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Son, Hungsun
Electromechanical System and control Lab.
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Tracking Multiple Unmanned Aerial Vehicles through Occlusion in Low-Altitude Airspace

Author(s)
Memon, Sufyan AliSon, HungsunKim, Wan-GuKhan, Abdul MananShahzad, MohsinKhan, Uzair
Issued Date
2023-04
DOI
10.3390/drones7040241
URI
https://scholarworks.unist.ac.kr/handle/201301/64414
Citation
DRONES, v.7, no.4, pp.241
Abstract
In an intelligent multi-target tracking (MTT) system, the tracking filter cannot track multi-targets significantly through occlusion in a low-altitude airspace. The most challenging issues are the target deformation, target occlusion and targets being concealed by the presence of background clutter. Thus, the true tracks that follow the desired targets are often lost due to the occlusion of uncertain measurements detected by a sensor, such as a motion capture (mocap) sensor. In addition, sensor measurement noise, process noise and clutter measurements degrade the system performance. To avoid track loss, we use the Markov-chain-two (MC2) model that allows the propagation of target existence through the occlusion region. We utilized the MC2 model in linear multi-target tracking based on the integrated probabilistic data association (LMIPDA) and proposed a modified integrated algorithm referred to here as LMIPDA-MC2. We consider a three-dimensional surveillance for tracking occluded targets, such as unmanned aerial vehicles (UAVs) and other autonomous vehicles at low altitude in clutters. We compared the results of the proposed method with existing Markov-chain model based algorithms using Monte Carlo simulations and practical experiments. We also provide track retention and false-track discrimination (FTD) statistics to explain the significance of the LMIPDA-MC2 algorithm.
Publisher
MDPI
ISSN
2504-446X
Keyword (Author)
detectiondata associationfalse-track discrimination (FTD)multi-target tracking (MTT)Markov chain model 2 (MC2)probability of target existence (PTE)autonomous vehicleUAV
Keyword
PROBABILISTIC DATA ASSOCIATIONMULTITARGET TRACKINGCLUTTER

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