Comparing EKF and SPKF Algorithms for Simultaneous Localization and Mapping (SLAM)

Simultaneous Localization and Mapping (SLAM) is the problem in which a sensor-enabled mobile robot incrementally builds a map for an unknown environment, while localizing itself within this map. A problem with detection of correct path of moving objects is the received noisy data. Therefore, it is p...

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Main Authors: Zolghadr Javad, Yuanli Cai, Yekkehfallah Majid
Format: Article
Language:English
Published: Atlantis Press 2017-02-01
Series:Journal of Robotics, Networking and Artificial Life (JRNAL)
Subjects:
Online Access:https://www.atlantis-press.com/article/25872644.pdf
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spelling doaj-64a30b13171949dfb5d98f8a75e5a23d2020-11-25T00:39:18ZengAtlantis PressJournal of Robotics, Networking and Artificial Life (JRNAL)2352-63862017-02-013410.2991/jrnal.2017.3.4.2Comparing EKF and SPKF Algorithms for Simultaneous Localization and Mapping (SLAM)Zolghadr JavadYuanli CaiYekkehfallah MajidSimultaneous Localization and Mapping (SLAM) is the problem in which a sensor-enabled mobile robot incrementally builds a map for an unknown environment, while localizing itself within this map. A problem with detection of correct path of moving objects is the received noisy data. Therefore, it is possible that the information is incorrectly detected. The Kalman Filter’s linearized error propagation can result in big errors and instability in the SLAM problem. One approach to reduce this situation is using of iteration in Extended Kalman Filter (EKF) and Sigma Point Kalman Filter (SPKF). We will show that the recapitulate versions of kalman filters can improve the estimation accuracy and robustness of these filters beside of linear error propagation. Simulation results are presented to validate this improvement of state estimate convergence through repetitive linearization of the nonlinear model in EKF and SPKF for SLAM algorithms. Results of this evaluation are introduced by computer simulations and verified by offline implementation of the SLAM algorithm on mobile robot in MRL Robotic Lab.https://www.atlantis-press.com/article/25872644.pdfExtended Kalman FilterSigma Point Kalman FilterSLAMinstabilityMobile RobotNonlinear Estimation.
collection DOAJ
language English
format Article
sources DOAJ
author Zolghadr Javad
Yuanli Cai
Yekkehfallah Majid
spellingShingle Zolghadr Javad
Yuanli Cai
Yekkehfallah Majid
Comparing EKF and SPKF Algorithms for Simultaneous Localization and Mapping (SLAM)
Journal of Robotics, Networking and Artificial Life (JRNAL)
Extended Kalman Filter
Sigma Point Kalman Filter
SLAM
instability
Mobile Robot
Nonlinear Estimation.
author_facet Zolghadr Javad
Yuanli Cai
Yekkehfallah Majid
author_sort Zolghadr Javad
title Comparing EKF and SPKF Algorithms for Simultaneous Localization and Mapping (SLAM)
title_short Comparing EKF and SPKF Algorithms for Simultaneous Localization and Mapping (SLAM)
title_full Comparing EKF and SPKF Algorithms for Simultaneous Localization and Mapping (SLAM)
title_fullStr Comparing EKF and SPKF Algorithms for Simultaneous Localization and Mapping (SLAM)
title_full_unstemmed Comparing EKF and SPKF Algorithms for Simultaneous Localization and Mapping (SLAM)
title_sort comparing ekf and spkf algorithms for simultaneous localization and mapping (slam)
publisher Atlantis Press
series Journal of Robotics, Networking and Artificial Life (JRNAL)
issn 2352-6386
publishDate 2017-02-01
description Simultaneous Localization and Mapping (SLAM) is the problem in which a sensor-enabled mobile robot incrementally builds a map for an unknown environment, while localizing itself within this map. A problem with detection of correct path of moving objects is the received noisy data. Therefore, it is possible that the information is incorrectly detected. The Kalman Filter’s linearized error propagation can result in big errors and instability in the SLAM problem. One approach to reduce this situation is using of iteration in Extended Kalman Filter (EKF) and Sigma Point Kalman Filter (SPKF). We will show that the recapitulate versions of kalman filters can improve the estimation accuracy and robustness of these filters beside of linear error propagation. Simulation results are presented to validate this improvement of state estimate convergence through repetitive linearization of the nonlinear model in EKF and SPKF for SLAM algorithms. Results of this evaluation are introduced by computer simulations and verified by offline implementation of the SLAM algorithm on mobile robot in MRL Robotic Lab.
topic Extended Kalman Filter
Sigma Point Kalman Filter
SLAM
instability
Mobile Robot
Nonlinear Estimation.
url https://www.atlantis-press.com/article/25872644.pdf
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AT yuanlicai comparingekfandspkfalgorithmsforsimultaneouslocalizationandmappingslam
AT yekkehfallahmajid comparingekfandspkfalgorithmsforsimultaneouslocalizationandmappingslam
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