AI RESEARCH
MapSR: Prompt-Driven Land Cover Map Super-Resolution via Vision Foundation Models
arXiv CS.CV
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ArXi:2604.14582v1 Announce Type: new High-resolution (HR) land-cover mapping is often constrained by the high cost of dense HR annotations. We revisit this problem from the perspective of map super-resolution, which enhances coarse low-resolution (LR) land-cover products into HR maps at the resolution of the input imagery. Existing weakly supervised methods can leverage LR labels, but they typically use them to retrain dense predictors with substantial computational cost. We propose MapSR, a prompt-driven framework that decouples supervision from model.