Title :
Sparsity and Adaptivity for the Blind Separation of Partially Correlated Sources
Author :
Bobin, Jerome ; Rapin, Jeremy ; Larue, Anthony ; Starck, Jean-Luc
Author_Institution :
IRFU, CEA, Gif-sur-Yvette, France
Abstract :
Blind source separation (BSS) is a very popular technique to analyze multichannel data. In this context, the data are modeled as the linear combination of sources to be retrieved. For that purpose, standard BSS methods all rely on some discrimination principle, whether it is statistical independence or morphological diversity, to distinguish between the sources. However, dealing with real-world data reveals that such assumptions are rarely valid in practice: the signals of interest are more likely partially correlated, which generally hampers the performances of standard BSS methods. In this paper, we introduce a novel sparsity-enforcing BSS method coined Adaptive Morphological Component Analysis (AMCA), which is designed to retrieve sparse and partially correlated sources. More precisely, it makes profit of an adaptive re-weighting scheme to favor/penalize samples based on their level of correlation. Extensive numerical experiments have been carried out, which show that the proposed method is robust to the partial correlation of sources while standard BSS techniques fail. The AMCA algorithm is evaluated in the field of astrophysics for the separation of physical components from microwave data.
Keywords :
adaptive signal processing; astronomical techniques; blind source separation; correlation methods; data analysis; statistical analysis; AMCA algorithm; BSS techniques; adaptive morphological component analysis; adaptive reweighting scheme; astrophysics; blind source separation; correlated sources; discrimination principle; microwave data; morphological diversity; multichannel data; partial correlation; physical components; sparsity-enforcing BSS method; statistical independence; Algorithm design and analysis; Blind source separation; Correlation; Signal processing algorithms; Sparse matrices; Standards; Source separation; morphological component analysis; partially correlated sources; sparse representations;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2015.2391071