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Publications

Fast Approximate Joint Diagonalization Incorporating Weight Matrices

Typ:
Jornal article
Authors:
Tichavský P., Yeredor A.
Name of journal:
IEEE Transactions on Signal Processing
Year:
2009
Number:
3 (2009)
Pages:
878-891
ISSN:
1053-587X
Keywords:
autoregressive processes, blind source separation, nonstatio
Anotation:
We propose a new low complexity Approximate Joint Diagonalization (AJD) algorithm, which incorporates nontrivial block-diagonal weight matrices into a Weighted Least-Squares (WLS) AJD criterion. We show how the new algorithm can be utilized in an iteratively-reweighted separation scheme, thereby giving rise to fast implementation of asymptotically optimal BSS algorithms in various scenarios. In particular, we consider three specific (yet common) scenarios, involving stationary or block-stationary Gaussian sources, for which the optimal weight matrices can be readily estimated from the sample covariance matrices (which are also the target-matrices for the AJD). Comparative simulation results demonstrate the advantages in both speed and accuracy, as well as compliance with the theoretically predicted asymptotic optimality of the resulting BSS algorithms based on the weighted AJD, both on large scale problems with matrices of the size 100 x 100.
 
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