model for the recognition of confusable similar handwritten Chinese characters, which are automatically extracted from a large character set by utilizing a classifier's recognition result. The proposed hierarchical CNN model takes advantage of deep networks and traditional hierarchical methods, and consists of two stages, which are expected to differentiate inter-group characters and intra-group characters, respectively. Different from traditional ways of expanding depth and/or width of general sole classifier CNNs, we explore the way of designing multiple parallel CNN classifiers to capture critical regions of similar characters. Each classifier along with their feature extraction layers is trained only with a group of similar characters so that the subtle shape difference can be captured. Totally, 368 similar characters (categorized into 172 groups) are extracted from 3755 frequently used Chinese characters. Experimental results on these similar characters demonstrate the superiority of the proposed method to the expanded CNN models.
机译:我们提出了一个分层CNN模型,用于识别可变的类似手写汉字,它通过利用分类器的识别结果从大字符集自动提取。所提出的分层CNN模型利用了深度网络和传统的分层方法,并且由两个阶段组成,预计将分别区分组间字符和组字符。不同于传统的扩展深度和/或宽度的唯一唯一分类器CNN的方式,我们探讨了设计多个并行CNN分类器的方式,以捕获类似字符的关键区域。每个分类器以及其特征提取层的训练仅具有一组类似的特征,使得可以捕获微妙的形状差异。完全,从3755常用的汉字中提取368个类似的字符(分类为172组)。这些类似字符的实验结果证明了所提出的方法到扩展的CNN模型的优越性。

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