Assessing the value of Geo-Foundational Models for Flood Inundation Mapping: Benchmarking models for Sentinel-1, Sentinel-2, and Planetscope for end-users
Saurabh Kaushik, Lalit Maurya, Elizabeth Tellman, ZhiJie Zhang

TL;DR
This study systematically compares Geo-Foundational Models and traditional models for flood mapping across multiple satellite sensors, demonstrating that GFMs provide competitive accuracy with lower computational costs and better detail retention, guiding end-user model selection.
Contribution
The paper provides a comprehensive benchmarking of GFMs against traditional models across various sensors and scenarios, highlighting GFMs' competitive performance and efficiency advantages.
Findings
Clay outperforms others on PlanetScope and Sentinel-2
Clay shows slightly better performance in leave-one-region-out validation
Few-shot experiments demonstrate Clay’s effectiveness with limited training data
Abstract
Geo-Foundational Models (GFMs) enable fast and reliable extraction of spatiotemporal information from satellite imagery, improving flood inundation mapping by leveraging location and time embeddings. Despite their potential, it remains unclear whether GFMs outperform traditional models like U-Net. A systematic comparison across sensors and data availability scenarios is still lacking, which is an essential step to guide end-users in model selection. To address this, we evaluate three GFMs, Prithvi 2.0, Clay V1.5, DOFA, and UViT (a Prithvi variant), against TransNorm, U-Net, and Attention U-Net using PlanetScope, Sentinel-1, and Sentinel-2. We observe competitive performance among all GFMs, with only 2-5% variation between the best and worst models across sensors. Clay outperforms others on PlanetScope (0.79 mIoU) and Sentinel-2 (0.70), while Prithvi leads on Sentinel-1 (0.57). In…
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