TL;DR
This paper introduces POLISH, a learning-based super-resolution method for radio interferometric imaging, enabling super-resolution and deconvolution of real data, with significant implications for cosmology and weak lensing studies.
Contribution
The paper presents POLISH, a neural network approach for radio interferometric imaging that achieves super-resolution and deconvolution, surpassing traditional methods like CLEAN.
Findings
POLISH successfully deconvolves real VLA observations.
POLISH achieves super-resolution beyond the diffraction limit.
Forecasts show POLISH's potential for weak lensing cosmology with DSA-2000.
Abstract
Radio interferometry allows astronomers to probe small spatial scales that are often inaccessible with single-dish instruments. However, recovering the radio sky from an interferometer is an ill-posed deconvolution problem that astronomers have worked on for half a century. More challenging still is achieving resolution below the array's diffraction limit, known as super-resolution imaging. To this end, we have developed a new learning-based approach for radio interferometric imaging, leveraging recent advances in the classical computer vision problems of single-image super-resolution (SISR) and deconvolution. We have developed and trained a high dynamic range residual neural network to learn the mapping between the dirty image and the true radio sky. We call this procedure POLISH, in contrast to the traditional CLEAN algorithm. The feed forward nature of learning-based approaches like…
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