This site uses cookies. By continuing to use this site you agree to our use of cookies. To find out more, see our Privacy and Cookies policy.

Sparse representations and convex optimization as tools for LOFAR radio interferometric imaging

, , , , , , and

Published 17 August 2015 © 2015 IOP Publishing Ltd and Sissa Medialab srl
, , Citation J.N. Girard et al 2015 JINST 10 C08013 DOI 10.1088/1748-0221/10/08/C08013

1748-0221/10/08/C08013

Abstract

Compressed sensing theory is slowly making its way to solve more and more astronomical inverse problems. We address here the application of sparse representations, convex optimization and proximal theory to radio interferometric imaging. First, we expose the theory behind interferometric imaging, sparse representations and convex optimization, and second, we illustrate their application with numerical tests with SASIR, an implementation of the FISTA, a Forward-Backward splitting algorithm hosted in a LOFAR imager. Various tests have been conducted in Garsden et al., 2015. The main results are: i) an improved angular resolution (super resolution of a factor ≈ 2) with point sources as compared to CLEAN on the same data, ii) correct photometry measurements on a field of point sources at high dynamic range and iii) the imaging of extended sources with improved fidelity. SASIR provides better reconstructions (five time less residuals) of the extended emission as compared to CLEAN. With the advent of large radiotelescopes, there is scope for improving classical imaging methods with convex optimization methods combined with sparse representations.

Export citation and abstract BibTeX RIS

10.1088/1748-0221/10/08/C08013