A mixed target estimation fusion algorithm based on Gibbs‐GLMB and federated filter

Abstract Mixed targets are composed of point targets, extended targets, and group targets. The point target can produce one measurement at most, the extended target and the group target can produce multiple measurements, but the sub‐goals of the group target have a certain dependency relationship. A...

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Main Authors: Yu Liu, Zhangming Peng, Shibo Gao, Jiangning Li
Format: Article
Language:English
Published: Wiley 2022-03-01
Series:IET Cyber-systems and Robotics
Subjects:
Online Access:https://doi.org/10.1049/csy2.12044
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author Yu Liu
Zhangming Peng
Shibo Gao
Jiangning Li
author_facet Yu Liu
Zhangming Peng
Shibo Gao
Jiangning Li
author_sort Yu Liu
collection DOAJ
description Abstract Mixed targets are composed of point targets, extended targets, and group targets. The point target can produce one measurement at most, the extended target and the group target can produce multiple measurements, but the sub‐goals of the group target have a certain dependency relationship. At this time, the estimated fusion of the group target is converted to the estimated fusion of sub‐targets with formation motion structure, and the distance among the sub‐targets is very close, which brings difficulties to the estimated fusion of mixed targets. This paper combines the adjacency matrix in graph theory to dynamically model the discernible group target and introduces the concept of deformation. Also, it uses the finite mixture model method to dynamically model the extended target. Then the Gibbs‐GLMB algorithm is used to estimate the state and number of the mixed targets. A dynamic detection federated filter fusion algorithm is proposed to fuse the mixed targets state estimates. The effectiveness of the algorithm is verified in the final simulation.
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spelling doaj.art-5fb7d4963b8e49fbaa91de8bca13f9792022-12-21T21:11:12ZengWileyIET Cyber-systems and Robotics2631-63152022-03-0141617510.1049/csy2.12044A mixed target estimation fusion algorithm based on Gibbs‐GLMB and federated filterYu Liu0Zhangming Peng1Shibo Gao2Jiangning Li3School of Automation Hangzhou Dianzi University Hangzhou ChinaSchool of Mechanical Hangzhou Dianzi University Hangzhou ChinaBeijing Aerospace Automatic Control Institute Beijing ChinaSchool of Automation Hangzhou Dianzi University Hangzhou ChinaAbstract Mixed targets are composed of point targets, extended targets, and group targets. The point target can produce one measurement at most, the extended target and the group target can produce multiple measurements, but the sub‐goals of the group target have a certain dependency relationship. At this time, the estimated fusion of the group target is converted to the estimated fusion of sub‐targets with formation motion structure, and the distance among the sub‐targets is very close, which brings difficulties to the estimated fusion of mixed targets. This paper combines the adjacency matrix in graph theory to dynamically model the discernible group target and introduces the concept of deformation. Also, it uses the finite mixture model method to dynamically model the extended target. Then the Gibbs‐GLMB algorithm is used to estimate the state and number of the mixed targets. A dynamic detection federated filter fusion algorithm is proposed to fuse the mixed targets state estimates. The effectiveness of the algorithm is verified in the final simulation.https://doi.org/10.1049/csy2.12044mixed targettrack fusiontracking control
spellingShingle Yu Liu
Zhangming Peng
Shibo Gao
Jiangning Li
A mixed target estimation fusion algorithm based on Gibbs‐GLMB and federated filter
IET Cyber-systems and Robotics
mixed target
track fusion
tracking control
title A mixed target estimation fusion algorithm based on Gibbs‐GLMB and federated filter
title_full A mixed target estimation fusion algorithm based on Gibbs‐GLMB and federated filter
title_fullStr A mixed target estimation fusion algorithm based on Gibbs‐GLMB and federated filter
title_full_unstemmed A mixed target estimation fusion algorithm based on Gibbs‐GLMB and federated filter
title_short A mixed target estimation fusion algorithm based on Gibbs‐GLMB and federated filter
title_sort mixed target estimation fusion algorithm based on gibbs glmb and federated filter
topic mixed target
track fusion
tracking control
url https://doi.org/10.1049/csy2.12044
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AT jiangningli amixedtargetestimationfusionalgorithmbasedongibbsglmbandfederatedfilter
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AT zhangmingpeng mixedtargetestimationfusionalgorithmbasedongibbsglmbandfederatedfilter
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