Modified prediction partitioning algorithm for Gaussian inverse Wishart probability hypothesis density filter using measurement labeling method

The Gaussian inverse Wishart probability hypothesis density filter is a promising approach for tracking multiple extended targets. However, if targets are closely spaced and performing maneuvers, the performance of a Gaussian inverse Wishart probability hypothesis density filter will decline. The re...

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Main Authors: Peng Li, Junda Qiu, Wenhui Wang, Shuzhi Su
Format: Article
Language:English
Published: SAGE Publishing 2021-09-01
Series:Journal of Algorithms & Computational Technology
Online Access:https://doi.org/10.1177/17483026211031154
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spelling doaj-643720d7166e4d389f136214342efde72021-09-24T02:05:03ZengSAGE PublishingJournal of Algorithms & Computational Technology1748-30262021-09-011510.1177/17483026211031154Modified prediction partitioning algorithm for Gaussian inverse Wishart probability hypothesis density filter using measurement labeling methodPeng Li0Junda Qiu1Wenhui Wang2Shuzhi Su3 School of Computer Engineering, , China School of Computer Engineering, , China School of Computer Engineering, , China College of Computer Science and Engineering, , ChinaThe Gaussian inverse Wishart probability hypothesis density filter is a promising approach for tracking multiple extended targets. However, if targets are closely spaced and performing maneuvers, the performance of a Gaussian inverse Wishart probability hypothesis density filter will decline. The reason for this is that the measurement partitioning approaches fail to provide accurate partitions, which influences the component updating process directly. This paper presents a modified prediction partitioning algorithm for the Gaussian inverse Wishart probability hypothesis density filter in order to solve the partitioning problem of closely spaced targets. The inaccuracy of the target prediction information occurred by target maneuvers leads to the above problem, thus a modified prediction partitioning algorithm will label the components and corresponding measurements to improve the prediction accuracy. Simulation results show that the use of modified prediction partitioning can improve the performance of a Gaussian inverse Wishart probability hypothesis density filter by providing more accurate partition results when targets are closely spaced and performing maneuvers.https://doi.org/10.1177/17483026211031154
collection DOAJ
language English
format Article
sources DOAJ
author Peng Li
Junda Qiu
Wenhui Wang
Shuzhi Su
spellingShingle Peng Li
Junda Qiu
Wenhui Wang
Shuzhi Su
Modified prediction partitioning algorithm for Gaussian inverse Wishart probability hypothesis density filter using measurement labeling method
Journal of Algorithms & Computational Technology
author_facet Peng Li
Junda Qiu
Wenhui Wang
Shuzhi Su
author_sort Peng Li
title Modified prediction partitioning algorithm for Gaussian inverse Wishart probability hypothesis density filter using measurement labeling method
title_short Modified prediction partitioning algorithm for Gaussian inverse Wishart probability hypothesis density filter using measurement labeling method
title_full Modified prediction partitioning algorithm for Gaussian inverse Wishart probability hypothesis density filter using measurement labeling method
title_fullStr Modified prediction partitioning algorithm for Gaussian inverse Wishart probability hypothesis density filter using measurement labeling method
title_full_unstemmed Modified prediction partitioning algorithm for Gaussian inverse Wishart probability hypothesis density filter using measurement labeling method
title_sort modified prediction partitioning algorithm for gaussian inverse wishart probability hypothesis density filter using measurement labeling method
publisher SAGE Publishing
series Journal of Algorithms & Computational Technology
issn 1748-3026
publishDate 2021-09-01
description The Gaussian inverse Wishart probability hypothesis density filter is a promising approach for tracking multiple extended targets. However, if targets are closely spaced and performing maneuvers, the performance of a Gaussian inverse Wishart probability hypothesis density filter will decline. The reason for this is that the measurement partitioning approaches fail to provide accurate partitions, which influences the component updating process directly. This paper presents a modified prediction partitioning algorithm for the Gaussian inverse Wishart probability hypothesis density filter in order to solve the partitioning problem of closely spaced targets. The inaccuracy of the target prediction information occurred by target maneuvers leads to the above problem, thus a modified prediction partitioning algorithm will label the components and corresponding measurements to improve the prediction accuracy. Simulation results show that the use of modified prediction partitioning can improve the performance of a Gaussian inverse Wishart probability hypothesis density filter by providing more accurate partition results when targets are closely spaced and performing maneuvers.
url https://doi.org/10.1177/17483026211031154
work_keys_str_mv AT pengli modifiedpredictionpartitioningalgorithmforgaussianinversewishartprobabilityhypothesisdensityfilterusingmeasurementlabelingmethod
AT jundaqiu modifiedpredictionpartitioningalgorithmforgaussianinversewishartprobabilityhypothesisdensityfilterusingmeasurementlabelingmethod
AT wenhuiwang modifiedpredictionpartitioningalgorithmforgaussianinversewishartprobabilityhypothesisdensityfilterusingmeasurementlabelingmethod
AT shuzhisu modifiedpredictionpartitioningalgorithmforgaussianinversewishartprobabilityhypothesisdensityfilterusingmeasurementlabelingmethod
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