SPLGAug 26, 2023

A Two-Dimensional Deep Network for RF-based Drone Detection and Identification Towards Secure Coverage Extension

arXiv:2308.13906v16 citationsh-index: 30
Originality Synthesis-oriented
AI Analysis

This work addresses security issues like unauthorized drone access for coverage extension, but it is incremental as it combines existing STFT and ResNet methods.

The paper tackles the problem of detecting and identifying drones using radio frequency signals to address security concerns, achieving higher accuracy and faster convergence on an extended dataset with balanced performance on a raw dataset.

As drones become increasingly prevalent in human life, they also raises security concerns such as unauthorized access and control, as well as collisions and interference with manned aircraft. Therefore, ensuring the ability to accurately detect and identify between different drones holds significant implications for coverage extension. Assisted by machine learning, radio frequency (RF) detection can recognize the type and flight mode of drones based on the sampled drone signals. In this paper, we first utilize Short-Time Fourier. Transform (STFT) to extract two-dimensional features from the raw signals, which contain both time-domain and frequency-domain information. Then, we employ a Convolutional Neural Network (CNN) built with ResNet structure to achieve multi-class classifications. Our experimental results show that the proposed ResNet-STFT can achieve higher accuracy and faster convergence on the extended dataset. Additionally, it exhibits balanced performance compared to other baselines on the raw dataset.

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