Title :
Orthogonal Matching Pursuit: A Brownian Motion Analysis
Author :
Fletcher, Alyson K. ; Rangan, Sundeep
Author_Institution :
Dept. of Electr. Eng. & Comput. Sci., Univ. of California, Berkeley, CA, USA
fDate :
3/1/2012 12:00:00 AM
Abstract :
A well-known analysis of Tropp and Gilbert shows that orthogonal matching pursuit (OMP) can recover a k-sparse n-dimensional real vector from m=4klog(n) noise-free linear measurements obtained through a random Gaussian measurement matrix with a probability that approaches one as n→∞. This work strengthens this result by showing that a lower number of measurements, m=2klog(n-k) , is in fact sufficient for asymptotic recovery. More generally, when the sparsity level satisfies kmin ≤ k ≤ kmax but is unknown, m=2kmaxlog(n-kmin) measurements is sufficient. Furthermore, this number of measurements is also sufficient for detection of the sparsity pattern (support) of the vector with measurement errors provided the signal-to-noise ratio (SNR) scales to infinity. The scaling m=2klog(n-k) exactly matches the number of measurements required by the more complex lasso method for signal recovery with a similar SNR scaling.
Keywords :
approximation theory; image matching; matrix algebra; motion estimation; probability; Brownian motion analysis; OMP; SNR; approximate methods; k-sparse n-dimensional real vector; measurement errors; noise-free linear measurements; orthogonal matching pursuit; probability; random Gaussian measurement matrix; signal recovery; signal-to-noise ratio; wavelet-based image processing; Algorithm design and analysis; Correlation; Matching pursuit algorithms; Noise measurement; Signal to noise ratio; Vectors; Compressed sensing; detection; lasso; orthogonal matching pursuit (OMP); random matrices; sparse approximation; sparsity; subset selection;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2011.2176936