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Predicting Expressive Bow Controls for Violin and Viola

机译:预测小提琴和中提琴的表达弓控制

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Though computational systems can simulate notes on a staff of sheet music, capturing the artistic liberties professional musicians take to communicate their interpretation of those notes is a much more difficult task. In this paper, we demonstrate that machine learning methods can be used to learn models of expressivity, focusing on bow articulation for violin and viola. First we describe a new data set of annotated sheet music with information about specific aspects of bow control. We then present experiments for building and testing predictive models for these bow controls, as well as analysis that includes both general metrics and manual examination.
机译:虽然计算系统可以模拟乐谱员工的笔记,但捕获艺术自由专业音乐家才能传达他们对这些笔记的解释是一个更加艰巨的任务。在本文中,我们证明了机器学习方法可用于学习富有症的模型,专注于小提琴和中提琴的弓形关节。首先,我们描述了一个新的带有有关弓形控件方面的信息的注释乐谱数据集。然后,我们对这些弓形控制的建立和测试预测模型以及包括一般指标和手动检查的分析,请实验。

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