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Automatic stroke generation for style-oriented robotic Chinese calligraphy

机译:适合风格的机器人中文书法自动冲程生成

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摘要

Intelligent robots, as an important type of Cyber-Physical systems, have promising potential to take the central stage in the development of the next-generation of efficient smart systems. Robotic calligraphy is such an attempt, and the current research focuses on the control algorithms of the robotic arms, which usually suffers from significant human inputs and limited writing styles. This paper presents an autonomous robotic writing system for Chinese calligraphy empowered by the proposed automatic stroke matching and generation mechanisms. Thanks to these mechanisms, the robot is able to effectively learn to write any Chinese characters in a style that is sampled by a small amount of handwritten Chinese characters with a certain target writing style. This is achieved by firstly disassembling each given Chinese character into individual strokes using the proposed character disassemble method; then, the writing style of the dissembled strokes is learned by a stroke generation module, which is built upon a generative adversarial learning model. From this, the robot can apply the learned writing style to any Chinese character from a given database, by dissembling the character and then generating the stroke trajectories based on the learned writing style. The experiments confirm the effectiveness of the proposed system in learning writing a certain style of characters based on a small style dataset, as evidenced by the high similarity between the robotic writing results and the handwritten ones according to the Frechet Inception Distance.
机译:作为一种重要的网络物理系统,智能机器人具有希望在下一代高效智能系统的开发中采取中央阶段的潜力。机器人书法是这样的尝试,目前的研究侧重于机器人臂的控制算法,这通常存在重要人类投入和有限的写作风格。本文介绍了中国书法的自治机器人写作系统,由建议的自动行程匹配和发电机制赋予。由于这些机制,机器人能够有效地学会以一种用特定目标写作风格的少量手写汉字采样的风格编写任何汉字。通过首先使用所提出的性格拆卸方法首先将每个给汉字拆卸到单独的中风来实现这一点;然后,由中风生成模块学习不称解笔划的写作风格,该模块建立在生成的对抗性学习模型之上。由此,通过传递字符,机器人可以通过传播字符来将学习的写入样式应用于来自给定数据库的任何汉字,然后根据学习的写入样式生成笔划轨迹。该实验证实了所提出的系统在学习基于小型样式数据集时学习某种特征的有效性,如机器人写入结果和根据Freechet初始距离之间的高相似性所证明的。

著录项

  • 来源
    《Future generation computer systems》 |2021年第6期|20-30|共11页
  • 作者单位

    Department of Artificial Intelligence School of Informatics Xiamen University China;

    Department of Artificial Intelligence School of Informatics Xiamen University China;

    Department of Artificial Intelligence School of Informatics Xiamen University China Institute of Mathematics Physics and Computer Science Aberystwyth University UK;

    Department of Computer and Information Sciences Northumbria University UK;

    Institute of Mathematics Physics and Computer Science Aberystwyth University UK;

    Department of Electrical Engineering Yuan Ze University Taiwan;

    Department of Artificial Intelligence School of Informatics Xiamen University China;

    School of Computing Science and Engineering VIT University Chennai India;

    Institute of Mathematics Physics and Computer Science Aberystwyth University UK;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Intelligent robots; Smart cyber-physical systems; Robotic calligraphy; Robotic motion planning; Deep learning;

    机译:智能机器人;智能网络物理系统;机器人书法;机器人运动规划;深度学习;
  • 入库时间 2022-08-19 01:59:10

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