多通道HR-NMF在时频域模拟非平稳信号的卷积混合

R. Badeau, Mark D. Plumbley
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引用次数: 7

摘要

在非负矩阵分解(NMF)的文献中,已经提出了几个涉及潜在分量的概率模型,用于模拟音频信号(如频谱图)的时频(TF)表示。其中,最近的高分辨率NMF (HR-NMF)模型能够同时考虑每个频带的相位和局部相关性,其潜力已在源分离和音频修复等应用中得到证明。本文将HR-NMF扩展到多通道信号和卷积混合信号。提出了一种快速变分期望最大化(EM)算法对增强模型进行估计。将该算法应用于一个立体声钢琴信号,证明了该算法能够准确地模拟混响并恢复缺失的观测值。
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Multichannel HR-NMF for modelling convolutive mixtures of non-stationary signals in the time-frequency domain
Several probabilistic models involving latent components have been proposed for modelling time-frequency (TF) representations of audio signals (such as spectrograms), notably in the nonnegative matrix factorization (NMF) literature. Among them, the recent high resolution NMF (HR-NMF) model is able to take both phases and local correlations in each frequency band into account, and its potential has been illustrated in applications such as source separation and audio inpainting. In this paper, HR-NMF is extended to multichannel signals and to convolutive mixtures. A fast variational expectation-maximization (EM) algorithm is proposed to estimate the enhanced model. This algorithm is applied to a stereophonic piano signal, and proves capable of accurately modelling reverberation and restoring missing observations.
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