Successive Collaborative SLAM: Towards Reliable Inertial Pedestrian Navigation

In emergency scenarios, such as a terrorist attack or a building on fire, it is desirable to track first responders in order to coordinate the operation. Pedestrian tracking methods solely based on inertial measurement units in indoor environments are candidates for such operations since they do not...

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Main Author: Susanna Kaiser
Format: Article
Language:English
Published: MDPI AG 2020-09-01
Series:Information
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Online Access:https://www.mdpi.com/2078-2489/11/10/464
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spelling doaj-2d145ec58abd4db09ca3d631598bfb522020-11-25T03:35:30ZengMDPI AGInformation2078-24892020-09-011146446410.3390/info11100464Successive Collaborative SLAM: Towards Reliable Inertial Pedestrian NavigationSusanna Kaiser0Institute for Communications and Navigation, German Aerospace Center (DLR), Oberpfaffenhofen, D-82234 Wessling, GermanyIn emergency scenarios, such as a terrorist attack or a building on fire, it is desirable to track first responders in order to coordinate the operation. Pedestrian tracking methods solely based on inertial measurement units in indoor environments are candidates for such operations since they do not depend on pre-installed infrastructure. A very powerful indoor navigation method represents collaborative simultaneous localization and mapping (collaborative SLAM), where the learned maps of several users can be combined in order to help indoor positioning. In this paper, maps are estimated from several similar trajectories (multiple users) or one user wearing multiple sensors. They are combined successively in order to obtain a precise map and positioning. For reducing complexity, the trajectories are divided into small portions (sliding window technique) and are partly successively applied to the collaborative SLAM algorithm. We investigate successive combinations of the map portions of several pedestrians and analyze the resulting position accuracy. The results depend on several parameters, e.g., the number of users or sensors, the sensor drifts, the amount of revisited area, the number of iterations, and the windows size. We provide a discussion about the choice of the parameters. The results show that the mean position error can be reduced to ≈0.5 m when applying partly successive collaborative SLAM.https://www.mdpi.com/2078-2489/11/10/464indoor navigationpedestrian dead reckoningsimultaneous localization and mappingFootSLAMcollaborative mappingprofessional use cases
collection DOAJ
language English
format Article
sources DOAJ
author Susanna Kaiser
spellingShingle Susanna Kaiser
Successive Collaborative SLAM: Towards Reliable Inertial Pedestrian Navigation
Information
indoor navigation
pedestrian dead reckoning
simultaneous localization and mapping
FootSLAM
collaborative mapping
professional use cases
author_facet Susanna Kaiser
author_sort Susanna Kaiser
title Successive Collaborative SLAM: Towards Reliable Inertial Pedestrian Navigation
title_short Successive Collaborative SLAM: Towards Reliable Inertial Pedestrian Navigation
title_full Successive Collaborative SLAM: Towards Reliable Inertial Pedestrian Navigation
title_fullStr Successive Collaborative SLAM: Towards Reliable Inertial Pedestrian Navigation
title_full_unstemmed Successive Collaborative SLAM: Towards Reliable Inertial Pedestrian Navigation
title_sort successive collaborative slam: towards reliable inertial pedestrian navigation
publisher MDPI AG
series Information
issn 2078-2489
publishDate 2020-09-01
description In emergency scenarios, such as a terrorist attack or a building on fire, it is desirable to track first responders in order to coordinate the operation. Pedestrian tracking methods solely based on inertial measurement units in indoor environments are candidates for such operations since they do not depend on pre-installed infrastructure. A very powerful indoor navigation method represents collaborative simultaneous localization and mapping (collaborative SLAM), where the learned maps of several users can be combined in order to help indoor positioning. In this paper, maps are estimated from several similar trajectories (multiple users) or one user wearing multiple sensors. They are combined successively in order to obtain a precise map and positioning. For reducing complexity, the trajectories are divided into small portions (sliding window technique) and are partly successively applied to the collaborative SLAM algorithm. We investigate successive combinations of the map portions of several pedestrians and analyze the resulting position accuracy. The results depend on several parameters, e.g., the number of users or sensors, the sensor drifts, the amount of revisited area, the number of iterations, and the windows size. We provide a discussion about the choice of the parameters. The results show that the mean position error can be reduced to ≈0.5 m when applying partly successive collaborative SLAM.
topic indoor navigation
pedestrian dead reckoning
simultaneous localization and mapping
FootSLAM
collaborative mapping
professional use cases
url https://www.mdpi.com/2078-2489/11/10/464
work_keys_str_mv AT susannakaiser successivecollaborativeslamtowardsreliableinertialpedestriannavigation
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