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A Study of Nonlinear Shape Normalization for Online Handwritten Chinese Character Recognition: Dot Density vs. Line Density Equalization

机译:在线手写汉字识别非线性形状归一化研究:点密度与线密度均衡

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Nonlinear shape normalization (NSN) approaches based on line density equalization have been the most popular choice for both offline and online handwritten Chinese character recognition (HCCR). However, in a recent study of using 8-directional features for online HCCR, we discovered that an NSN approach based on dot density equalization achieved a much better performance than that of an NSN approach based on line density equalization. In this paper, we present the details of the NSN approaches we studied for online HCCR, and report the comparative experimental results using an in-house developed Chinese handwriting corpus as well as the popular Nakayosi and Kuchibue Japanese character databases. We also present an improved NSN approach based on the equalization of dot densities derived from blurred character image that can be used for offline HCCR.
机译:基于线密度均衡的非线性形状归一化(NSN)方法是离线和在线手写汉字识别(HCCR)的最受欢迎的选择。然而,在最近对在线HCCR使用8方向特征的研究中,我们发现基于点密度均衡的NSN方法实现了比基于线密度均衡的NSN方法的更好的性能。在本文中,我们介绍了我们研究在线HCCR的NSN方法的详细信息,并使用内部开发的中国手写语料库以及流行的Nakayosi和Kuchibue日语字符数据库报告比较实验结果。我们还基于可用于离线HCCR的模糊性字符图像的点密度的均衡,提出了一种改进的NSN方法。

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