AI RESEARCH
REMSA: Foundation Model Selection for Remote Sensing via a Constraint-Aware Agent
arXiv CS.AI
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ArXi:2511.17442v2 Announce Type: replace-cross Foundation Models (FMs) are increasingly integrated into remote sensing (RS) pipelines. These models include unimodal vision encoders and multimodal architectures. FMs are adapted to diverse perception tasks, such as image classification, change detection, and visual question answering. However, selecting the most suitable remote sensing foundation model (RSFM) for a specific task remains challenging due to scattered documentation, heterogeneous formats, and complex deployment constraints. To address this, we first