A computational evaluation system of Chinese calligraphy via extended possibility-probability distribution method

Dajun Zhou, Jiamin Ge, Ruiqi Wu, F. Chao, Longzhi Yang, Changle Zhou
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引用次数: 3

Abstract

Robotic calligraphy has became a popular research topic in robotics. Therefore, a computational calligraphy evaluation system is required to access the quality of robotic writing results. This paper applies three types of feature criteria, derived from Chinese calligraphy theories, to extract features of Chinese characters from Chinese Calligraphy textbooks. Then, the Possibility-Probability Distribution method deals with these extracted features, so as to obtain the feature distribution of quality handwriting characters. The Possibility-Probability Distribution method uses the extracted features to automatically build an interior-outer-set computational model based on information diffusion theory. When the computational model is established, each Chinese character, written by a robot, is also extracted to three features; then, the computational model estimates each character's evaluation value. The experimental results demonstrate that the proposed method successfully produces an interior-outer-set computational model from Chinese calligraphy books. In particular, the model is able to generate an evaluation result for each character written by a robot system. To check the validation of the computational model, these characters are also evaluated by human experts. The comparison shows that the evaluation results of human experts are very similar to that of the computational model.
基于扩展可能性-概率分布法的中国书法计算评价系统
机器人书法已经成为机器人领域的热门研究课题。因此,需要一个计算书法评估系统来访问机器人书写结果的质量。本文运用从中国书法理论出发的三种特征标准,对中国书法教材中的汉字特征进行了提取。然后,采用可能性-概率分布方法对提取的特征进行处理,得到优质手写字符的特征分布。可能性-概率分布方法利用提取的特征自动构建基于信息扩散理论的内-外集计算模型。当计算模型建立后,机器人书写的每个汉字也被提取为三个特征;然后,计算模型估计每个字符的评价值。实验结果表明,该方法成功地建立了中国书法书的内外集计算模型。特别是,该模型能够对机器人系统编写的每个字符生成评价结果。为了验证计算模型的有效性,这些特征也由人类专家进行了评估。对比表明,人类专家的评价结果与计算模型的评价结果非常接近。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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