Unauthorized Drone Detection: Experiments and Prototypes
- URL: http://arxiv.org/abs/2212.01436v1
- Date: Fri, 2 Dec 2022 20:43:29 GMT
- Title: Unauthorized Drone Detection: Experiments and Prototypes
- Authors: Muhammad Asif Khan, Hamid Menouar, Osama Muhammad Khalid, and Adnan
Abu-Dayya
- Abstract summary: We present a novel encryption-based drone detection scheme that uses a two-stage verification of the drone's received signal strength indicator ( RSSI) and the encryption key generated from the drone's position coordinates.
- Score: 0.8294692832460543
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The increase in the number of unmanned aerial vehicles a.k.a. drones pose
several threats to public privacy, critical infrastructure and cyber security.
Hence, detecting unauthorized drones is a significant problem which received
attention in the last few years. In this paper, we present our experimental
work on three drone detection methods (i.e., acoustic detection, radio
frequency (RF) detection, and visual detection) to evaluate their efficacy in
both indoor and outdoor environments. Owing to the limitations of these
schemes, we present a novel encryption-based drone detection scheme that uses a
two-stage verification of the drone's received signal strength indicator (RSSI)
and the encryption key generated from the drone's position coordinates to
reliably detect an unauthorized drone in the presence of authorized drones.
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