Restricted isometry property of random subdictionaries
Abstract
We study statistical restricted isometry, a property closely related to sparse signal recovery, of deterministic sensing matrices of size m × N. A matrix is said to have a statistical restricted isometry property (StRIP) of order k if most submatrices with k columns define a near-isometric map of Rk into Rm. As our main result, we establish sufficient conditions for the StRIP property of a matrix in terms of the mutual coherence and mean square coherence. We show that for many existing deterministic families of sampling matrices, m=O(k) rows suffice for k-StRIP, which is an improvement over the known estimates of either m = (k N) or m = (k k). We also give examples of matrix families that are shown to have the StRIP property using our sufficient conditions.
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