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Joint Transcription of Lead, Bass, and Rhythm Guitars Based on a Factorial Hidden Semi-Markov Model

机译:基于因子隐式半马尔可夫模型的铅,贝斯和节奏吉他的联合转录

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This paper describes a statistical method for estimating musical scores for lead, bass, and rhythm guitars from polyphonic audio signals of typical band-style music. To perform multi-instrument transcription involving multi-pitch detection and part assignment, it is crucial to formulate a musical language model that represents the characteristics of each part in order to solve the ambiguity of part assignment and estimate a musically-natural score. We propose a factorial hidden semi-Markov model that consists of three language models corresponding to the three guitar parts (three latent chains) and an acoustic model of a mixture spectrogram (emission model). The language model for rhythm guitar represents a homophonic sequence of musical notes (chord sequence) and those for lead and bass guitars represent a monophonic sequence of musical notes in a higher and lower frequency range respectively. The acoustic model represents a spectrogram as a sum of low-rank spectrograms of the three guitar parts approximated by NMF. Given a spectrogram, we estimate the note sequences using Gibbs sampling. We show that our model outperforms a state-of-the-art multi-pitch detection method in the accuracy and naturalness of the transcribed scores.
机译:本文介绍了一种统计方法,用于根据典型乐队风格音乐的和弦音频信号估算主音,贝斯和节奏吉他的乐谱。为了执行涉及多音高检测和声部分配的多乐器转录,至关重要的是要建立一个代表每个声部特征的音乐语言模型,以解决声部分配的歧义并估算出自然的乐谱。我们提出了一种阶乘隐式半马尔可夫模型,该模型由与三个吉他声部(三个潜链)相对应的三个语言模型和一个混合声谱图的声学模型(发射模型)组成。节奏吉他的语言模型代表音符的同音序列(和弦序列),主吉他和贝司吉他的语言模型分别代表在较高和较低频率范围内的音符的单音序列。声学模型将频谱图表示为由NMF近似的三个吉他声部的低阶频谱图的总和。给定一个频谱图,我们使用吉布斯采样估计音符序列。我们表明,我们的模型在转录分数的准确性和自然性方面优于最新的多音高检测方法。

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