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Universal 1-Bit Compressive Sensing for Bounded Dynamic Range Signals

22 February 2022
Sidhant Bansal
Arnab Bhattacharyya
Anamay Chaturvedi
Jonathan Scarlett
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Abstract

A {\em universal 1-bit compressive sensing (CS)} scheme consists of a measurement matrix AAA such that all signals xxx belonging to a particular class can be approximately recovered from sign(Ax)\textrm{sign}(Ax)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 {\em sparse} signals with bounded {\em dynamic range}. Specifically, a vector x∈Rnx \in \mathbb{R}^nx∈Rn is said to have sparsity kkk if it has at most kkk nonzero entries, and dynamic range RRR if the ratio between its largest and smallest nonzero entries is at most RRR in magnitude. Our main result shows that if the entries of the measurement matrix AAA are i.i.d.~Gaussians, then under mild assumptions on the scaling of kkk and RRR, the number of measurements needs to be Ω~(Rk3/2)\tilde{\Omega}(Rk^{3/2})Ω~(Rk3/2) to recover the support of kkk-sparse signals with dynamic range RRR using 111-bit CS. In addition, we show that a near-matching O(Rk3/2log⁡n)O(R k^{3/2} \log n)O(Rk3/2logn) upper bound follows as a simple corollary of known results. The k3/2k^{3/2}k3/2 scaling contrasts with the known lower bound of Ω~(k2log⁡n)\tilde{\Omega}(k^2 \log n)Ω~(k2logn) for the number of measurements to recover the support of arbitrary kkk-sparse signals.

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