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Segmentation of On-line Cursive Handwritten Chinese Word Based on Stroke Speed Feature and Stroke Vector Feature

机译:基于行程速度特征和笔划矢量特征的基于行程速度特征的线上卷曲手写中文单词的分割

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On-line handwritten Chinese word recognition has recently become an important research topic in the filed of computer vision. However, the segmentation of cursive Chinese word is still an unsolved problem. In this paper, two new features, Stroke Speed Feature and Stroke Vector Feature, are proposed for the segmentation of on-line handwritten Chinese word. Analysis and experiments show that both of the features are easy to implement, with low computation complexity and encouraging correct segmentation accuracy. Furthermore, the Stroke Vector Feature outperforms traditional histogram method and we found it is especially suitable for the segmentation of cursive handwritten word where two characters touch each other or overlap.
机译:在线手写中文字识别最近成为计算机愿景提交的重要研究主题。但是,卷曲中文单词的分割仍然是一个未解决的问题。在本文中,提出了两个新功能,行程速度特征和行程向量特征,用于在线手写中文单词的分割。分析和实验表明,两种功能都很容易实现,计算复杂性低,并鼓励正确的分割精度。此外,笔划载体特征优于传统的直方图方法,并且我们发现它特别适用于卷曲手写词的分割,其中两个字符彼此接触或重叠。

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