Title :
ICAR: a tool for blind source separation using fourth-order statistics only
Author :
Albera, Laurent ; Ferréol, Anne ; Chevalier, Pascal ; Comon, Pierre
Author_Institution :
LTSI, Univ. de Rennes, France
Abstract :
The problem of blind separation of overdetermined mixtures of sources, that is, with fewer sources than (or as many sources as) sensors, is addressed in this paper. A new method, called Independent Component Analysis using Redundancies in the quadricovariance (ICAR), is proposed in order to process complex data. This method, without any whitening operation, only exploits some redundancies of a particular quadricovariance matrix of the data. Computer simulations demonstrate that ICAR offers in general good results and even outperforms classical methods in several situations: ICAR i) succeeds in separating sources with low signal-to-noise ratios, ii) does not require sources with different second-order or/and first-order spectral densities, iii) is asymptotically not affected by the presence of a Gaussian noise with unknown spatial correlation, iv) is not sensitive to an over estimation of the number of sources.
Keywords :
Gaussian noise; blind source separation; covariance matrices; higher order statistics; independent component analysis; Gaussian noise; ICAR; blind source separation; fourth-order statistics; independent component analysis using redundancies; overdetermined mixtures; quadricovariance matrix; Biosensors; Blind source separation; Electrocardiography; Independent component analysis; Sensor arrays; Sensor phenomena and characterization; Source separation; Speech analysis; Statistical analysis; Statistics; Blind source separation; fourth-order statistics; independent component analysis; overdetermined mixtures;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2005.855089