Sparse Estimation Using Bayesian Hierarchical Prior Modeling for Real and Complex Linear Models

Niels Lovmand Pedersen, Carles Navarro Manchón, Mihai Alin Badiu, Dmitriy Shutin, Bernard Henri Fleury

Research output: Contribution to journalJournal articleResearchpeer-review

35 Citations (Scopus)
132 Downloads (Pure)

Abstract

In sparse Bayesian learning (SBL), Gaussian scale mixtures (GSMs) have been used to model sparsity-inducing priors that realize a class of concave penalty functions for the regression task in real-valued signal models. Motivated by the relative scarcity of formal tools for SBL in complex-valued models, this paper proposes a GSM model - the Bessel K model - that induces concave penalty functions for the estimation of complex sparse signals. The properties of the Bessel K model are analyzed when it is applied to Type I and Type II estimation. This analysis reveals that, by tuning the parameters of the mixing pdf different penalty functions are invoked depending on the estimation type used, the value of the noise variance, and whether real or complex signals are estimated. Using the Bessel K model, we derive a sparse estimator based on a modification of the expectation-maximization algorithm formulated for Type II estimation. The estimator includes as a special instance the algorithms proposed by Tipping and Faul [1] and by Babacan et al. [2]. Numerical results show the superiority of the proposed estimator over these state-of-the-art estimators in terms of convergence speed, sparseness, reconstruction error, and robustness in low and medium signal-to-noise ratio regimes.
Original languageEnglish
JournalSignal Processing
Volume115
Pages (from-to)94-109
Number of pages16
ISSN0165-1684
DOIs
Publication statusPublished - Oct 2015

Keywords

  • Sparse Bayesian learning, Sparse signal representations, Underdetermined linear systems, Hierarchical Bayesian Modeling, Sparsity-inducing priors

Fingerprint

Dive into the research topics of 'Sparse Estimation Using Bayesian Hierarchical Prior Modeling for Real and Complex Linear Models'. Together they form a unique fingerprint.

Cite this