PolyCLEAN: Atomic Optimization for Super-Resolution Imaging and Uncertainty Estimation in Radio Interferometry
Adrian Jarret, Sepand Kashani, Joan Ru\'e-Queralt, Paul Hurley, Julien, Fageot, Matthieu Simeoni

TL;DR
PolyCLEAN introduces a scalable convex optimization method for radio interferometric imaging, enabling high-resolution reconstruction and uncertainty quantification, comparable in quality to traditional CLEAN but with enhanced efficiency and probabilistic insights.
Contribution
The paper presents PolyCLEAN, a novel optimization algorithm that improves resolution, scalability, and uncertainty estimation in radio interferometry imaging, integrating Bayesian priors effectively.
Findings
PolyCLEAN scales well for fine-resolution grids.
It produces images comparable to CLEAN in quality.
The dual certificate image aids in uncertainty quantification.
Abstract
Aims: We address two issues for the adoption of convex optimization in radio interferometric imaging. First, a method for a fine resolution setup is proposed which scales naturally in terms of memory usage and reconstruction speed. Second, a new tool to localize a region of uncertainty is developed, paving the way for quantitative imaging in radio interferometry. Methods: The classical penalty is used to turn the inverse problem into a sparsity-promoting optimization. For efficient implementation, the so-called Frank-Wolfe algorithm is used together with a \textit{polyatomic} refinement. The algorithm naturally produces sparse images at each iteration, leveraged to reduce memory and computational requirements. In that regard, PolyCLEAN reproduces the numerical behavior of CLEAN while guaranteeing that it solves the minimization problem of interest. Additionally, we introduce…
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Taxonomy
TopicsCell Image Analysis Techniques · Image Processing Techniques and Applications
