1-Bit Compressive Sensing: Reformulation and RRSP-Based Sign Recovery Theory
Yun-Bin Zhao, Chunlei XU

TL;DR
This paper introduces a new reformulation and decoding method for 1-bit compressive sensing, establishing conditions under which sparse signal signs can be exactly recovered using a linear-program-based approach.
Contribution
It develops a novel linear programming decoding method and introduces the restricted range space property (RRSP) as a key condition for sign recovery in 1-bit CS.
Findings
Reformulation of 1-bit CS as an $ ext{l}_0$-minimization problem with linear constraints.
Introduction of the 1-bit basis pursuit decoding method.
Identification of the RRSP as a necessary and sufficient condition for sign recovery.
Abstract
Recently, the 1-bit compressive sensing (1-bit CS) has been studied in the field of sparse signal recovery. Since the amplitude information of sparse signals in 1-bit CS is not available, it is often the support or the sign of a signal that can be exactly recovered with a decoding method. In this paper, we first show that a necessary assumption (that has been overlooked in the literature) should be made for some existing theories and discussions for 1-bit CS. Without such an assumption, the found solution by some existing decoding algorithms might be inconsistent with 1-bit measurements. This motivates us to pursue a new direction to develop uniform and nonuniform recovery theories for 1-bit CS with a new decoding method which always generates a solution consistent with 1-bit measurements. We focus on an extreme case of 1-bit CS, in which the measurements capture only the sign of the…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Microwave Imaging and Scattering Analysis · Indoor and Outdoor Localization Technologies
