NightVision: Generating Nighttime Satellite Imagery from Infra-Red Observations
P. Harder
W. Jones
Redouane Lguensat
S. Bouabid
James Fulton
Dánell Quesada-Chacón
Aris Marcolongo
Sofija Stefanović
Y. Rao
P. Manshausen
D. Watson‐Parris

Abstract
The recent explosion in applications of machine learning to satellite imagery often rely on visible images and therefore suffer from a lack of data during the night. The gap can be filled by employing available infra-red observations to generate visible images. This work presents how deep learning can be applied successfully to create those images by using U-Net based architectures. The proposed methods show promising results, achieving a structural similarity index (SSIM) up to 86\% on an independent test set and providing visually convincing output images, generated from infra-red observations.
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