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On the gap between RIP-properties and sparse recovery conditions

20 April 2015
S. Dirksen
Guillaume Lecué
Holger Rauhut
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Abstract

We consider the problem of recovering sparse vectors from underdetermined linear measurements via ℓp\ell_pℓp​-constrained basis pursuit. Previous analyses of this problem based on generalized restricted isometry properties have suggested that two phenomena occur if p≠2p\neq 2p=2. First, one may need substantially more than slog⁡(en/s)s \log(en/s)slog(en/s) measurements (optimal for p=2p=2p=2) for uniform recovery of all sss-sparse vectors. Second, the matrix that achieves recovery with the optimal number of measurements may not be Gaussian (as for p=2p=2p=2). We present a new, direct analysis which shows that in fact neither of these phenomena occur. Via a suitable version of the null space property we show that a standard Gaussian matrix provides ℓq/ℓ1\ell_q/\ell_1ℓq​/ℓ1​-recovery guarantees for ℓp\ell_pℓp​-constrained basis pursuit in the optimal measurement regime. Our result extends to several heavier-tailed measurement matrices. As an application, we show that one can obtain a consistent reconstruction from uniform scalar quantized measurements in the optimal measurement regime.

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