An EKF for Lie Groups with Application to Crane Load Dynamics

An extended Kalman filter (EKF) for systems with configuration given by matrix Lie groups is presented. The error dynamics are given by the logarithm of the Lie group and are based on the kinematic differential equation of the logarithm, which is given in terms of the Jacobian of the Lie group. The...

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Main Authors: Alexander Meyer Sjøberg, Olav Egeland
Format: Article
Language:English
Published: Norwegian Society of Automatic Control 2019-04-01
Series:Modeling, Identification and Control
Subjects:
Online Access:http://www.mic-journal.no/PDF/2019/MIC-2019-2-3.pdf
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spelling doaj-2d23f23df26246d4b1beba886604f03d2020-11-24T21:24:30ZengNorwegian Society of Automatic ControlModeling, Identification and Control0332-73531890-13282019-04-0140210912410.4173/mic.2019.2.3An EKF for Lie Groups with Application to Crane Load DynamicsAlexander Meyer SjøbergOlav EgelandAn extended Kalman filter (EKF) for systems with configuration given by matrix Lie groups is presented. The error dynamics are given by the logarithm of the Lie group and are based on the kinematic differential equation of the logarithm, which is given in terms of the Jacobian of the Lie group. The probability distribution is also described in terms of the logarithm as a concentrated Gaussian distribution that is a tightly focused distribution around the identity of the Lie group. The filter is applied to estimation on SO(3) a case where a stereo camera setup tracks a crane wire with a payload. The wire, which is under tension and forms a line is monitored by two 2D-cameras, and a line detector is used to obtain a description of how the wire is projected onto each image plane. A model of a spherical pendulum is applied and the estimator is validated by applying it on simulated data, as well as experimental data.http://www.mic-journal.no/PDF/2019/MIC-2019-2-3.pdfLine reconstructionstereo visionLie groupsextended Kalman filterpendulum
collection DOAJ
language English
format Article
sources DOAJ
author Alexander Meyer Sjøberg
Olav Egeland
spellingShingle Alexander Meyer Sjøberg
Olav Egeland
An EKF for Lie Groups with Application to Crane Load Dynamics
Modeling, Identification and Control
Line reconstruction
stereo vision
Lie groups
extended Kalman filter
pendulum
author_facet Alexander Meyer Sjøberg
Olav Egeland
author_sort Alexander Meyer Sjøberg
title An EKF for Lie Groups with Application to Crane Load Dynamics
title_short An EKF for Lie Groups with Application to Crane Load Dynamics
title_full An EKF for Lie Groups with Application to Crane Load Dynamics
title_fullStr An EKF for Lie Groups with Application to Crane Load Dynamics
title_full_unstemmed An EKF for Lie Groups with Application to Crane Load Dynamics
title_sort ekf for lie groups with application to crane load dynamics
publisher Norwegian Society of Automatic Control
series Modeling, Identification and Control
issn 0332-7353
1890-1328
publishDate 2019-04-01
description An extended Kalman filter (EKF) for systems with configuration given by matrix Lie groups is presented. The error dynamics are given by the logarithm of the Lie group and are based on the kinematic differential equation of the logarithm, which is given in terms of the Jacobian of the Lie group. The probability distribution is also described in terms of the logarithm as a concentrated Gaussian distribution that is a tightly focused distribution around the identity of the Lie group. The filter is applied to estimation on SO(3) a case where a stereo camera setup tracks a crane wire with a payload. The wire, which is under tension and forms a line is monitored by two 2D-cameras, and a line detector is used to obtain a description of how the wire is projected onto each image plane. A model of a spherical pendulum is applied and the estimator is validated by applying it on simulated data, as well as experimental data.
topic Line reconstruction
stereo vision
Lie groups
extended Kalman filter
pendulum
url http://www.mic-journal.no/PDF/2019/MIC-2019-2-3.pdf
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