Error-Correction for Sparse Support Recovery Algorithms
Mohammad Mehrabi, Aslan Tchamkerten

TL;DR
This paper introduces LiRE, an error-correction module that enhances support recovery algorithms in compressed sensing, reducing measurement requirements and improving accuracy, especially when algorithms like OMP make errors.
Contribution
LiRE is a novel, simple error-correction method that can be added to existing algorithms to improve support recovery performance in compressed sensing.
Findings
LiRE guarantees support recovery under certain conditions.
LiRE reduces measurement needs for perfect recovery.
LiRE improves speed and accuracy when combined with OMP.
Abstract
Consider the compressed sensing setup where the support of an -sparse -dimensional signal is to be recovered from linear measurements with a given algorithm. Suppose that the measurements are such that the algorithm does not guarantee perfect support recovery and that true features may be missed. Can they efficiently be retrieved? This paper addresses this question through a simple error-correction module referred to as LiRE. LiRE takes as input an estimate of the true support , and outputs a refined support estimate . In the noiseless measurement setup, sufficient conditions are established under which LiRE is guaranteed to recover the entire support, that is contains . These conditions imply, for instance, that in the high-dimensional regime LiRE can correct a sublinear in number of errors made by Orthogonal Matching…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Blind Source Separation Techniques · Photoacoustic and Ultrasonic Imaging
