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Micro-UAV Detection and Identification Based on Radio Frequency Signature

机译:基于射频签名的微免维检测与识别

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This paper mainly focuses on the detection and identification on micro-unmanned aerial vehicles (UAVs) using radio frequency (RF) signature of the signals from UAV downlink communication. To effectively perform detection and identification, feature engineering is carried out to describe the signature of different micro-UAV signals. The approach for feature engineering is based on the division of raw continuous sampled signals into several valid frames in time domain. In each frame, cyclostationarity features as well as kurtosis and spectrum factors are extracted after signal preprocessing. Selected features of UAV signals and ambient noise are fed to support vector machine (SVM) and k-nearest neighbor (KNN) models to obtain a well-trained classifier. Then the classifier is used to detect and identify non-cooperative micro-UAVs. In the detection phase, all detected UAV signals from ambient noise, specifically WiFi signal in this paper, are treated as invading non-cooperative micro-UAVs where the detection scenario is assumed as a no-fly-zone. In the identification phase, the type of micro-UAV is identified based on its downlink communication protocol from the detected UAV signals. In this paper, two kinds of micro-UAV signals and ambient WiFi signal as background interference are tested versus various signal-to-noise ratio (SNR) levels. Experimental results show that the proposed method proves to be feasible to detect micro-UAVs and identify the protocol UAV used in downlink communication. More different types of micro-UAV signals will be sampled into database for the future work.
机译:本文主要专注于使用来自UAV下行链路通信的信号的射频(RF)签名对微无人驾驶飞行器(UAV)的检测和识别。为了有效地执行检测和识别,执行特征工程来描述不同微UAV信号的签名。特征工程方法基于原始连续采样信号的划分为时域中的几个有效帧。在每帧中,在信号预处理之后提取裂纹组织特征以及峰氏症和谱因子。 UAV信号和环境噪声的所选功能馈送以支持向量机(SVM)和K最近邻(KNN)模型,以获得训练有素的分类器。然后,分类器用于检测和识别非协作的微观UAV。在检测阶段中,所有检测到来自环境噪声的UAV信号,特别是WiFi信号,在本文中被视为入侵非协作的微观无人机,其中假设检测场景作为无飞区域。在识别阶段,基于从检测到的UAV信号的下行链路通信协议识别微免维的类型。在本文中,测试了两种微免维信号和环境WiFi信号作为背景干扰,而是各种信噪比(SNR)级别。实验结果表明,该方法证明是可行的,可以检测微无人机,并确定下行链路通信中使用的协议UAV。将在数据库中对更不同类型的微无UAV信号进行将来进行。

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