论文标题

使用深残余网的RF指纹分类的无人机分类

Drone classification from RF fingerprints using deep residual nets

论文作者

Basak, Sanjoy, Rajendran, Sreeraj, Pollin, Sofie, Scheers, Bart

论文摘要

对于改善监视和安全措施的各种行业,例如机场和核电站,发现无人机变得越来越重要。利用射频(RF)的无人机控制和通信可以为各种环境而没有有利的视线(LOS)条件,可以被动地检测无人机检测方式。在本文中,我们评估了新的逼真的无人机RF数据集中的各种最先进(SOA)模型的基于RF的无人机分类性能。借助新提出的残留卷积神经网络(CNN)模型,我们表明无人机RF频率特征可用于有效分类。考虑到可以从飞行无人机引入的多普勒频率变化,分类器的鲁棒性是在多路径环境中评估的。我们还表明,该模型在不同的无线通道和无人机速度方案下实现了更好的概括能力。此外,新提出的模型的分类性能是在同时的多个无形方案上评估的。与现有框架相比,分类器可实现信噪比(SNR)0 dB的近99%分类精度(SNR)0 dB,在-10 dB SNR下,分类准确度优于5%。

Detecting UAVs is becoming more crucial for various industries such as airports and nuclear power plants for improving surveillance and security measures. Exploiting radio frequency (RF) based drone control and communication enables a passive way of drone detection for a wide range of environments and even without favourable line of sight (LOS) conditions. In this paper, we evaluate RF based drone classification performance of various state-of-the-art (SoA) models on a new realistic drone RF dataset. With the help of a newly proposed residual Convolutional Neural Network (CNN) model, we show that the drone RF frequency signatures can be used for effective classification. The robustness of the classifier is evaluated in a multipath environment considering varying Doppler frequencies that may be introduced from a flying drone. We also show that the model achieves better generalization capabilities under different wireless channel and drone speed scenarios. Furthermore, the newly proposed model's classification performance is evaluated on a simultaneous multi-drone scenario. The classifier achieves close to 99 % classification accuracy for signal-to-noise ratio (SNR) 0 dB and at -10 dB SNR it obtains 5 % better classification accuracy compared to the existing framework.

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