Reliable Security Algorithm for Drones Using Individual Characteristics From an EEG Signal
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Authors
Singandhupe, Ashutosh
La, Hung M.
Feil-Seifer, David J.
Issue Date
2018
Type
Article
Language
Keywords
UAV, xbee, EEG signal, encryption, advanced encryption standard (AES)
Alternative Title
Abstract
Unmanned aerial vehicles (UAVs) have been applied for both civilian and military applications scientific research involving UAVs has encompassed a wide range of scientific study. However, communication with unmanned vehicles are subject to attack and compromise. Such attacks have been reported as early as 2009, when a Predator UAV's video stream was compromised. Since UAVs extensively utilize autonomous behavior, it is important to develop an autopilot system that is robust to potential cyber-attack. In this paper, we present a biometric system to encrypt communication between a UAV and a computerized base station. This is accomplished by generating a key derived from a user's EEG Beta component. We first extract coefficients from Beta data using Legendre's polynomials. We perform encoding of the coefficients using Bose-Chaudhuri-Hocquenghem encoding and then generate a key from a hash function. The key is used to encrypt the communication between XBees. Also we have introduced scenarios where the communication is attacked. When communication with a UAV is attacked, a safety mechanism directs the UAV to a safe home location. This system has been validated on a commercial UAV under malicious attack conditions.
Description
Citation
Singandhupe, A., La, H. M., & Feil-Seifer, D. (2018). Reliable Security Algorithm for Drones Using Individual Characteristics From an EEG Signal. IEEE Access, 6, 22976�"22986. doi:10.1109/access.2018.2827362
Publisher
License
In Copyright (All Rights Reserved)
Journal
Volume
Issue
PubMed ID
ISSN
2169-3536
