Extended Kalman Doppler tracking and model determination for multi-sensor short-range radar

A tracking solution for collision avoidance in industrial machine tools based on short-range millimeter-wave radar Doppler observations is presented. At the core of the tracking algorithm there is an Extended Kalman Filter (EKF) that provides dynamic estimation and localization in real-time. The und...

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Main Authors: T. J. Mittermaier, U. Siart, T. F. Eibert, S. Bonerz
Format: Article
Language:deu
Published: Copernicus Publications 2016-09-01
Series:Advances in Radio Science
Online Access:http://www.adv-radio-sci.net/14/39/2016/ars-14-39-2016.pdf
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spelling doaj-60cbf52668e045c78b4e98c962a052d22020-11-25T01:51:51ZdeuCopernicus PublicationsAdvances in Radio Science 1684-99651684-99732016-09-0114394610.5194/ars-14-39-2016Extended Kalman Doppler tracking and model determination for multi-sensor short-range radarT. J. Mittermaier0U. Siart1T. F. Eibert2S. Bonerz3Chair of High-Frequency Engineering, Technical University of Munich, 80290 Munich, GermanyChair of High-Frequency Engineering, Technical University of Munich, 80290 Munich, GermanyChair of High-Frequency Engineering, Technical University of Munich, 80290 Munich, GermanyOtt-Jakob Spanntechnik GmbH, Industriestr. 3–7, 87663 Lengenwang, GermanyA tracking solution for collision avoidance in industrial machine tools based on short-range millimeter-wave radar Doppler observations is presented. At the core of the tracking algorithm there is an Extended Kalman Filter (EKF) that provides dynamic estimation and localization in real-time. The underlying sensor platform consists of several homodyne continuous wave (CW) radar modules. Based on In-phase-Quadrature (IQ) processing and down-conversion, they provide only Doppler shift information about the observed target. Localization with Doppler shift estimates is a nonlinear problem that needs to be linearized before the linear KF can be applied. The accuracy of state estimation depends highly on the introduced linearization errors, the initialization and the models that represent the true physics as well as the stochastic properties.<br><br> The important issue of filter consistency is addressed and an initialization procedure based on data fitting and maximum likelihood estimation is suggested. Models for both, measurement and process noise are developed. Tracking results from typical three-dimensional courses of movement at short distances in front of a multi-sensor radar platform are presented.http://www.adv-radio-sci.net/14/39/2016/ars-14-39-2016.pdf
collection DOAJ
language deu
format Article
sources DOAJ
author T. J. Mittermaier
U. Siart
T. F. Eibert
S. Bonerz
spellingShingle T. J. Mittermaier
U. Siart
T. F. Eibert
S. Bonerz
Extended Kalman Doppler tracking and model determination for multi-sensor short-range radar
Advances in Radio Science
author_facet T. J. Mittermaier
U. Siart
T. F. Eibert
S. Bonerz
author_sort T. J. Mittermaier
title Extended Kalman Doppler tracking and model determination for multi-sensor short-range radar
title_short Extended Kalman Doppler tracking and model determination for multi-sensor short-range radar
title_full Extended Kalman Doppler tracking and model determination for multi-sensor short-range radar
title_fullStr Extended Kalman Doppler tracking and model determination for multi-sensor short-range radar
title_full_unstemmed Extended Kalman Doppler tracking and model determination for multi-sensor short-range radar
title_sort extended kalman doppler tracking and model determination for multi-sensor short-range radar
publisher Copernicus Publications
series Advances in Radio Science
issn 1684-9965
1684-9973
publishDate 2016-09-01
description A tracking solution for collision avoidance in industrial machine tools based on short-range millimeter-wave radar Doppler observations is presented. At the core of the tracking algorithm there is an Extended Kalman Filter (EKF) that provides dynamic estimation and localization in real-time. The underlying sensor platform consists of several homodyne continuous wave (CW) radar modules. Based on In-phase-Quadrature (IQ) processing and down-conversion, they provide only Doppler shift information about the observed target. Localization with Doppler shift estimates is a nonlinear problem that needs to be linearized before the linear KF can be applied. The accuracy of state estimation depends highly on the introduced linearization errors, the initialization and the models that represent the true physics as well as the stochastic properties.<br><br> The important issue of filter consistency is addressed and an initialization procedure based on data fitting and maximum likelihood estimation is suggested. Models for both, measurement and process noise are developed. Tracking results from typical three-dimensional courses of movement at short distances in front of a multi-sensor radar platform are presented.
url http://www.adv-radio-sci.net/14/39/2016/ars-14-39-2016.pdf
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