Tracking Multiple Autonomous Ground Vehicles Using Motion Capture System Operating in a Wireless Network SCIE SCOPUS

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Title
Tracking Multiple Autonomous Ground Vehicles Using Motion Capture System Operating in a Wireless Network
Author(s)
Memon, Sufyan Ali; Kim, Wan Gu; Khan, Samee Ullah; Memon, Tayab Din; Alsaleem, Fahd Nasser; Alhassoon, Khaled; Alsunaydih, Fahad N.
KIOST Author(s)
Kim, Wan Gu(김완구)
Alternative Author(s)
김완구
Publication Year
2024-04
Abstract
The method examines the challenging issues in tracking multiple autonomous ground vehicles (AGVs) using a motion capture system (MoCap) accessible by a wireless network such as standard IEEE 802.11a WIFI protocol. A state-of-art technology such as global positioning system may have limitations in their accuracy and restricted lines of sight. Tracking in these environments entail various complexities such as target (AGV) occlusion, clutter, and the electromagnetic interference that can interrupt communication between AGV and ground-based control station. We present a novel idea that exploits IR signals emitted by the MoCap to fetch position data reflected from AGVs. MoCap uses the Motive software to manipulate the position data necessary for the tracking filter. This method adopted the fixed-interval smoothing based on the joint integrated track splitting filter (FIsJITS) for detecting and tracking the vehicles. FIsJITS obtains track state estimation in both forward and backward directions within fixed time measurement intervals. The multi-track backward predictions are fused in the forward-path track to obtain a-priori smoothing predictions, followed by a smoothing state estimation. This approach also calculates the smoothing target existence probability (TEP) to reinforce target detection, allowing a tracking system to simultaneously track multiple vehicles efficiently within cluttered environments. For a seamless data processing, we utilize the WIFI through a wireless access point (WAP) to transfer the data from MoCap to the computer system where Motive and tracking system softwares are running simultaneously. We conducted the real-time experiments to demonstrate the tracking performance of the proposed AGV system outperforming existing algorithms.
ISSN
2169-3536
URI
https://sciwatch.kiost.ac.kr/handle/2020.kiost/45568
DOI
10.1109/access.2024.3394536
Bibliographic Citation
IEEE Access, v.12, pp.61780 - 61794, 2024
Publisher
Institute of Electrical and Electronics Engineers Inc.
Keywords
AGVs; detection; joint data association; JetBot; motion capture; MoCap; multi-target tracking; MTT; target existence probability; TEP; wireless access point; WAP; Autonomous ground vehicles
Type
Article
Language
English
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