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A data-driven robotic Chinese calligraphy system using convolutional auto-encoder and differential evolution

机译:基于卷积自动编码器和差分进化的数据驱动机器人书法系统

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The Chinese stroke evaluation and generation systems required in an autonomous calligraphy robot play a crucial role in producing high-quality writing results with good diversity. These systems often suffer from inefficiency and non-optima despite of intensive research effort investment by the robotic community. This paper proposes a new learning system to allow a robot to automatically learn to write Chinese calligraphy effectively. In the proposed system, the writing quality evaluation subsystem assesses written strokes using a convolutional auto-encoder network (CAE), which enables the generation of aesthetic strokes with various writing styles. The trained CAE network effectively excludes poorly written strokes through stroke reconstruction, but guarantees the inheritance of information from well-written ones. With the support of the evaluation subsystem, the writing trajectory model generation subsystem is realized by multivariate normal distributions optimized by differential evolution (DE), a type of heuristic optimization search algorithm. The proposed approach was validated and evaluated using a dataset of nine stroke categories: high-quality written strokes have been resulted with good diversity which shows the robustness and efficacy of the proposed approach and its potential in autonomous action-state space exploration for other real-world applications. (C) 2019 Elsevier B.V. All rights reserved.
机译:自主书法机器人所需的中文笔画评估和生成系统在产生具有良好多样性的高质量书写结果中起着至关重要的作用。尽管机器人社区进行了大量的研究工作,但这些系统通常仍存在效率低下和效率不高的问题。本文提出了一种新的学习系统,可使机器人自动学习如何有效地书写中国书法。在提出的系统中,书写质量评估子系统使用卷积自动编码器网络(CAE)评估书写笔划,从而可以生成具有各种书写样式的美学笔画。经过训练的CAE网络可通过笔划重建有效地排除笔迹较差的笔画,但可保证从笔迹良好的笔画中继承信息。在评估子系统的支持下,书写轨迹模型生成子系统是通过一种由启发式优化搜索算法差分演化(DE)优化的多元正态分布实现的。使用九种笔划类别的数据集对提出的方法进行了验证和评估:高质量的笔画具有良好的多样性,显示出该方法的鲁棒性和有效性,以及其在其他实际动作状态下进行自主动作状态空间探索的潜力世界应用。 (C)2019 Elsevier B.V.保留所有权利。

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