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Auteurs principaux: Durrieu, Emilie, Hurter, Christophe, Muller, Philippe, Boutin, Victor
Format: Preprint
Publié: 2026
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Accès en ligne:https://arxiv.org/abs/2605.00912
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author Durrieu, Emilie
Hurter, Christophe
Muller, Philippe
Boutin, Victor
author_facet Durrieu, Emilie
Hurter, Christophe
Muller, Philippe
Boutin, Victor
contents When humans play geolocation games such as GeoGuessr, they rely on concrete visual cues, such as road markings, vegetation, or architectural details, to infer where an image was captured. Whether image geolocation models rely on similar object-level evidence remains difficult to determine, as attribution methods like Grad-CAM typically highlight diffuse regions rather than coherent visual entities, making it difficult to link model predictions to specific objects or perceptible patterns. In this work, we propose an object-centric analysis pipeline to investigate the visual evidence used by geolocation models. Starting from attribution maps, we extract salient regions and segment them into object-like elements. We evaluate their predictive relevance through deletion and insertion tests, comparing attributionguided crops to randomly selected regions with similar coverage. Experiments on a three-country benchmark show that attribution-guided crops consistently retain more information for the model's prediction than random crops. These results suggest that attribution maps can be decomposed into interpretable, perceptible elements, providing a step toward object-level analysis of geolocation models.
format Preprint
id arxiv_https___arxiv_org_abs_2605_00912
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Object-Level Explanations for Image Geolocation Models: a GeoGuessr use-case
Durrieu, Emilie
Hurter, Christophe
Muller, Philippe
Boutin, Victor
Computer Vision and Pattern Recognition
When humans play geolocation games such as GeoGuessr, they rely on concrete visual cues, such as road markings, vegetation, or architectural details, to infer where an image was captured. Whether image geolocation models rely on similar object-level evidence remains difficult to determine, as attribution methods like Grad-CAM typically highlight diffuse regions rather than coherent visual entities, making it difficult to link model predictions to specific objects or perceptible patterns. In this work, we propose an object-centric analysis pipeline to investigate the visual evidence used by geolocation models. Starting from attribution maps, we extract salient regions and segment them into object-like elements. We evaluate their predictive relevance through deletion and insertion tests, comparing attributionguided crops to randomly selected regions with similar coverage. Experiments on a three-country benchmark show that attribution-guided crops consistently retain more information for the model's prediction than random crops. These results suggest that attribution maps can be decomposed into interpretable, perceptible elements, providing a step toward object-level analysis of geolocation models.
title Object-Level Explanations for Image Geolocation Models: a GeoGuessr use-case
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2605.00912