DocumentCode :
1680968
Title :
A gradient-like variational Bayesian approach for joint image super-resolution and source separation, application to astrophysical map-making
Author :
Ayasso, H. ; Rodet, Thomas ; Abergel, A. ; Dassas, Karin
Author_Institution :
Dept. Image Signal, Univ. Joseph Fourier, St. Martin d´Hères, France
fYear :
2013
Firstpage :
5830
Lastpage :
5834
Abstract :
In this work, a new unsupervised Bayesian method for joint image super-resolution and component separation is introduced. More precisely, we are interested in super-resolution for astrophysical map-making and separation between extended and point emissions. This is tackled as an inverse problem in a Bayesian framework, where a Markovian model is used as a prior for the extended emission and a student´s t-distribution is attributed for the point sources component. All model and noise parameters are unknown, therefore we chose to estimate them jointly with the images. Nevertheless, both Joint Maximum A Posteriori (JMAP) and Posterior Mean (PM) estimators are intractable. Hence, we propose to approximate the true posterior by free-form separable distribution using a gradient-like variational Bayesian approach, which allows a joint update of the shape parameters of the approximating marginals. Applications on simulated and real datasets, obtained from Herschel space observatory, show a good quality of reconstruction. Furthermore, compared to conventional methods, our method gives a higher resolution while conserving photometery and reducing noise.
Keywords :
Bayes methods; Markov processes; image resolution; maximum likelihood estimation; source separation; Herschel space observatory; JMAP estimators; Markovian model; PM estimators; astrophysical map-making; component separation; gradient-like variational Bayesian approach; joint image super-resolution; joint maximum a posteriori estimators; photometery; point sources component; posterior mean estimators; source separation; student´s t-distribution; unsupervised Bayesian method; Abstracts; Image resolution; Bayesian methods; Super-resolution; Variational Bayesian; astrophysics; source separation;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Acoustics, Speech and Signal Processing (ICASSP), 2013 IEEE International Conference on
Conference_Location :
Vancouver, BC
ISSN :
1520-6149
Type :
conf
DOI :
10.1109/ICASSP.2013.6638782
Filename :
6638782
Link To Document :
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