Iteratively reweighted algorithms for compressive sensing

Los Alamos National Laboratory · Rice University

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Abstract

The theory of compressive sensing has shown that sparse signals can be reconstructed exactly from many fewer measurements than traditionally believed necessary. In [1], it was shown empirically that using ℓ p minimization with p ≪ 1 can do so with fewer measurements than with p = 1. In this paper we consider the use of iteratively reweighted algorithms for computing local minima of the nonconvex problem. In particular, a particular regularization strategy is found to greatly improve the ability of a reweighted least-squares algorithm to recover sparse signals, with exact recovery being observed for signals that are much less sparse than required by an unregularized version (such as FOCUSS, [2]). Improvements…

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1,246
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Authors

2

Topics & keywords

Keywords
  • Compressed sensing
  • Minification
  • Algorithm
  • Maxima and minima
  • Regularization (linguistics)
  • Iteratively reweighted least squares
  • Computer science
  • Mathematics
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