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Project Team Sierra


Overall Objectives
Application Domains
Bibliography


Project Team Sierra


Overall Objectives
Application Domains
Bibliography


Section: New Results

Itakura-Saito Nonnegative Matrix Factorization with group sparsity

Participants : Augustin Lefèvre, Francis Bach.

Collaboration with: Cédric Févotte (Laboratoire traitement et communication de l'information (LTCI), CNRS: UMR5141 – Institut Télécom – Télécom ParisTech).

In [18] , we propose an unsupervised inference procedure for audio source separation. Components in nonnegative matrix factorization (NMF) are grouped automatically in audio sources via a penalized maximum likelihood approach. The penalty term we introduce favors sparsity at the group level, and is motivated by the assumption that the local amplitude of the sources are independent. Our algorithm extends multiplicative updates for NMF; moreover we propose a test statistic to tune hyperparameters in our model, and illustrate its adequacy on synthetic data. Results on real audio tracks show that our sparsity prior allows to identify audio sources without knowledge on their spectral properties.