PlaceFM: A Training-free Geospatial Foundation Model of Places
PlaceFM: A Training-free Geospatial Foundation Model of Places
Spatial structure is central to effective geospatial intelligence systems. While foundation models have shown promise, they often lack the flexibility to reason about places, which are context-rich regions spanning different spatial granularities. We propose PlaceFM, a spatial foundation model that captures place representations using a training-free graph condensation method. PlaceFM condenses a nationwide POI graph built from integrated Foursquare and OpenStreetMap data in the U.S., generating general-purpose embeddings of places. These embeddings can be seamlessly integrated into geolocation data pipelines to support a wide range of downstream tasks. Without requiring pretraining, PlaceFM offers a scalable and adaptable solution for multi-scale geospatial analysis.
Mohammad Hashemi、Hossein Amiri、Andreas Zufle
测绘学计算技术、计算机技术
Mohammad Hashemi,Hossein Amiri,Andreas Zufle.PlaceFM: A Training-free Geospatial Foundation Model of Places[EB/OL].(2025-06-25)[2025-07-16].https://arxiv.org/abs/2507.02921.点此复制
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