Uncertainty and Generalizability in Foundation Models for Earth Observation
Raul Ramos-Pollan, Freddie Kalaitzis, Karthick Panner Selvam

TL;DR
This study evaluates the uncertainty and generalizability of foundation models in Earth observation, highlighting their performance limits across different areas and tasks, and proposing a methodology for informed downstream task design.
Contribution
It provides a comprehensive ablation study of eight foundation models across multiple AOIs and tasks, emphasizing the importance of systematic evaluation for practical application.
Findings
High correlation coefficients (>0.9) achieved in some predictive tasks.
Performance and uncertainty vary significantly across AOIs, tasks, and models.
Spatial generalizability of foundation models has notable limits.
Abstract
We take the perspective in which we want to design a downstream task (such as estimating vegetation coverage) on a certain area of interest (AOI) with a limited labeling budget. By leveraging an existing Foundation Model (FM) we must decide whether we train a downstream model on a different but label-rich AOI hoping it generalizes to our AOI, or we split labels in our AOI for training and validating. In either case, we face choices concerning what FM to use, how to sample our AOI for labeling, etc. which affect both the performance and uncertainty of the results. In this work, we perform a large ablative study using eight existing FMs on either Sentinel 1 or Sentinel 2 as input data, and the classes from the ESA World Cover product as downstream tasks across eleven AOIs. We do repeated sampling and training, resulting in an ablation of some 500K simple linear regression models. Our…
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Taxonomy
TopicsReservoir Engineering and Simulation Methods · Geophysics and Gravity Measurements · Geological Modeling and Analysis
MethodsLinear Regression · Attentive Walk-Aggregating Graph Neural Network
