Distributed simultaneous localization and mapping for mobile robot networks via hybrid dynamic belief propagation

This article proposes a hybrid dynamic belief propagation for simultaneous localization and mapping in the mobile robot network. The positions of landmarks and the poses of moving robots at each time slot are estimated simultaneously in an online and distributed manner, by fusing the odometry data o...

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Main Authors: Jiuqing Wan, Shaocong Bu, Jinsong Yu, Liping Zhong
Format: Article
Language:English
Published: SAGE Publishing 2017-08-01
Series:International Journal of Distributed Sensor Networks
Online Access:https://doi.org/10.1177/1550147717726715
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spelling doaj-2d598fa0cc3a4fa1824125d7889315c42020-11-25T03:32:43ZengSAGE PublishingInternational Journal of Distributed Sensor Networks1550-14772017-08-011310.1177/1550147717726715Distributed simultaneous localization and mapping for mobile robot networks via hybrid dynamic belief propagationJiuqing WanShaocong BuJinsong YuLiping ZhongThis article proposes a hybrid dynamic belief propagation for simultaneous localization and mapping in the mobile robot network. The positions of landmarks and the poses of moving robots at each time slot are estimated simultaneously in an online and distributed manner, by fusing the odometry data of each robot and the measurements of robot–robot or robot–landmark relative distance and angle. The joint belief state of all robots and landmarks is encoded by a factor graph and the marginal posterior probability distribution of each variable is inferred by belief propagation. We show how to calculate, broadcast, and update messages between neighboring nodes in the factor graph. Specifically, we combine parametric and nonparametric techniques to tackle the problem arisen from non-Gaussian distributions and nonlinear models. Simulation and experimental results on publicly available dataset show the validity of our algorithm.https://doi.org/10.1177/1550147717726715
collection DOAJ
language English
format Article
sources DOAJ
author Jiuqing Wan
Shaocong Bu
Jinsong Yu
Liping Zhong
spellingShingle Jiuqing Wan
Shaocong Bu
Jinsong Yu
Liping Zhong
Distributed simultaneous localization and mapping for mobile robot networks via hybrid dynamic belief propagation
International Journal of Distributed Sensor Networks
author_facet Jiuqing Wan
Shaocong Bu
Jinsong Yu
Liping Zhong
author_sort Jiuqing Wan
title Distributed simultaneous localization and mapping for mobile robot networks via hybrid dynamic belief propagation
title_short Distributed simultaneous localization and mapping for mobile robot networks via hybrid dynamic belief propagation
title_full Distributed simultaneous localization and mapping for mobile robot networks via hybrid dynamic belief propagation
title_fullStr Distributed simultaneous localization and mapping for mobile robot networks via hybrid dynamic belief propagation
title_full_unstemmed Distributed simultaneous localization and mapping for mobile robot networks via hybrid dynamic belief propagation
title_sort distributed simultaneous localization and mapping for mobile robot networks via hybrid dynamic belief propagation
publisher SAGE Publishing
series International Journal of Distributed Sensor Networks
issn 1550-1477
publishDate 2017-08-01
description This article proposes a hybrid dynamic belief propagation for simultaneous localization and mapping in the mobile robot network. The positions of landmarks and the poses of moving robots at each time slot are estimated simultaneously in an online and distributed manner, by fusing the odometry data of each robot and the measurements of robot–robot or robot–landmark relative distance and angle. The joint belief state of all robots and landmarks is encoded by a factor graph and the marginal posterior probability distribution of each variable is inferred by belief propagation. We show how to calculate, broadcast, and update messages between neighboring nodes in the factor graph. Specifically, we combine parametric and nonparametric techniques to tackle the problem arisen from non-Gaussian distributions and nonlinear models. Simulation and experimental results on publicly available dataset show the validity of our algorithm.
url https://doi.org/10.1177/1550147717726715
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AT shaocongbu distributedsimultaneouslocalizationandmappingformobilerobotnetworksviahybriddynamicbeliefpropagation
AT jinsongyu distributedsimultaneouslocalizationandmappingformobilerobotnetworksviahybriddynamicbeliefpropagation
AT lipingzhong distributedsimultaneouslocalizationandmappingformobilerobotnetworksviahybriddynamicbeliefpropagation
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