Blind and robust estimation of adaptive optics point spread function and diffuse halo with sharp-edged objects
Anthony Berdeu (LESIA, NARIT)

TL;DR
This paper introduces a blind deconvolution method to accurately estimate and remove the AO-corrected PSF and halo from astronomical images, enhancing the detection of faint objects like moons and surface details.
Contribution
The novel approach blindly recovers the AO-PSF and its structured extensions directly from data without prior instrument knowledge, improving image clarity and feature detection.
Findings
Method validated on realistic simulations and real AO data.
Significant improvement in image sharpness and detail retrieval.
Successful detection of moons despite turbulence variability.
Abstract
Context . Initially designed to detect and characterise exoplanets, extreme adaptive optics (AO) systems open a new window onto the Solar System by resolving its small bodies. Nonetheless, their study remains limited by the accuracy of the knowledge of the AO-corrected point spread function (AO-PSF) that degrades their image and produces a bright halo, potentially hiding faint moons in their close vicinity. Aims . To overcome the random nature of AO-PSFs, I aim to develop a method that blindly recovers the PSF and its faint structured extensions directly into the data of interest, without any prior on the instrument or the object's shape. The objectives are both to deconvolve the object and to properly estimate and remove its surrounding halo to highlight potential faint companions. Methods . My method first estimated the PSF core via a parametric model fit, under the assumption of a…
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Taxonomy
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