English

OBSR: Open Benchmark for Spatial Representations

Machine Learning 2025-12-18 v2

Abstract

GeoAI is evolving rapidly, fueled by diverse geospatial datasets like traffic patterns, environmental data, and crowdsourced OpenStreetMap (OSM) information. While sophisticated AI models are being developed, existing benchmarks are often concentrated on single tasks and restricted to a single modality. As such, progress in GeoAI is limited by the lack of a standardized, multi-task, modality-agnostic benchmark for their systematic evaluation. This paper introduces a novel benchmark designed to assess the performance, accuracy, and efficiency of geospatial embedders. Our benchmark is modality-agnostic and comprises 7 distinct datasets from diverse cities across three continents, ensuring generalizability and mitigating demographic biases. It allows for the evaluation of GeoAI embedders on various phenomena that exhibit underlying geographic processes. Furthermore, we establish a simple and intuitive task-oriented model baselines, providing a crucial reference point for comparing more complex solutions.

Keywords

Cite

@article{arxiv.2510.05879,
  title  = {OBSR: Open Benchmark for Spatial Representations},
  author = {Julia Moska and Oleksii Furman and Kacper Kozaczko and Szymon Leszkiewicz and Jakub Polczyk and Piotr Gramacki and Piotr Szymański},
  journal= {arXiv preprint arXiv:2510.05879},
  year   = {2025}
}

Comments

ACM SIGSPATIAL 2025 Full Paper

R2 v1 2026-07-01T06:21:22.008Z