TL;DR
This paper introduces a deep learning-based method using generative adversarial networks to objectively assess the quality of solar full-disk H-alpha images, effectively identifying anomalies and degraded regions without reference images.
Contribution
The study develops a novel neural network approach employing adversarial training for image quality assessment of solar observations, capable of detecting various atmospheric and instrumental effects.
Findings
Achieves 98.5% accuracy in quality classification
Provides a continuous quality measure aligned with human perception
Effectively identifies degraded regions in solar images
Abstract
In order to assure a stable series of recorded images of sufficient quality for further scientific analysis, an objective image quality measure is required. Especially when dealing with ground-based observations, which are subject to varying seeing conditions and clouds, the quality assessment has to take multiple effects into account and provide information about the affected regions. In this study, we develop a deep learning method that is suited to identify anomalies and provide an image quality assessment of solar full-disk H filtergrams. The approach is based on the structural appearance and the true image distribution of high-quality observations. We employ a neural network with an encoder-decoder architecture to perform an identity transformation of selected high-quality observations. The encoder network is used to achieve a compressed representation of the input data,…
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