Low Complexity Track Initialization from a Small Set of Non-Invertible Measurements

Target tracking from non-invertible measurement sets, for example, incomplete spherical coordinates measured by asynchronous sensors in a sensor network, is a task of data fusion present in a lot of applications. Difficulties in tracking using extended Kalman filters lead to unstable behavior, mainl...

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Main Authors: Wolfgang Koch, Martina Daun, Christian R. Berger
Format: Article
Language:English
Published: SpringerOpen 2008-02-01
Series:EURASIP Journal on Advances in Signal Processing
Online Access:http://dx.doi.org/10.1155/2008/756414
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spelling doaj-1d4c431281c3493ab9307764bd1f65ab2020-11-25T00:51:32ZengSpringerOpenEURASIP Journal on Advances in Signal Processing1687-61722008-02-01200810.1155/2008/756414Low Complexity Track Initialization from a Small Set of Non-Invertible MeasurementsWolfgang KochMartina DaunChristian R. BergerTarget tracking from non-invertible measurement sets, for example, incomplete spherical coordinates measured by asynchronous sensors in a sensor network, is a task of data fusion present in a lot of applications. Difficulties in tracking using extended Kalman filters lead to unstable behavior, mainly caused by poor initialization. Instead of using high complexity numerical batch-estimators, we offer an analytical approach to initialize the filter from a minimum number of observations. This directly pertains to multi-hypothesis tracking (MHT), where in the presence of clutter and/or multiple targets (i) low complexity algorithms are desirable and (ii) using a small set of measurements avoids the combinatorial explosion. Our approach uses no numerical optimization, simply evaluating several equations to find the state estimates. This is possible since we avoid an over-determined setup by initializing only from the minimum necessary subset of measurements. Loss in accuracy is minimized by choosing the best subset using an optimality criterion and incorporating the leftover measurements afterwards. Additionally, we provide the possibility to estimate only sub-sets of parameters, and to reliably model the resulting added uncertainties by the covariance matrix. We compare two different implementations, differing in the approximation of the posterior: linearizing the measurement equation as in the extended Kalman filter (EKF) or employing the unscented transform (UT). The approach will be studied in two practical examples: 3D track initialization using bearingsonly measurements or using slant-range and azimuth only.http://dx.doi.org/10.1155/2008/756414
collection DOAJ
language English
format Article
sources DOAJ
author Wolfgang Koch
Martina Daun
Christian R. Berger
spellingShingle Wolfgang Koch
Martina Daun
Christian R. Berger
Low Complexity Track Initialization from a Small Set of Non-Invertible Measurements
EURASIP Journal on Advances in Signal Processing
author_facet Wolfgang Koch
Martina Daun
Christian R. Berger
author_sort Wolfgang Koch
title Low Complexity Track Initialization from a Small Set of Non-Invertible Measurements
title_short Low Complexity Track Initialization from a Small Set of Non-Invertible Measurements
title_full Low Complexity Track Initialization from a Small Set of Non-Invertible Measurements
title_fullStr Low Complexity Track Initialization from a Small Set of Non-Invertible Measurements
title_full_unstemmed Low Complexity Track Initialization from a Small Set of Non-Invertible Measurements
title_sort low complexity track initialization from a small set of non-invertible measurements
publisher SpringerOpen
series EURASIP Journal on Advances in Signal Processing
issn 1687-6172
publishDate 2008-02-01
description Target tracking from non-invertible measurement sets, for example, incomplete spherical coordinates measured by asynchronous sensors in a sensor network, is a task of data fusion present in a lot of applications. Difficulties in tracking using extended Kalman filters lead to unstable behavior, mainly caused by poor initialization. Instead of using high complexity numerical batch-estimators, we offer an analytical approach to initialize the filter from a minimum number of observations. This directly pertains to multi-hypothesis tracking (MHT), where in the presence of clutter and/or multiple targets (i) low complexity algorithms are desirable and (ii) using a small set of measurements avoids the combinatorial explosion. Our approach uses no numerical optimization, simply evaluating several equations to find the state estimates. This is possible since we avoid an over-determined setup by initializing only from the minimum necessary subset of measurements. Loss in accuracy is minimized by choosing the best subset using an optimality criterion and incorporating the leftover measurements afterwards. Additionally, we provide the possibility to estimate only sub-sets of parameters, and to reliably model the resulting added uncertainties by the covariance matrix. We compare two different implementations, differing in the approximation of the posterior: linearizing the measurement equation as in the extended Kalman filter (EKF) or employing the unscented transform (UT). The approach will be studied in two practical examples: 3D track initialization using bearingsonly measurements or using slant-range and azimuth only.
url http://dx.doi.org/10.1155/2008/756414
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