ArXiv TLDR

Where Do Vision-Language Models Fail? World Scale Analysis for Image Geolocalization

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2604.16248

Siddhant Bharadwaj, Ashish Vashist, Fahimul Aleem, Shruti Vyas

cs.CV

TLDR

This paper systematically evaluates state-of-the-art Vision-Language Models for zero-shot country-level image geolocalization.

Key contributions

  • Systematically evaluates multiple state-of-the-art VLMs for country-level image geolocalization.
  • Uses prompt-based, zero-shot prediction on ground-view imagery, without task-specific training or GPS.
  • Tests models on three geographically diverse datasets to assess robustness and generalization.
  • Reveals VLMs show potential for coarse geolocalization but struggle with fine-grained geographic cues.

Why it matters

This study provides the first focused comparison of modern VLMs for country-level geolocalization. It highlights the potential of semantic reasoning for coarse geographic understanding while exposing current VLMs' limitations, setting a foundation for future multimodal geographic research.

Original Abstract

Image geolocalization has traditionally been addressed through retrieval-based place recognition or geometry-based visual localization pipelines. Recent advances in Vision-Language Models (VLMs) have demonstrated strong zero-shot reasoning capabilities across multimodal tasks, yet their performance in geographic inference remains underexplored. In this work, we present a systematic evaluation of multiple state-of-the-art VLMs for country-level image geolocalization using ground-view imagery only. Instead of relying on image matching, GPS metadata, or task-specific training, we evaluate prompt-based country prediction in a zero-shot setting. The selected models are tested on three geographically diverse datasets to assess their robustness and generalization ability. Our results reveal substantial variation across models, highlighting the potential of semantic reasoning for coarse geolocalization and the limitations of current VLMs in capturing fine-grained geographic cues. This study provides the first focused comparison of modern VLMs for country-level geolocalization and establishes a foundation for future research at the intersection of multimodal reasoning and geographic understanding.

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