Hong, Tao, Zhou, Chunying, Kadoch, Michel, Tang, Tao et Zuo, Zhengfa.
2022.
« Improvement of UAV tracking technology in future 6G complex environment based on GM-PHD filter ».
Electronics, vol. 11, nº 24.
Compte des citations dans Scopus : 4.
Prévisualisation |
PDF
Kadoch-M-2022-26133.pdf - Version publiée Licence d'utilisation : Creative Commons CC BY. Télécharger (3MB) | Prévisualisation |
Résumé
Unmanned aerial vehicles (UAVs) will become an indispensable part of future sixth-generation (6G)-based mobile networks that can provide flexible deposition, strong adaptability, and high service quality. Under the guarantee of blockchain, UAVs can provide efficient communication or computing services for ground intelligence devices and promote the development of wireless communication. However, as the number of UAVs increases, issues regarding UAV path planning, the handling of emergencies, the intrusion of illegal UAVs, etc., will need to be addressed. This paper proposes an improved Gaussian mixture probability hypothesis density (GM-PHD) filter based on machine learning for the target tracking and recognition of non-cooperative UAV swarms. Simulation results demonstrate that the improved filter can effectively suppress clutter interference in complex environments and improve the performance of multi-target recognition and trajectory tracking compared with the traditional GM-PHD filter.
Type de document: | Article publié dans une revue, révisé par les pairs |
---|---|
Professeur: | Professeur Kadoch, Michel |
Affiliation: | Génie électrique |
Date de dépôt: | 26 janv. 2023 23:38 |
Dernière modification: | 03 févr. 2023 15:27 |
URI: | https://espace2.etsmtl.ca/id/eprint/26133 |
Actions (Authentification requise)
Dernière vérification avant le dépôt |