Guardado en:
Detalles Bibliográficos
Autores principales: Fanta-Jende, Phillipp, Vultaggio, Francesco, Kern, Alexander, Loeper, Yasmin, Gerke, Markus
Formato: Preprint
Publicado: 2026
Materias:
Acceso en línea:https://arxiv.org/abs/2605.05351
Etiquetas: Agregar Etiqueta
Sin Etiquetas, Sea el primero en etiquetar este registro!
_version_ 1866909019804794880
author Fanta-Jende, Phillipp
Vultaggio, Francesco
Kern, Alexander
Loeper, Yasmin
Gerke, Markus
author_facet Fanta-Jende, Phillipp
Vultaggio, Francesco
Kern, Alexander
Loeper, Yasmin
Gerke, Markus
contents We present egenioussBench, a visual localisation benchmark built on geospatial reference data: a city-scale airborne 3D mesh and a CityGML LoD2 model. This pairing reflects deployable mapping assets and supports true scalability beyond traditional SfM-based approaches. The query data comprise smartphone images with centimetre-accurate, map-independent ground truth obtained via PPK and GCP/CP-aided adjustment. From 2,709 images, we derive a non-co-visible subset by estimating the full co-visibility matrix from rendered depth and selecting a maximum independent set; the released data include a test split of 42 non-co-visible images with withheld ground truth and a validation split of 412 sequential images with poses, e.g. for training of pose regressors and self-validation. The benchmark features a public leaderboard evaluated with binning metrics at multiple pose-error thresholds alongside global statistics (median, RMSE, outlier ratio), ensuring fair, like-for-like comparison across mesh- and LoD2-based methods. Together, these design choices expose realistic cross-view and cross-domain challenges while providing a rigorous, scalable path for advancing large-scale visual localisation. We make the evaluation code and data availeable at https://github.com/fratopa/egenioussBench and https://www.egeniouss.eu/
format Preprint
id arxiv_https___arxiv_org_abs_2605_05351
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle egenioussBench: A New Dataset for Geospatial Visual Localisation
Fanta-Jende, Phillipp
Vultaggio, Francesco
Kern, Alexander
Loeper, Yasmin
Gerke, Markus
Computer Vision and Pattern Recognition
We present egenioussBench, a visual localisation benchmark built on geospatial reference data: a city-scale airborne 3D mesh and a CityGML LoD2 model. This pairing reflects deployable mapping assets and supports true scalability beyond traditional SfM-based approaches. The query data comprise smartphone images with centimetre-accurate, map-independent ground truth obtained via PPK and GCP/CP-aided adjustment. From 2,709 images, we derive a non-co-visible subset by estimating the full co-visibility matrix from rendered depth and selecting a maximum independent set; the released data include a test split of 42 non-co-visible images with withheld ground truth and a validation split of 412 sequential images with poses, e.g. for training of pose regressors and self-validation. The benchmark features a public leaderboard evaluated with binning metrics at multiple pose-error thresholds alongside global statistics (median, RMSE, outlier ratio), ensuring fair, like-for-like comparison across mesh- and LoD2-based methods. Together, these design choices expose realistic cross-view and cross-domain challenges while providing a rigorous, scalable path for advancing large-scale visual localisation. We make the evaluation code and data availeable at https://github.com/fratopa/egenioussBench and https://www.egeniouss.eu/
title egenioussBench: A New Dataset for Geospatial Visual Localisation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2605.05351