# Scalable precision wide-field imaging in radio interferometry: II. AIRI   validated on ASKAP data

**Authors:** Amanda G. Wilber, Arwa Dabbech, Matthieu Terris, Adrian Jackson and, Yves Wiaux

arXiv: 2302.14149 · 2023-09-11

## TL;DR

This paper validates the AIRI algorithm for radio interferometric imaging on ASKAP data, demonstrating improved reconstruction quality, faster processing, and the ability to quantify model uncertainty compared to previous methods.

## Contribution

It introduces a Plug-and-Play approach with trained DNN denoisers in AIRI, enhancing image quality and computational speed, and enabling uncertainty quantification in radio interferometry imaging.

## Key findings

- AIRI outperforms uSARA and WSClean in diffuse flux reconstruction.
- AIRI achieves four times faster deconvolution than uSARA.
- AIRI provides more accurate spectral index maps.

## Abstract

Accompanying Part I, this sequel delineates a validation of the recently proposed AI for Regularisation in radio-interferometric Imaging (AIRI) algorithm on observations from the Australian Square Kilometre Array Pathfinder (ASKAP). The monochromatic AIRI-ASKAP images showcased in this work are formed using the same parallelised and automated imaging framework described in Part I: ``uSARA validated on ASKAP data''. Using a Plug-and-Play approach, AIRI differs from uSARA by substituting a trained denoising deep neural network (DNN) for the proximal operator in the regularisation step of the forward-backward algorithm during deconvolution. We build a trained shelf of DNN denoisers which target the estimated image-dynamic-ranges of our selected data. Furthermore, we quantify variations of AIRI reconstructions when selecting the nearest DNN on the shelf versus using a universal DNN with the highest dynamic range, opening the door to a more complete framework that not only delivers image estimation but also quantifies epistemic model uncertainty. We continue our comparative analysis of source structure, diffuse flux measurements, and spectral index maps of selected target sources as imaged by AIRI and the algorithms in Part I -- uSARA and WSClean. Overall we see an improvement over uSARA and WSClean in the reconstruction of diffuse components in AIRI images. The scientific potential delivered by AIRI is evident in further imaging precision, more accurate spectral index maps, and a significant acceleration in deconvolution time, whereby AIRI is four times faster than its sub-iterative sparsity-based counterpart uSARA.

## Full text

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## Figures

5 figures with captions in the complete paper: https://tomesphere.com/paper/2302.14149/full.md

## References

27 references — full list in the complete paper: https://tomesphere.com/paper/2302.14149/full.md

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Source: https://tomesphere.com/paper/2302.14149