Published June 24, 2025 | Version v1
Poster Open

Hybrid Deep Learning for Oil Spill Mapping Leveraging Sentinel-2 and Foundation Models

Description

Oil spills represent a persistent environmental threat requiring fast and accurate monitoring. While SAR-based methods have traditionally been dominant, multispectral satellite imagery
can offer rich spectral data for oil detection. However, challenges persist such as low number of recorded oil spill incidents, label noise and effects including sunglint, atmospheric
interference, and spectral confusion. This work proposes a hybrid deep learning framework that integrates a water-specialized foundation model (Hydro Foundation Model) with a
marine-targeted segmentation architecture (MariNeXt) to improve the accuracy and generalization capacity of oil spill detection from Sentinel-2 imagery.

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Hybrid Deep Learning for Oil Spill Mapping Leveraging Sentinel-2 and.pdf

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Additional details

Funding

European Commission
ThinkingEarth - Copernicus Foundation Models for a Thinking Earth 101130544
European Union
Small-Satellites project under Greece 2.0 16855