Leveraging AI multimodal geospatial foundation models for improved near-real-time flood mapping at a global scale
Mirela G. Tulbure, Julio Caineta, Mark Broich, Mollie D. Gaines, Philippe Rufin, Leon-Friedrich Thomas, Hamed Alemohammad, Jan Hemmerling, Patrick Hostert

TL;DR
This study demonstrates that fine-tuning geospatial foundation models with multimodal satellite data can significantly improve near-real-time flood mapping accuracy at a global scale, aiding climate adaptation efforts.
Contribution
It provides one of the first global evaluations of a geospatial foundation model for flood segmentation using multimodal data and fine-tuning techniques.
Findings
Fine-tuned models outperform baseline in recall and accuracy.
Multimodal optical and SAR data integration enhances flood detection.
Large unfrozen models achieve highest recall with lower computational cost.
Abstract
Floods are among the most damaging weather-related hazards, and in 2024, the warmest year on record, extreme flood events affected communities across five continents. Earth observation (EO) satellites provide critical, frequent coverage for mapping inundation, yet operational accuracy depends heavily on labeled datasets and model generalization. Recent Geospatial Foundation Models (GFMs), such as ESA-IBM's TerraMind, offer improved generalizability through large-scale self-supervised pretraining, but their performance on diverse global flood events remains poorly understood. We fine-tune TerraMind for flood extent mapping using FloodsNet, a harmonized multimodal dataset containing co-located Sentinel-1 (Synthetic Aperture Radar, SAR data) and Sentinel-2 (optical) imagery for 85 flood events worldwide. We tested four configurations (base vs. large models; frozen vs. unfrozen backbones)…
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Taxonomy
TopicsFlood Risk Assessment and Management · Disaster Management and Resilience · Precipitation Measurement and Analysis
