DocumentCode :
3603792
Title :
Restricted Isometry Property on Banded Block Toeplitz Matrices with Application to Multi-Channel Convolutive Source Separation
Author :
Dehghan, Hoda ; Dansereau, Richard M. ; Chan, Adrian D. C.
Author_Institution :
Dept. of Syst. & Comput. Eng., Carleton Univ., Ottawa, ON, Canada
Volume :
63
Issue :
21
fYear :
2015
Firstpage :
5665
Lastpage :
5676
Abstract :
In compressive sensing (CS), the restricted isometry property (RIP) is an important condition on measurement matrices which guarantees the recovery of sparse signals with undersampled measurements. It has been proved in the prior works that both random (e.g., i.i.d. Gaussian, Bernoulli, ...) and Toeplitz matrices satisfy the RIP with high probability. However, structured matrices, such as banded Toeplitz matrices have drawn more attention since their structures have the advantage of fast matrix multiplication which may decrease the computational complexity of recovery algorithms. In this paper, we show that banded block Toeplitz matrices satisfy the RIP condition with high probability. Banded block Toeplitz matrices can be used in the sparse multi-channel source separation. The banded block Toeplitz matrices decrease the computational complexity while they have fewer number of non-zero entries in comparison to the same dimensional banded Toeplitz matrices. Furthermore, our simulation results show that banded block Toeplitz matrices outperform banded Toeplitz matrices in signal estimation. The analytical RIP bound for banded block Toeplitz matrices is provided in this paper and the RIP bound of sparse Gaussian matrices is also obtained as an upper bound for banded block Toeplitz matrices. Our simulation and analytical results show that sparse Gaussian random matrices do satisfy the RIP condition with high probability. The probability of satisfying the RIP depends on the probability of zero entries.
Keywords :
Toeplitz matrices; compressed sensing; computational complexity; convolution; matrix multiplication; probability; source separation; sparse matrices; banded block Toeplitz matrix; compressive sensing; computational complexity; matrix multiplication; probability; restricted isometry property; signal estimation; sparse Gaussian random matrx; sparse multichannel convolutive source separation; sparse signal recovery; Compressed sensing; Computational complexity; Electromyography; Matrix decomposition; Source separation; Sparse matrices; Time-domain analysis; Banded block Toeplitz matrices; compressed sensing; restricted isometry property; sparse Gaussian random matrices;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2015.2457391
Filename :
7160757
Link To Document :
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