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Calligraphic Stylisation Learning with a Physiologically Plausible Model of Movement and Recurrent Neural Networks

机译:具有运动和循环神经网络的生理学合理模型的书法风格化学习

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摘要

We propose a computational framework to learn stylisation patterns from example drawings or writings, and then generate new trajectories that possess similar stylistic qualities. We particularly focus on the generation and stylisation of trajectories that are similar to the ones that can be seen in calligraphy and graffiti art. Our system is able to extract and learn dynamic and visual qualities from a small number of user defined examples which can be recorded with a digitiser device, such as a tablet, mouse or motion capture sensors. Our system is then able to transform new user drawn traces to be kinematically and stylistically similar to the training examples. We implement the system using a Recurrent Mixture Density Network (RMDN) combined with a representation given by the parameters of the Sigma Lognormal model, a physiologically plausible model of movement that has been shown to closely reproduce the velocity and trace of human handwriting gestures.
机译:我们提出了一个计算框架,以从示例绘图或文字中学习风格化模式,然后生成具有类似风格特征的新轨迹。我们特别关注与书法和涂鸦艺术类似的轨迹的生成和风格化。我们的系统能够从少量用户定义的示例中提取并学习动态和视觉质量,这些示例可以用数字化仪设备(例如平板电脑,鼠标或运动捕捉传感器)记录下来。然后,我们的系统能够将新的用户绘制轨迹转换为运动学和样式上类似于训练示例的运动轨迹。我们使用循环混合密度网络(RMDN)结合Sigma Lognormal模型的参数所给出的表示来实施该系统,该模型是一种生理学上合理的运动模型,已被证明可以精确再现人类手写手势的速度和轨迹。

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