基于学习的草书手写合成

Jue Wang, Chenyu Wu, Ying-Qing Xu, H. Shum, Liang Ji
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引用次数: 72

摘要

本文提出了一种集个人草书书写建模、学习和综合为一体的方法。草书书写模型采用三单元书写模型,既关注手写字母,又关注相邻字母的互连笔画。手写笔画由基于控制点和b样条曲线的生成模型形成。在两步学习过程中,首先提出一种基于模板的匹配算法和一种数据凝结算法从手写样本中提取训练向量,然后分别训练字母样式模型和串联样式模型。在合成过程中,从学习到的模型中生成孤立的字母和连笔画,并在可变形模型的指导下相互连接以产生整个单词轨迹。实验结果表明,该系统能够有效地学习草书笔迹的个人风格,并具有生成相同风格的新笔迹的能力。
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Learning-based cursive handwriting synthesis
In this paper an integrated approach for modeling, learning and synthesizing personal cursive handwriting is proposed. Cursive handwriting is modeled by a tri-unit handwriting model, which focuses on both the handwritten letters and the interconnection strokes of adjacent letters. Handwriting strokes are formed from generative models that are based on control points and B-spline curves. In the two-step learning process, a template-based matching algorithm and a data congealing algorithm are first proposed to extract training vectors from handwriting samples, and then letter style models and concatenation style models are trained separately. In the synthesis process, isolated letters and ligature strokes are generated from the learned models and concatenated with each other to produce the whole word trajectory, with guidance from a deformable model. Experimental results show that the proposed system can effectively learn the individual style of cursive handwriting and has the ability to generate novel handwriting of the same style.
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