Computing the Slant Degree of Digital Ink Chinese Characters Handwritten by CFL Beginners Based on Elliptical Enclosing Shape

Yun Lai, Xiwen Zhang
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Abstract

∗The shape of the Chinese character should be square and not slanted in its overall presentation. Beginners of Chinese as a foreign language (CFL) often tend to write slanted characters as they have not yet fully grasped the writing techniques of the strokes and the relationship between them. Slant deviation in handwritten characters is usually assessed manually, which is time-consuming and subjective as there are no quantitative criteria. Existing methods of computing the slant membership of Chinese characters are mainly based on the angle of individual strokes, ignoring other conformational factors that affect the overall slant of the character. This paper proposes a slant membership computation approach for handwritten Chinese characters based on elliptical enclosing shapes, with the aim of computing the slant membership that reflects the combination of all Chinese strokes. A knowledge base is also constructed to label the slant information of standard template characters, and the slant membership of handwritten characters is computed by comparing the differences between them with the template characters in the knowledge base. Experiments conducted with digital ink character data from CFL beginners proved that the proposed approach is effective.
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基于椭圆围形的CFL初学者手写数字墨迹汉字倾斜度计算
汉字的形状应该是方形的,而不是倾斜的。初学对外汉语的学生由于对笔画的书写技巧和笔画之间的关系还没有完全掌握,所以经常会写斜体字。手写字符的倾斜偏差通常是手工评估的,由于没有定量的标准,这既耗时又主观。现有的汉字倾斜隶属度计算方法主要基于单个笔画的角度,忽略了其他影响汉字整体倾斜的构象因素。本文提出了一种基于椭圆围合形状的手写汉字倾斜隶属度计算方法,旨在计算反映汉字所有笔画组合的倾斜隶属度。构建了一个知识库,对标准模板字符的倾斜信息进行标注,并通过比较知识库中手写字符与模板字符的差异,计算手写字符的倾斜隶属度。用CFL初学者的数字墨水字符数据进行了实验,证明了该方法的有效性。
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