SDASJan 16, 2021

Minimum-volume Multichannel Nonnegative matrix factorization for blind source separation

arXiv:2101.06398v2
AI Analysis

This work addresses blind source separation for audio processing, offering an incremental improvement over state-of-the-art techniques.

The paper tackles the problem of blind audio source separation by enhancing identifiability with a minimum-volume prior distribution, resulting in improved performance compared to existing methods like ILRMA and MNMF.

Multichannel blind audio source separation aims to recover the latent sources from their multichannel mixtures without supervised information. One state-of-the-art blind audio source separation method, named independent low-rank matrix analysis (ILRMA), unifies independent vector analysis (IVA) and nonnegative matrix factorization (NMF). However, the spectra matrix produced from NMF may not find a compact spectral basis. It may not guarantee the identifiability of each source as well. To address this problem, here we propose to enhance the identifiability of the source model by a minimum-volume prior distribution. We further regularize a multichannel NMF (MNMF) and ILRMA respectively with the minimum-volume regularizer. The proposed methods maximize the posterior distribution of the separated sources, which ensures the stability of the convergence. Experimental results demonstrate the effectiveness of the proposed methods compared with auxiliary independent vector analysis, MNMF, ILRMA and its extensions.

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