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Bayesian Drum Transcription Based on Non-negative Matrix Factor Decomposition with a Deep Score Prior

机译:基于非负矩阵因子分解的贝叶斯鼓转录以深度分数

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This paper describes a statistical method of automatic drum transcription that estimates a musical score of bass and snare drums and hi-hats from a drum signal separated from a popular music signal. One of the most effective approaches for this problem is to apply nonnegative matrix factor deconvolution (NMFD) for estimating the temporal activations of drums and then perform thresholding for estimating a drum score. Such a pure audio-based approach, however, cannot avoid musically unnatural scores. To solve this, we propose a unified Bayesian model that integrates an NMFD-based acoustic model evaluating the likelihood of a drum score for a drum spectrogram, with a deep language model serving as a prior (constraint) of the score. The language model can be trained with existing drum scores in the framework of autoencoding variational Bayes and has more expressive power than the conventional statistical models. We derive an inference algorithm using Gibbs sampling, which is a marriage of the solid formalism of Bayesian learning with the expressive power of deep learning. It is shown that the proposed method not only slightly improved the F-measure score but also increased musical naturalness of the transcribed drum scores than NMFD.
机译:本文介绍了一种自动鼓转录的统计方法,其估计低音和陷阱鼓和来自与流行音乐信号分开的鼓信号的高帽的音乐分数。该问题的最有效方法之一是应用非负矩阵因子解卷积(NMFD)来估计鼓的时间激活,然后执行阈值用于估计鼓得分。然而,这种纯粹的基于音频的方法无法避免音乐不自然的分数。为了解决这一点,我们提出了一个统一的贝叶斯模型,该模型集成了基于NMFD的声学模型,评估鼓谱图的鼓得分的可能性,具有作为分数的先前(约束)的深语言模型。语言模型可以在自动编码变分贝内斯的框架中具有现有的鼓得分,并且具有比传统统计模型更具表现力的功率。我们通过Gibbs采样推导了推导算法,这是贝叶斯学习与深度学习的表现力的常规主义的婚姻。结果表明,该方法不仅略微改善了F测量评分,而且还增加了转录的鼓得分的音乐自然度,而不是NMFD。

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