SDASFeb 9, 2018

Complex ISNMF: a Phase-Aware Model for Monaural Audio Source Separation

arXiv:1802.03156v310 citations
Originality Incremental advance
AI Analysis

This work addresses audio source separation for music processing, representing an incremental improvement over existing phase-aware methods.

The paper tackles monaural audio source separation by introducing a phase-aware probabilistic model that generalizes ISNMF to non-isotropic variables, and experiments show it outperforms state-of-the-art phase-aware techniques on a musical source separation task.

This paper introduces a phase-aware probabilistic model for audio source separation. Classical source models in the short-term Fourier transform domain use circularly-symmetric Gaussian or Poisson random variables. This is equivalent to assuming that the phase of each source is uniformly distributed, which is not suitable for exploiting the underlying structure of the phase. Drawing on preliminary works, we introduce here a Bayesian anisotropic Gaussian source model in which the phase is no longer uniform. Such a model permits us to favor a phase value that originates from a signal model through a Markov chain prior structure. The variance of the latent variables are structured with nonnegative matrix factorization (NMF). The resulting model is called complex Itakura-Saito NMF (ISNMF) since it generalizes the ISNMF model to the case of non-isotropic variables. It combines the advantages of ISNMF, which uses a distortion measure adapted to audio and yields a set of estimates which preserve the overall energy of the mixture, and of complex NMF, which enables one to account for some phase constraints. We derive a generalized expectation-maximization algorithm to estimate the model parameters. Experiments conducted on a musical source separation task in a semi-informed setting show that the proposed approach outperforms state-of-the-art phase-aware separation techniques.

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