Improved Lower Bounds for the Restricted Isometry Property of Subsampled Fourier Matrices
Abstract
Let A be an N × N Fourier matrix over FpN/p for some prime p. We improve upon known lower bounds for the number of rows of A that must be sampled so that the resulting matrix M satisfies the restricted isometry property for k-sparse vectors. This property states that \|Mv\|22 is approximately \|v\|22 for all k-sparse vectors v. In particular, if k = ( 2N), we show that (kkN/p) rows must be sampled to satisfy the restricted isometry property with constant probability.
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