Universal 1-Bit Compressive Sensing for Bounded Dynamic Range Signals
Abstract
A universal 1-bit compressive sensing (CS) scheme consists of a measurement matrix A such that all signals x belonging to a particular class can be approximately recovered from sign(Ax). 1-bit CS models extreme quantization effects where only one bit of information is revealed per measurement. We focus on universal support recovery for 1-bit CS in the case of sparse signals with bounded dynamic range. Specifically, a vector x ∈ Rn is said to have sparsity k if it has at most k nonzero entries, and dynamic range R if the ratio between its largest and smallest nonzero entries is at most R in magnitude. Our main result shows that if the entries of the measurement matrix A are i.i.d.~Gaussians, then under mild assumptions on the scaling of k and R, the number of measurements needs to be (Rk3/2) to recover the support of k-sparse signals with dynamic range R using 1-bit CS. In addition, we show that a near-matching O(R k3/2 n) upper bound follows as a simple corollary of known results. The k3/2 scaling contrasts with the known lower bound of (k2 n) for the number of measurements to recover the support of arbitrary k-sparse signals.
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