Enhancing sparsity and resolution via reweighted atomic norm minimization

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Abstract

The mathematical theory of super-resolution developed recently by Candès and Fernandes-Granda states that a continuous, sparse frequency spectrum can be recovered with infinite precision via a (convex) atomic norm technique given a set of uniform time-space samples. This theory was then extended to the cases of partial/compressive samples and/or multiple measurement vectors via atomic norm minimization (ANM), known as off-grid/continuous compressed sensing (CCS). However, a major problem of existing atomic norm methods is that the frequencies can be recovered only if they are sufficiently separated, prohibiting commonly known high resolution. In this paper, a novel (nonconvex) sparse metric is proposed that promotes sparsity to a greater extent than the atomic norm. Using this metric an optimization problem is formulated and a locally convergent iterative algorithm is implemented. The algorithm iteratively carries out ANM with a sound reweighting strategy which enhances sparsity and resolution, and is termed as reweighted atomic-norm minimization (RAM). Extensive numerical simulations are carried out to demonstrate the advantageous performance of RAM with application to direction of arrival (DOA) estimation.

Original languageEnglish
Article number7314978
Pages (from-to)995-1006
Number of pages12
JournalIEEE Transactions on Signal Processing
Volume64
Issue number4
DOIs
StatePublished - 15 Feb 2016
Externally publishedYes

Keywords

  • Continuous compressed sensing (CCS)
  • DOA estimation
  • frequency estimation
  • gridless sparse method
  • high resolution
  • reweighted atomic norm minimization (RAM)

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