Superfast Line Spectral Estimation

Thomas Lundgaard Hansen, Bernard Henri Fleury, Bhaskar D. Rao

Research output: Contribution to journalJournal articleResearchpeer-review

38 Citations (Scopus)
202 Downloads (Pure)

Abstract

A number of recent works have proposed to solve the line spectral estimation problem by applying off-the-grid extensions of sparse estimation techniques. These methods are preferable over classical line spectral estimation algorithms because they inherently estimate the model order. However, they all have computation times that grow at least cubically in the problem size, thus limiting their practical applicability in cases with large dimensions. To alleviate this issue, we propose a low-complexity method for line spectral estimation, which also draws on ideas from sparse estimation. Our method is based on a Bayesian view of the problem. The signal covariance matrix is shown to have Toeplitz structure, allowing superfast Toeplitz inversion to be used. We demonstrate that our method achieves estimation accuracy at least as good as current methods and that it does so while being orders of magnitudes faster
Original languageEnglish
JournalI E E E Transactions on Signal Processing
Volume66
Issue number10
Pages (from-to)2511-2526
Number of pages16
ISSN1053-587X
DOIs
Publication statusPublished - 19 Feb 2018

Keywords

  • Bernoulli-Gaussian model
  • Parameter estimation
  • Toeplitz matrices
  • computational efficiency
  • line spectral estimation
  • sparse estimation
  • super-resolution

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