Fully Bayesian source separation with application to the cosmic microwave background

Loading...
Thumbnail Image

Date

Journal Title

Journal ISSN

Volume Title

Publisher

IEEE

Access

Embargo end date

Citation

Simon P. Wilson, Ercan E. Kuruoglu and Emanuele Salerno `Fully Bayesian source separation with application to the cosmic microwave background? in IEEE Journal of Selected Topics in Signal Processing: special issue on Signal Processing for Astronomical and Space Research Applications, 2, (5), 2008, pp 685 - 696

Abstract

We address the problem of source separation in the presence of prior information. We develop a fully Bayesian source separation technique that assumes a very flexible model for the sources, namely the Gaussian mixture model with an unknown number of factors, and utilize Markov chain Monte Carlo techniques for model parameter estimation. The development of this methodology is motivated by the need to bring an efficient solution to the separation of components in the microwave radiation maps to be obtained by the satellite mission Planck which has the objective of uncovering cosmic microwave background radiation. The proposed algorithm successfully incorporates a rich variety of prior information available to us in this problem in contrast to most of the previous work which assumes completely blind separation of the sources. We report results on realistic simulations of expected Planck maps and on WMAP 5th year results. The technique suggested is easily applicable to other source separation applications by modifying some of the priors. Index Terms?Bayesian source separation, cosmic microwave background (CMB) radiation, Gibbs sampling, Markov chain Monte Carlo, Planck satellite mission.

Description

PUBLISHED

Endorsement

Review

Supplemented By

Referenced By

Keywords

Author's Homepage: http://people.tcd.ie/swilson
Publisher: IEEE
Type of material: Journal Article