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Dynamic Bayesian Networks for Symbolic Polyphonic Pitch Modeling

机译:动态贝叶斯网络用于符号复音音高建模

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摘要

Symbolic pitch modeling is a way of incorporating knowledge about relations between pitches into the process of analyzing musical information or signals. In this paper, we propose a family of probabilistic symbolic polyphonic pitch models, which account for both the “horizontal” and the “vertical” pitch structure. These models are formulated as linear or log-linear interpolations of up to five sub-models, each of which is responsible for modeling a different type of relation. The ability of the models to predict symbolic pitch data is evaluated in terms of their cross-entropy, and of a newly proposed “contextual cross-entropy” measure. Their performance is then measured on synthesized polyphonic audio signals in terms of the accuracy of multiple pitch estimation in combination with a Nonnegative Matrix Factorization-based acoustic model. In both experiments, the log-linear combination of at least one “vertical” (e.g., harmony) and one “horizontal” (e.g., note duration) sub-model outperformed a pitch-dependent Bernoulli prior by more than 60% in relative cross-entropy and 3% in absolute multiple pitch estimation accuracy. This work provides a proof of concept of the usefulness of model interpolation, which may be used for improved symbolic modeling of other aspects of music in the future.
机译:符号音高建模是一种将有关音高之间关系的知识纳入分析音乐信息或信号的过程的一种方法。在本文中,我们提出了一个概率符号复调音高模型系列,该模型同时考虑了“水平”和“垂直”音高结构。这些模型被公式化为最多五个子模型的线性或对数线性插值,每个子模型负责为不同类型的关系建模。根据模型的符号交叉熵和新提出的“上下文符号交叉熵”度量,可以评估模型预测符号音高数据的能力。然后,根据多重音高估计的精度以及基于非负矩阵分解的声学模型,对合成的复音音频信号测量其性能。在这两个实验中,至少一个“垂直”(例如和声)和一个“水平”(例如音符持续时间)子模型的对数线性组合比音高相关的伯努利先于相对交叉的表现超过60%熵和绝对多音高估计精度的3%。这项工作提供了模型插值有用性的概念证明,将来可用于改进音乐其他方面的符号建模。

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