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U-Prithvi: Integrating a Foundation Model and U-Net for Enhanced Flood Inundation Mapping

Kostejn, Vit, Essus, Yamil, Abrahamson, Jenna, Vatsavai, Ranga Raju

2025Dagstuhl Research Online Publication Server979 citationsDOIOpen Access PDF

Abstract

In recent years, large pre-trained models, commonly referred to as foundation models, have become increasingly popular for various tasks leveraging transfer learning. This trend has expanded to remote sensing, where transformer-based foundation models such as Prithvi, msGFM, and SatSwinMAE have been utilized for a range of applications. While these transformer-based models, particularly the Prithvi model, exhibit strong generalization capabilities, they have limitations on capturing fine-grained details compared to convolutional neural network architectures like U-Net in segmentation tasks. In this paper, we propose a novel architecture, U-Prithvi, which combines the strengths of the Prithvi transformer with those of U-Net. We introduce a RandomHalfMaskLayer to ensure balanced learning from both models during training. Our approach is evaluated on the Sen1Floods11 dataset for flood inundation mapping, and experimental results demonstrate better performance of U-Prithvi over both individual models, achieving improved performance on out-of-sample data. While this principle is illustrated using the Prithvi model, it is easily adaptable to other foundation models.

Topics & Concepts

Computer scienceArtificial intelligenceSegmentationMargin (machine learning)Sliding window protocolContext (archaeology)Path (computing)Image (mathematics)Net (polyhedron)Pattern recognition (psychology)Window (computing)Image segmentationNetwork architectureConvolutional neural networkDeep learningComputer visionMachine learningComputer networkMathematicsWorld Wide WebBiologyPaleontologyGeometryCell Image Analysis TechniquesAdvanced Electron Microscopy Techniques and ApplicationsAdvanced Neural Network Applications