Improved bounds for sparse recovery from subsampled random convolutions

Abstract

We study the recovery of sparse vectors from subsampled random convolutions via 1-minimization. We consider the setup in which both the subsampling locations as well as the generating vector are chosen at random. For a subgaussian generator with independent entries, we improve previously known estimates: if the sparsity s is small enough, i.e., s n/(n), we show that m s (en/s) measurements are sufficient to recover s-sparse vectors in dimension n with high probability, matching the well-known condition for recovery from standard Gaussian measurements. If s is larger, then essentially m ≥ s 2(s) ((s)) (n) measurements are sufficient, again improving over previous estimates. Our results are shown via the so-called robust null space property which is weaker than the standard restricted isometry property. Our method of proof involves a novel combination of small ball estimates with chaining techniques which should be of independent interest.

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