机器人书法中笔画顺序的视觉匹配

Hsien-I Lin, Yu-Che Huang
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引用次数: 9

摘要

机器人书法是一个有趣的问题,最近引起了很多关注。机器人书法的两个主要问题是笔画形状和笔画顺序。大多数以前的工作集中在控制笔刷轨迹,压力,速度和加速度,以绘制所需的笔画形状。至于笔画顺序,则是手动从数据库中给出的。即使是光学字符识别(OCR)软件,也无法从字符图像中识别笔画顺序。本文描述了一种基于视觉匹配的汉字笔画顺序自动提取方法。具体来说,汉字在图像上的笔画顺序可以通过将给定的同一汉字的标准图像与其笔画顺序相关联而自动生成。提出的视觉匹配方法提取输入图像的霍夫线特征,并使用支持向量机(SVM)将特征与标准图像的霍夫线特征进行关联。在几个汉字上对所提出的特征进行了评价。以“国”和“龙”两个著名汉字为例,论证了该方法的可行性。“国”与“龙”的笔画顺序匹配率分别为95.8%和90.3%。
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Visual matching of stroke order in robotic calligraphy
Robotic calligraphy is an interesting problem and recently draws much attention. Two major problems in robotic calligraphy are stroke shape and stroke order. Most of previous work focused on controlling brush trajectory, pressure, velocity, and acceleration to draw a desired stroke shape. As for stroke order, it was manually given from a database. Even for a software of optical character recognition (OCR), it cannot recognize the stroke order from a character image. This paper describes the automatic extraction of the stroke order of a Chinese character by visual matching. Specifically speaking, the stroke order of a Chinese character on an image can be automatically generated by the association of the standard image of the same character given with its stroke order. The proposed visual-matching method extracts the features of the Hough Lines of an input image and uses support vector machine (SVM) to associate the features with the ones of the standard image. The features used in the proposed method were evaluated on several Chinese characters. Two famous Chinese characters “Country” and “Dragon” were used to demonstrate the feasibility of the proposed method. The matched rate of the stroke order of “Country” and “Dragon” were 95.8% and 90.3%, respectively.
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