Scalable Bayesian uncertainty quantification with data-driven priors for radio interferometric imaging
Tob\'ias I. Liaudat, Matthijs Mars, Matthew A. Price, Marcelo, Pereyra, Marta M. Betcke, Jason D. McEwen

TL;DR
This paper introduces QuantifAI, a scalable Bayesian method for radio interferometric imaging that uses data-driven priors and convex optimization to efficiently quantify uncertainty without MCMC, improving image quality and uncertainty estimates.
Contribution
The work presents a novel Bayesian framework with learned convex priors for high-dimensional radio imaging, enabling fast uncertainty quantification without MCMC sampling.
Findings
Improved image reconstruction quality over benchmark methods.
Fast computation of pixel-wise uncertainties at multiple scales.
Validated uncertainty estimates with MCMC sampling.
Abstract
Next-generation radio interferometers like the Square Kilometer Array have the potential to unlock scientific discoveries thanks to their unprecedented angular resolution and sensitivity. One key to unlocking their potential resides in handling the deluge and complexity of incoming data. This challenge requires building radio interferometric imaging methods that can cope with the massive data sizes and provide high-quality image reconstructions with uncertainty quantification (UQ). This work proposes a method coined QuantifAI to address UQ in radio-interferometric imaging with data-driven (learned) priors for high-dimensional settings. Our model, rooted in the Bayesian framework, uses a physically motivated model for the likelihood. The model exploits a data-driven convex prior, which can encode complex information learned implicitly from simulations and guarantee the log-concavity of…
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Taxonomy
TopicsRadio Astronomy Observations and Technology · Genetic factors in colorectal cancer · Soil Moisture and Remote Sensing
