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Multi-dimensional signal separation with Gaussian processes

  • CNRS LTCI

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Résumé

Gaussian process (GP) models are widely used in machine learning to account for spatial or temporal relationships between multivariate random variables. In this paper, we propose a formulation of underdetermined source separation in multidimensional spaces as a problem involving GP regression. The advantage of the proposed approach is firstly to provide a flexible means to include a variety of prior information concerning the sources and secondly to lead to minimum mean squared error estimates. We show that if the additive GPs are supposed to be locally-stationary, computations can be done very efficiently in the frequency domain. These findings establish a deep connection between GP and nonnegative tensor factorizations with the Itakura-Saito distance and we show that when the signals are monodimensional, the resulting framework coincides with many popular methods that are based on nonnegative matrix factorization and time-frequency masking.

langue originaleAnglais
titre2011 IEEE Statistical Signal Processing Workshop, SSP 2011
Pages401-404
Nombre de pages4
Les DOIs
étatPublié - 5 sept. 2011
Modification externeOui
Evénement2011 IEEE Statistical Signal Processing Workshop, SSP 2011 - Nice, France
Durée: 28 juin 201130 juin 2011

Série de publications

NomIEEE Workshop on Statistical Signal Processing Proceedings

Une conférence

Une conférence2011 IEEE Statistical Signal Processing Workshop, SSP 2011
Pays/TerritoireFrance
La villeNice
période28/06/1130/06/11

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