Title :
Blind Separation of Gaussian Sources With General Covariance Structures: Bounds and Optimal Estimation
Author_Institution :
Sch. of Electr. Eng., Tel-Aviv Univ., Tel-Aviv, Israel
Abstract :
We consider the separation of Gaussian sources exhibiting general, arbitrary (not necessarily stationary) covariance structures. First, assuming a semi-blind scenario, in which the sources´ covariance structures are known, we derive the maximum likelihood estimate of the separation matrix, as well as the induced Cramér-Rao lower bound (iCRLB) on the attainable Interference to Source Ratio (ISR). We then extend our results to the fully blind scenario, in which the covariance structures are unknown. We show that (under a scaling convention) the Fisher information matrix in this case is block-diagonal, implying that the same iCRLB (as in the semi-blind scenario) applies in this case as well. Subsequently, we demonstrate that the same “semi-blind” optimal performance can be approached asymptotically in the “fully blind” scenario if the sources are sufficiently ergodic, or if multiple snapshots are available.
Keywords :
Gaussian processes; blind source separation; covariance analysis; matrix algebra; maximum likelihood estimation; Cramer-Rao lower bound; Fisher information matrix; Gaussian sources; blind separation; general covariance structures; interference to source ratio; maximum likelihood estimate; semiblind optimal performance; separation matrix; Blind source separation; Covariance matrix; Higher order statistics; Independent component analysis; Interference; Maximum likelihood estimation; Permission; Source separation; Spatial resolution; Statistical distributions; Blind source separation; independent component analysis; nonstationarity; second-order statistics; time-varying AR processes;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2010.2053362