Robust Instance Optimal Phase-Only Compressed Sensing

Abstract

Phase-only compressed sensing (PO-CS) concerns the recovery of sparse signals from the phases of complex measurements. Recent results show that sparse signals in the standard sphere Sn-1 can be exactly recovered from complex Gaussian phases by a linearization procedure, which recasts PO-CS as linear compressed sensing and then applies (quadratically constrained) basis pursuit to obtain x. This paper focuses on the instance optimality and robustness of x. First, we strengthen the nonuniform instance optimality of Jacques and Feuillen (2021) to a uniform one over the entire signal space. We show the existence of some universal constant C such that \|x-x\|2 Cs-1/2σ_1(x,ns) holds for all x in the unit Euclidean sphere, where σ_1(x,ns) is the 1 distance of x to its closest s-sparse signal. This is achieved by showing the new sensing matrices corresponding to all approximately sparse signals simultaneously satisfy RIP. Second, we investigate the estimator's robustness to noise and corruption. We show that dense noise with entries bounded by some small τ0, appearing either prior or posterior to retaining the phases, increments \|x-x\|2 by O(τ0). This is near-optimal (up to log factors) for any algorithm. On the other hand, adversarial corruption, which changes an arbitrary ζ0-fraction of the measurements to any phase-only values, increments \|x-x\|2 by O(ζ0(1/ζ0)). The developments are then combined to yield a robust instance optimal guarantee that resembles the standard one in linear compressed sensing.

0

Turn this paper into a lesson

ArcXiv compiles a structured reading guide from this paper's metadata: plain-English importance, contributions, prerequisite concepts, which sections to read first, flashcards, and a quiz. Grounded in the abstract, never invented.

Discussion (0)

Sign in to join the discussion.

Loading comments…