One-bit compressed sensing with partial Gaussian circulant matrices

Abstract

In this paper we consider memoryless one-bit compressed sensing with randomly subsampled Gaussian circulant matrices. We show that in a small sparsity regime and for small enough accuracy δ, m δ-4 s(N/sδ) measurements suffice to reconstruct the direction of any s-sparse vector up to accuracy δ via an efficient program. We derive this result by proving that partial Gaussian circulant matrices satisfy an 1/2 RIP-property. Under a slightly worse dependence on δ, we establish stability with respect to approximate sparsity, as well as full vector recovery results.

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