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Bayesian Audio-to-Score Alignment Based on Joint Inference of Timbre, Volume, Tempo, and Note Onset Timings

机译:基于音色,音量,节奏和音符起音时间的联合推断的贝叶斯音频到分数对齐

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摘要

This article presents an offline method for aligning an audio signal to individual instrumental parts constituting a musical score. The proposed method is based on fitting multiple hidden semi-Markov models (HSMMs) to the observed audio signal. The emission probability of each state of the HSMM is described using latent harmonic allocation (LHA), a Bayesian model of a harmonic sound mixture. Each HSMM corresponds to one musical instrument’s part, and the state duration probability is conditioned on a linear dynamics system (LDS) tempo model. Variational Bayesian inference is used to jointly infer LHA, HSMM, and the LDS. We evaluate the capability of the method to align musical audio to its score, under reverberation, structural variations, and fluctuations in onset timing among different parts.
机译:本文介绍了一种离线方法,用于将音频信号与组成乐谱的各个乐器部件对齐。所提出的方法是基于将多个隐藏的半马尔可夫模型(HSMM)拟合到观察到的音频信号。使用潜在谐波分配(LHA)(谐波声音混合的贝叶斯模型)描述了HSMM每种状态的发射概率。每个HSMM对应一个乐器的零件,并且状态持续时间的概率取决于线性动力学系统(LDS)速度模型。变分贝叶斯推断用于联合推断LHA,HSMM和LDS。我们评估了该方法在混响,结构变化以及不同部分之间的开始时间波动下使音乐音频与其乐谱对齐的能力。

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