Improved prior for adaptive optics point spread function estimation from science images: Application for deconvolution
A. Lau, R. JL. F\'etick, B. Neichel, O. Beltramo-Martin, T. Fusco

TL;DR
This paper presents an improved method for estimating the PSF in adaptive optics images, enhancing deconvolution accuracy for extended objects by refining the object prior in a two-step blind deconvolution process.
Contribution
The authors introduce a new object prior model that improves PSF estimation accuracy in adaptive optics data, especially for resolved extended objects.
Findings
Enhanced PSF estimation leads to better deconvolution results.
Method performs well with realistic system configurations and Solar System objects.
Validated on SPHERE/ZIMPOL observations of the Kleopatra asteroid.
Abstract
Access to knowledge of the point spread function (PSF) of adaptive optics(AO)-assisted observations is still a major limitation when processing AO data. This limitation is particularly important when image analysis requires the use of deconvolution methods. As the PSF is a complex and time-varying function, reference PSFs acquired on calibration stars before or after the scientific observation can be too different from the actual PSF of the observation to be used for deconvolution, and lead to artefacts in the final image. We improved the existing PSF-estimation method based on the so-called marginal approach by enhancing the object prior in order to make it more robust and suitable for observations of resolved extended objects. Our process is based on a two-step blind deconvolution approach from the literature. The first step consists of PSF estimation from the science image. For this,…
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Taxonomy
TopicsAdaptive optics and wavefront sensing · Stellar, planetary, and galactic studies · Calibration and Measurement Techniques
