Deep priors for satellite image restoration with accurate uncertainties
Biquard Maud, Marie Chabert, Florence Genin, Christophe Latry, Thomas Oberlin

TL;DR
This paper introduces VBLE-xz, a deep regularization method using a variational autoencoder for satellite image restoration that provides accurate uncertainties efficiently, outperforming existing methods in robustness and scalability.
Contribution
The paper presents VBLE-xz, a novel deep regularization approach that estimates uncertainties in satellite image restoration within the latent space of a variational autoencoder.
Findings
VBLE-xz achieves fast posterior sampling.
It outperforms state-of-the-art methods in robustness.
It effectively quantifies uncertainties in image restoration.
Abstract
Satellite optical images, upon their on-ground receipt, offer a distorted view of the observed scene. Their restoration, including denoising, deblurring, and sometimes super-resolution, is required before their exploitation. Moreover, quantifying the uncertainties related to this restoration helps to reduce the risks of misinterpreting the image content. Deep learning methods are now state-of-the-art for satellite image restoration. Among them, direct inversion methods train a specific network for each sensor, and generally provide a point estimation of the restored image without the associated uncertainties. Alternatively, deep regularization (DR) methods learn a deep prior on target images before plugging it, as the regularization term, into a model-based optimization scheme. This allows for restoring images from several sensors with a single network and possibly for estimating…
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Taxonomy
TopicsSatellite Image Processing and Photogrammetry · Image and Signal Denoising Methods · Infrared Target Detection Methodologies
MethodsSparse Evolutionary Training · Focus
