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Group Target Tracking Based on MS-MeMBer Filters

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posted on 2023-10-05, 09:52 authored by Z Zhang, J Sun, Huiyu Zhou, C Xu

This paper presents a new group target tracking method based on the standard multi-sensor multi-target multi-Bernoulli (MS-MeMBer) filter. In the prediction step, the group structure is used to constrain the movement of the constituent members within the respective groups. Specifically, the group of members is considered as an undirected random graph. Combined with the virtual leader-follower model, the motion equation of the members within groups is formulated. In the update step, the partitioning problem of multiple sensors is transformed into a multi-dimensional assignment (MDA) problem. Compared with the original two-step greedy partitioning mechanism, the MDA algorithm achieves better measurement partitions in group target tracking scenarios. To evaluate the performance of the proposed method, a simulation scenario including group splitting and merging is established. Results show that, compared with the standard MS-MeMBer filter, our method can effectively estimate the cardinality of members and groups at the cost of increasing computational load. The filtering accuracy of the proposed method outperforms that of the MS-MeMBer filter. 

Funding

This research was funded by the National Natural Science Foundation of China (No. 62073334), and the Royal Society-Newton Advanced Fellowship (No. NA160342).

History

Citation

Group Target Tracking Based on MS-MeMBer Filters

Author affiliation

Department of Informatics

Version

  • VoR (Version of Record)

Published in

Remote Sensing

Volume

13

Issue

10

Publisher

MDPI AG

issn

2072-4292

Acceptance date

2021-05-07

Copyright date

2021

Available date

2023-10-05

Language

en

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