deSEO: Physics-Aware Dataset Creation for High-Resolution Satellite Image Shadow Removal
Lorenzo Beltrame, Jules Salzinger, Filip Svoboda, Phillipp Fanta-Jende, Jasmin Lampert, Radu Timofte, Marco K\"orner

TL;DR
deSEO introduces a geometry-aware, physics-informed pipeline to create paired datasets for high-resolution satellite shadow removal, enabling improved shadow mitigation across diverse conditions.
Contribution
It is the first to derive paired supervision for satellite shadow removal from existing datasets using a fully replicable pipeline and develops a DSM-aware deshadowing model.
Findings
The dataset enables effective shadow removal across various illumination conditions.
The proposed model outperforms direct adaptation of UAV-based architectures.
deSEO achieves improved structural and perceptual fidelity in shadow removal.
Abstract
Shadows cast by terrain and tall structures remain a major obstacle for high-resolution satellite image analysis, degrading classification, detection, and 3D reconstruction performance. Public resources offering geometry-consistent paired shadow/shadow-free satellite imagery are essentially missing, and most Earth-observation datasets are designed for shadow detection or 3D modelling rather than removal. Existing deep shadow-removal datasets either target ground-level or aerial scenes or rely on unpaired and weakly supervised formulations rather than explicit satellite pairs. We address this gap with deSEO, a geometry-aware and physics-informed methodology that, to the best of our knowledge, is the first to derive paired supervision for satellite shadow removal from the S-EO shadow detection dataset through a fully replicable pipeline. For each tile, deSEO selects a minimally shadowed…
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