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Statistical learning and estimation of piano fingering

机译:钢琴指法的统计学习与估算

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Automatic estimation of piano fingering is important for understanding the computational process of music performance and applicable to performance assistance and education systems. While a natural way to formulate the quality of fingerings is to construct models of the constraints/costs of performance, it is generally difficult to find appropriate parameter values for these models. Here we study an alternative data-driven approach based on statistical modeling in which the appropriateness of a given fingering is described by probabilities. Specifically, we construct two types of hidden Markov models (HMMs) and their higher-order extensions. We also study deep neural network (DNN)-based methods for comparison. Using a newly released dataset of fingering annotations, we conduct systematic evaluations of these models as well as a representative constraint-based method. We find that the methods based on high-order HMMs outperform the other methods in terms of estimation accuracies. We also quantitatively study individual difference of fingering and propose evaluation measures that can be used with multiple ground truth data. We conclude that the HMM-based methods are currently state of the art and generate acceptable fingerings in most parts and that they have certain limitations such as ignorance of phrase boundaries and interdependence of the two hands. (C) 2019 Elsevier Inc. All rights reserved.
机译:钢琴指法的自动估计对于了解音乐表现的计算过程并适用于绩效援助和教育系统很重要。虽然制定指裁质量的自然方式是构造模型的约束/性能成本,但通常很难找到这些模型的适当参数值。这里我们研究了一种基于统计建模的替代数据驱动方法,其中概率描述了给定指法的适当性。具体来说,我们构建了两种类型的隐马尔可夫模型(HMMS)及其高阶扩展。我们还研究了用于比较的深神经网络(DNN)的基础方法。使用新发布的指法注释数据集,我们对这些模型的系统进行了系统的评估以及基于代表性的基于约束方法。我们发现基于高阶HMMS的方法在估计精度方面优于其他方法。我们还定量研究手法的个性差异,并提出可以与多个地面真理数据一起使用的评估措施。我们得出结论,基于赫姆的方法是目前最先进的,并且在大多数部分中产生可接受的指针,并且它们具有一定的限制,例如短语界限和两只手相互依存。 (c)2019 Elsevier Inc.保留所有权利。

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