Non-parametric PSF estimation from celestial transit solar images using blind deconvolution
Adriana Gonzalez, V\'eronique Delouille, Laurent Jacques

TL;DR
This paper introduces a non-parametric blind deconvolution method for astronomical images that estimates the PSF without assuming a parametric form, using celestial transit data to improve image clarity and instrument characterization.
Contribution
The proposed method uniquely does not rely on parametric PSF models and applies wavelet-based regularization with celestial transit constraints, enhancing PSF estimation accuracy.
Findings
Successfully estimated PSF for SECCHI/EUVI and SDO/AIA instruments.
Achieved PSF core estimation comparable to parametric methods.
Incorporating parametric PSF estimates improves overall deconvolution results.
Abstract
Context: Characterization of instrumental effects in astronomical imaging is important in order to extract accurate physical information from the observations. The measured image in a real optical instrument is usually represented by the convolution of an ideal image with a Point Spread Function (PSF). Additionally, the image acquisition process is also contaminated by other sources of noise (read-out, photon-counting). The problem of estimating both the PSF and a denoised image is called blind deconvolution and is ill-posed. Aims: We propose a blind deconvolution scheme that relies on image regularization. Contrarily to most methods presented in the literature, our method does not assume a parametric model of the PSF and can thus be applied to any telescope. Methods: Our scheme uses a wavelet analysis prior model on the image and weak assumptions on the PSF. We use observations…
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Taxonomy
TopicsSpectroscopy and Chemometric Analyses · Blind Source Separation Techniques
MethodsConvolution
