Collaborative Methods for Real-Time Localization in Urban Centers

This article presents an effective solution for the localization of a vehicle in dense urban areas where GNSS-based methods fail because of poor satellite visibility. It advocates the use of a visual-based method processing georeferenced landmarks obtained after a learning path and stored in a new l...

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Main Authors: Sébastien Peyraud, Eric Royer, Stéphane Renault, Dominique Meizel
Format: Article
Language:English
Published: SAGE Publishing 2015-11-01
Series:International Journal of Advanced Robotic Systems
Online Access:https://doi.org/10.5772/61371
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spelling doaj-eb067206e31147888ab38c3a52b545ed2020-11-25T03:42:55ZengSAGE PublishingInternational Journal of Advanced Robotic Systems1729-88142015-11-011210.5772/6137110.5772_61371Collaborative Methods for Real-Time Localization in Urban CentersSébastien Peyraud0Eric Royer1Stéphane Renault2Dominique Meizel3 XLIM Laboratory, UMR CNRS/Limoges University, Limoge, France Institut Pascal UMR CNRS/Clermont Ferrand University, Clermont Ferrand, France XLIM Laboratory, UMR CNRS/Limoges University, Limoge, France XLIM Laboratory, UMR CNRS/Limoges University, Limoge, FranceThis article presents an effective solution for the localization of a vehicle in dense urban areas where GNSS-based methods fail because of poor satellite visibility. It advocates the use of a visual-based method processing georeferenced landmarks obtained after a learning path and stored in a new layer of the geographical information system (GIS) used for navigation. Real-time localization gives, with few failures, accurate results in the areas covered by the GIS. The integrity of the localization is obtained by running another algorithm in parallel, processing odometric data combined with the geometric model of the drivable area and, when available, GNSS data in tight coupling. An ellipsoidal confidence domain is updated by using both extended Kalman filtering (EKF) and set-membership estimation. Although less accurate, this estimation is reliable and, when the visual method fails, the availability of a confidence domain enables us to speed up the restart of the visual method while navigating cautiously. A large-scale experiment (>4 km) was conducted in the centre of Paris. We compare the absolute localization results with the ground truth obtained by combining RTK-GPS and a high-end inertial measurement unit (IMU).https://doi.org/10.5772/61371
collection DOAJ
language English
format Article
sources DOAJ
author Sébastien Peyraud
Eric Royer
Stéphane Renault
Dominique Meizel
spellingShingle Sébastien Peyraud
Eric Royer
Stéphane Renault
Dominique Meizel
Collaborative Methods for Real-Time Localization in Urban Centers
International Journal of Advanced Robotic Systems
author_facet Sébastien Peyraud
Eric Royer
Stéphane Renault
Dominique Meizel
author_sort Sébastien Peyraud
title Collaborative Methods for Real-Time Localization in Urban Centers
title_short Collaborative Methods for Real-Time Localization in Urban Centers
title_full Collaborative Methods for Real-Time Localization in Urban Centers
title_fullStr Collaborative Methods for Real-Time Localization in Urban Centers
title_full_unstemmed Collaborative Methods for Real-Time Localization in Urban Centers
title_sort collaborative methods for real-time localization in urban centers
publisher SAGE Publishing
series International Journal of Advanced Robotic Systems
issn 1729-8814
publishDate 2015-11-01
description This article presents an effective solution for the localization of a vehicle in dense urban areas where GNSS-based methods fail because of poor satellite visibility. It advocates the use of a visual-based method processing georeferenced landmarks obtained after a learning path and stored in a new layer of the geographical information system (GIS) used for navigation. Real-time localization gives, with few failures, accurate results in the areas covered by the GIS. The integrity of the localization is obtained by running another algorithm in parallel, processing odometric data combined with the geometric model of the drivable area and, when available, GNSS data in tight coupling. An ellipsoidal confidence domain is updated by using both extended Kalman filtering (EKF) and set-membership estimation. Although less accurate, this estimation is reliable and, when the visual method fails, the availability of a confidence domain enables us to speed up the restart of the visual method while navigating cautiously. A large-scale experiment (>4 km) was conducted in the centre of Paris. We compare the absolute localization results with the ground truth obtained by combining RTK-GPS and a high-end inertial measurement unit (IMU).
url https://doi.org/10.5772/61371
work_keys_str_mv AT sebastienpeyraud collaborativemethodsforrealtimelocalizationinurbancenters
AT ericroyer collaborativemethodsforrealtimelocalizationinurbancenters
AT stephanerenault collaborativemethodsforrealtimelocalizationinurbancenters
AT dominiquemeizel collaborativemethodsforrealtimelocalizationinurbancenters
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