Comparison of classical and Bayesian imaging in radio interferometry. Cygnus A with CLEAN and resolve
Abstract
CLEAN, the commonly employed imaging algorithm in radio interferometry, suffers from a number of shortcomings: In its basic version, it does not have the concept of diffuse flux, and the common practice of convolving the CLEAN components with the CLEAN beam erases the potential for super-resolution; it does not output uncertainty information; it produces images with unphysical negative flux regions; and its results are highly dependent on the so-called weighting scheme as well as on any human choice of CLEAN masks for guiding the imaging. Here, we present the Bayesian imaging algorithm resolve , which solves the above problems and naturally leads to super-resolution. We take a VLA observation of Cygnus A at four different frequencies and image it with single-scale CLEAN, multi-scale CLEAN, and resolve. Alongside the sky brightness distribution, resolve estimates a baseline-dependent correction function for the noise budget, the Bayesian equivalent of a weighting scheme. We report noise correction factors between 0.4 and 429. The enhancements achieved by resolve come at the cost of higher computational effort.
- Publication:
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Astronomy and Astrophysics
- Pub Date:
- February 2021
- DOI:
- 10.1051/0004-6361/202039258
- Bibcode:
- 2021A&A...646A..84A
- Keywords:
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- techniques: interferometric;
- methods: statistical;
- methods: data analysis;
- instrumentation: interferometers