Multitarget tracking in sensor networks via efficient information-theoretic sensor selection

In networks composed of moving robots or static sensing nodes, multitarget tracking is critical and fundamental for high-level applications, such as scene analysis or event detection. However, tracking multiple targets in the sensor network is challenging for two reasons: multisensor multitarget fus...

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Main Authors: Ping Wang, Liang Ma, Kai Xue
Format: Article
Language:English
Published: SAGE Publishing 2017-09-01
Series:International Journal of Advanced Robotic Systems
Online Access:https://doi.org/10.1177/1729881417728466
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spelling doaj-e0847b4252fc49f684790dc2ffdf3fa52020-11-25T03:20:54ZengSAGE PublishingInternational Journal of Advanced Robotic Systems1729-88142017-09-011410.1177/1729881417728466Multitarget tracking in sensor networks via efficient information-theoretic sensor selectionPing WangLiang MaKai XueIn networks composed of moving robots or static sensing nodes, multitarget tracking is critical and fundamental for high-level applications, such as scene analysis or event detection. However, tracking multiple targets in the sensor network is challenging for two reasons: multisensor multitarget fusion itself is difficult and dynamic sensor scheduling is necessary to balance the tracking accuracy and energy consumption of the sensor network. In this article, we present a novel information-theoretic sensor selection method for multitarget tracking via the multi-Bernoulli filter. The sensor selection is based on the multi-Bernoulli filtering and a collection of subselection problems for individual target to avoid the combinatorial optimization. A subselection problem for each target is investigated under the framework of partially observed Markov decision process, and we propose to solve it by maximizing the information gain of the probability hypothesis density. Simulation results validate the effectiveness and efficiency of our method for multitarget tracking in sensor networks.https://doi.org/10.1177/1729881417728466
collection DOAJ
language English
format Article
sources DOAJ
author Ping Wang
Liang Ma
Kai Xue
spellingShingle Ping Wang
Liang Ma
Kai Xue
Multitarget tracking in sensor networks via efficient information-theoretic sensor selection
International Journal of Advanced Robotic Systems
author_facet Ping Wang
Liang Ma
Kai Xue
author_sort Ping Wang
title Multitarget tracking in sensor networks via efficient information-theoretic sensor selection
title_short Multitarget tracking in sensor networks via efficient information-theoretic sensor selection
title_full Multitarget tracking in sensor networks via efficient information-theoretic sensor selection
title_fullStr Multitarget tracking in sensor networks via efficient information-theoretic sensor selection
title_full_unstemmed Multitarget tracking in sensor networks via efficient information-theoretic sensor selection
title_sort multitarget tracking in sensor networks via efficient information-theoretic sensor selection
publisher SAGE Publishing
series International Journal of Advanced Robotic Systems
issn 1729-8814
publishDate 2017-09-01
description In networks composed of moving robots or static sensing nodes, multitarget tracking is critical and fundamental for high-level applications, such as scene analysis or event detection. However, tracking multiple targets in the sensor network is challenging for two reasons: multisensor multitarget fusion itself is difficult and dynamic sensor scheduling is necessary to balance the tracking accuracy and energy consumption of the sensor network. In this article, we present a novel information-theoretic sensor selection method for multitarget tracking via the multi-Bernoulli filter. The sensor selection is based on the multi-Bernoulli filtering and a collection of subselection problems for individual target to avoid the combinatorial optimization. A subselection problem for each target is investigated under the framework of partially observed Markov decision process, and we propose to solve it by maximizing the information gain of the probability hypothesis density. Simulation results validate the effectiveness and efficiency of our method for multitarget tracking in sensor networks.
url https://doi.org/10.1177/1729881417728466
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AT liangma multitargettrackinginsensornetworksviaefficientinformationtheoreticsensorselection
AT kaixue multitargettrackinginsensornetworksviaefficientinformationtheoreticsensorselection
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