Gain estimation approaches in catalog-based single-channel speech-music separation

Cemil Demir, A. Cemgil, M. Saraçlar
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引用次数: 5

Abstract

In this study, we analyze the gain estimation problem of the catalog-based single-channel speech-music separation method, which we proposed previously. In the proposed method, assuming that we know a catalog of the background music, we developed a generative model for the superposed speech and music spectrograms. We represent the speech spectrogram by a Non-Negative Matrix Factorization (NMF) model and the music spectrogram by a conditional Poisson Mixture Model (PMM). In this model, we assume that the background music is generated by repeating and changing the gain of the jingle in the music catalog. Although the separation performance of the proposed method is satisfactory with known gain values, the performance decreases when the gain value of the jingle is unknown and has to be estimated. In this paper, we address the gain estimation problem of the catalog-based method and propose three different approaches to overcome this problem. One of these approaches is to use Gamma Markov Chain (GMC) probabilistic structure to impose the correlation between the gain parameters across the time frames. By using GMC, the gain parameter is estimated more accurately. The other approaches are maximum a posteriori (MAP) and piece-wise constant estimation (PCE) of the gain values. Although all three methods improve the separation performance as compared to the original method itself, GMC approach achieved the best performance.
基于目录的单通道语音-音乐分离增益估计方法
在本研究中,我们分析了先前提出的基于目录的单通道语音音乐分离方法的增益估计问题。在提出的方法中,假设我们知道背景音乐的目录,我们开发了一个叠加语音和音乐谱图的生成模型。我们用非负矩阵分解(NMF)模型表示语音谱图,用条件泊松混合模型(PMM)表示音乐谱图。在这个模型中,我们假设背景音乐是通过重复和改变音乐目录中叮当声的增益来生成的。当增益已知时,该方法的分离性能令人满意,但当增益未知且需要估计时,分离性能下降。在本文中,我们讨论了基于目录的方法的增益估计问题,并提出了三种不同的方法来克服这个问题。其中一种方法是使用伽玛马尔可夫链(GMC)概率结构来施加增益参数在时间框架之间的相关性。利用GMC可以更准确地估计增益参数。其他方法是增益值的最大后验估计(MAP)和分段常数估计(PCE)。虽然这三种方法都比原始方法本身提高了分离性能,但GMC方法取得了最好的性能。
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