REMSA: Foundation Model Selection for Remote Sensing via a Constraint-Aware Agent
This paper introduces REMSA, a constraint-aware agent built upon the newly constructed RSFM Database (RS-FMD) that automates the selection of suitable remote sensing foundation models from natural language queries by integrating structured metadata retrieval with task-driven decision workflows, achieving superior performance over baselines in a novel expert-verified benchmark.