Pubblicato online: 27 nov 2024
Ricevuto: 08 lug 2024
Accettato: 09 ott 2024
DOI: https://doi.org/10.2478/amns-2024-3555
Parole chiave
© 2024 Zhengqiang Xiong et al., published by Sciendo
This work is licensed under the Creative Commons Attribution 4.0 International License.
The purpose of this paper is to explore the effective monitoring and countermeasures of low-altitude UAVs through multi-sensor coordination so as to escort the sustainable development of a “low-altitude economy”. The core work of this paper centers on multi-source imaging sensing, precise positioning, identification, and behavioral feature extraction of low-altitude UAV targets. Different types of sensors, including visual sensors, radar sensors, sound sensors, etc., are integrated to build a multi-source sensing system, which realizes all-round and multi-angle monitoring of low-altitude UAVs. The improved YOLOv7-Tiny model achieves accurate detection of UAV targets based on this basis. In order to further improve the intelligence level of monitoring and countermeasures, the actuator-evaluator framework of reinforcement learning algorithms is introduced to construct a reinforcement learning framework of “multi-source perception-intelligent cognition-assisted decision-making”. The maximum detection accuracy of the YOLOv7-Tiny-NET model is 0.837, and the model size of the YOLOv7-Tiny-NET model is reduced by 3.52MB and 37.8 f/s increases the detection speed compared with SAG-YOLOv5s. The maximum success rate of the autonomous decision-making algorithm of UAV can be up to 78%~88% when making autonomous decisions on dynamic target tasks. Through the accurate monitoring and intelligent countermeasures of low-altitude drones, it can effectively prevent unmanned aircraft from flying illegally, protect personal privacy, and maintain public safety, thus promoting the sustainable development of a “low-altitude economy” on a healthy and orderly track.
