Critical Infrastructure Security Against Drone Attacks Using Visual Analytics
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Published version
Embargoed until: 2222-01-01
Embargoed until: 2222-01-01
Editors
Tzovaras, D
Giakoumis, D
Vincze, M
Argyros, A
Pagination
713 - 722
Publisher
ISBN-13
978-3-030-34995-0
DOI
10.1007/978-3-030-34995-0_65
Metadata
Show full item recordAbstract
The recent developments in the field of unmanned aerial vehicles (UAV or drones) technology has generated a lot of interdisciplinary applications, ranging from remote surveillance of energy infrastructure, to agriculture. However, in the context of national security, low-cost drone equipment has also been viewed as an easy means to cause destructive effects against national critical infrastructures and civilian population. Addressing the challenge of real-time detection and continuous tracking, this paper proposed presents a holistic architecture consisting of both software and hardware design. The software-based video analytics component leverages upon the advancement of Region based Fully Convolutional Network model for drone detection. The hardware component includes a low-cost sensing equipment powered by Raspberry Pi for controlling the camera platform for continuously tracking the orientation of the drone by streaming the video footage captured from the long-range surveillance camera. The novelty of the proposed framework is twofold namely the detection of the drone in real-time and continuous tracking of the detected drone through controlling the camera platform. The framework relies on the capability of the long-range camera to lock into the drone and subsequently track the drone through space. The analytics processing component utilises the NVIDIA$$\circledR $$ GeForce$$\circledR $$ GTX 1080 with 8 GB GDDR5X GPU. The experimental results of the proposed framework have been validated against real-world threat scenarios simulated for the protection of the national critical infrastructure.