4.0 Article

Hierarchical Learning Framework for UAV Detection and Identification

Journal

IEEE JOURNAL OF RADIO FREQUENCY IDENTIFICATION
Volume 6, Issue -, Pages 176-188

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JRFID.2022.3157653

Keywords

Autonomous aerial vehicles; Feature extraction; Wireless fidelity; Radio frequency; Bluetooth; Sensors; Signal to noise ratio; Autoencoder; Hilbert Huang transform; RF fingerprinting; unmanned aerial system; wavelet packet transform

Funding

  1. NASA [NNX17AJ94A]
  2. National Science Foundation Aerial Experimentation Research Platform for Advanced Wireless (AERPAW) [CNS-1939334]

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This study proposes a radio frequency-based UAV detection and identification system that can accurately detect UAVs or UAV control signals in the presence of other wireless signals, and extract features for further identification.
The ubiquity of unmanned aerial vehicles (UAVs) or drones is posing both security and safety risks to the public as UAVs are now used for cybercrimes. To mitigate these risks, it is important to have a system that can detect or identify the presence of an intruding UAV in a restricted environment. In this work, we propose a radio frequency (RF) based UAV detection and identification system by exploiting signals emanating from both the UAV and its flight controller, respectively. While several RF devices (i.e., Bluetooth and WiFi) operate in the same frequency band as UAVs, the proposed framework utilizes a semi-supervised learning approach for the detection of UAV or UAV's control signals in the presence of other wireless signals such as Bluetooth and WiFi. The semi-supervised learning approach uses stacked denoising autoencoder and local outlier factor algorithms. After the detection of UAV or UAV's control signals, the signal is decomposed by using Hilbert-Huang transform and wavelet packet transform to extract features from the time-frequency-energy domain of the signal. The extracted feature sets are used to train a three-level hierarchical classifier for identifying the type of signals (i.e., UAV or UAV control signal), UAV models, and flight mode of UAV.

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