Removing cloud shadows from ground-based solar imagery

A U-Net-style Neural Network to remove cloud contaminants from ground-based solar imagery.
Research
Heliophysics
Neural Network
Authors

Amal Chaoui

Jay Paul Morgan

Adeline Paiement

Jean Aboudarham

Published

April 4, 2023

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Abstract

The study and prediction of space weather entails the analysis of solar images showing structures of the Sun’s atmosphere. When imaged from the Earth’s ground, images may be polluted by terrestrial clouds which hinder the detection of solar structures. We propose a new method to remove cloud shadows, based on a U-Net architecture, and compare classical supervision with conditional GAN. We evaluate our method on two different imaging modalities, using both real images and a new dataset of synthetic clouds. Quantitative assessments are obtained through image quality indices (RMSE, PSNR, SSIM). We demonstrate improved results with regards to the traditional cloud removal technique and a sparse coding baseline, on different cloud types and textures.