DocumentCode :
1486910
Title :
Theory of Sparse Coprime Sensing in Multiple Dimensions
Author :
Vaidyanathan, P.P. ; Pal, Piya
Author_Institution :
Dept. of Electr. Eng., California Inst. of Technol., Pasadena, CA, USA
Volume :
59
Issue :
8
fYear :
2011
Firstpage :
3592
Lastpage :
3608
Abstract :
Coprime sampling and coprime sensor arrays have been introduced recently for the one-dimensional (1-D) case, and applications in beamforming and direction finding discussed. A pair of coprime arrays can be used to sample a wide-sense stationary signal sparsely, and then reconstruct the autocorrelation at a significantly denser set of points. All applications based on autocorrelation (e.g., spectrum and DOA estimation) benefit from this property. It was also shown in the past that coprimality can be exploited in the frequency domain by using a pair of coprime DFT filter banks, to produce the effect of a much denser tiling in the frequency domain, compared to what the two filter banks can individually achieve. This paper extends these ideas to multiple dimensions. In the 1-D case the samples or sensors lie on a pair of uniform grids, whereas in the multidimensional case, they lie on a pair of multidimensional lattices, not necessarily rectangular. This makes the developments mathematically more intricate. First several properties of coarrays of lattices are derived. It is shown how one can get dense coarrays from sparse arrays on non rectangular lattices. This requires that the lattice generating matrices M and N be commuting and coprime (to be defined). Multidimensional DFT filter banks for applications such as beamforming, with commuting coprime lattice arrays, are then described, and it is shown that a very dense tiling of the frequency plane can be obtained from the two sparse lattice arrays. A particular family of commuting coprime matrices called adjugate pairs are considered in some detail, and shown to have attractive properties. A brief review of the 1-D case is included at the beginning for convenience.
Keywords :
array signal processing; channel bank filters; correlation methods; discrete Fourier transforms; frequency-domain analysis; lattice filters; matrix algebra; signal reconstruction; signal sampling; adjugate pairs; autocorrelation reconstruction; beamforming; coprime DFT filter bank; coprime lattice array; coprime matrix; coprime sampling; coprime sensor array; denser tiling; direction finding; frequency domain; multidimensional DFT filter bank; multidimensional lattices; nonrectangular lattices; sparse coprime sensing; sparse lattice array; Array signal processing; Correlation; Discrete Fourier transforms; Lattices; Manganese; Passband; Sparse matrices; Coarrays; coprime arrays; lattice arrays; multidimensional arrays; sampling; sparse sensing;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2011.2135348
Filename :
5741759
Link To Document :
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