Poster + Paper
29 August 2022 Towards robust deconvolution of hyperspectral data cubes
Author Affiliations +
Conference Poster
Abstract
One crucial aspect for the science observations assisted by Adaptive Optics (AO) is the knowledge of the Point Spread Function (PSF). The PSF delivered by AO systems has a complex shape, combining spatial, spectral and temporal variability, such that its characterization is often a major limitation when analyzing AO data. The absence of reference calibrators is also common in cases like extended objects and very crowded regions. This paper presents a post-processing method (called AMIRAL) derived from blind deconvolution, which allows us to estimate the AO-PSF directly from scientific observations. AMIRAL uses an analytical PSF model (PSFAO19) and simplifies the estimation down to a few parameters. The resultant PSF is used to perform deconvolution. We first evaluate the performance of AMIRAL for PSFs retrieval with simulated data in different parameters. Then, we present a new feature by introducing a Fourier-based object model. Taking advantage of having a more realistic representation of the object, we improve both the performance and robustness of the PSF estimation, and the consequent deconvolution process. This performance gain is eventually illustrated with real observations of the asteroid Kleopatra acquired by VLT-SPHERE.
© (2022) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Alexis Lau, Benoit Neichel, Romain Fetick, and Thierry Fusco "Towards robust deconvolution of hyperspectral data cubes", Proc. SPIE 12185, Adaptive Optics Systems VIII, 121853T (29 August 2022); https://doi.org/10.1117/12.2627735
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KEYWORDS
Point spread functions

Deconvolution

Adaptive optics

Asteroids

Image processing

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