Identification Technology of RKE System Using Multi-dimension RF Fingerprints

Weizun Wang, Jie Huang, A. Hu, Mengjia Ding, Jiabao Yu
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Abstract

Recently, remote keyless entry system (RKE system) has been gradually replacing traditional way to unlock car doors for convenience. However, it has been shown that RKE system is vulnerable to cyber attacks including relay attack, amplification attack and cryptographic attack. In order to solve this dilemma, RF fingerprints method was applied to identify car key fobs in this paper. Power spectrum of preamble signal envelope was proposed to extract features while carrier frequency offset and least mean square-based adaptive filter were also used as auxiliary ones. Multi-dimension RF fingerprints were presented in this paper based on three features mentioned above to increase identification accuracy. Support vector machine(SVM) was chosen with 10-fold cross-validation to train classifier model. Corresponding to current research on keyless entry car theft, the classification results in this paper show that signals from various key fobs can be classified with 99.3% accuracy when using Rf fingerprints extracted from multiple features, with false acceptance rate (FAR) of 0.7% and false rejection rate (FRR) of 0.7% under Multiple Discriminant Analysis, Maximum Likelihood (MDA/ML) classifier.
基于多维射频指纹的RKE系统识别技术
近年来,远程无钥匙进入系统(RKE系统)已逐渐取代传统的汽车开门方式,以方便快捷。然而,已有研究表明,RKE系统容易受到网络攻击,包括中继攻击、放大攻击和加密攻击。为了解决这一难题,本文将射频指纹技术应用于汽车钥匙扣的识别。提出了前置信号包络功率谱提取特征,并利用载波频偏和基于最小均方的自适应滤波辅助提取特征。本文基于上述三个特征提出了多维射频指纹,以提高识别精度。选择支持向量机(SVM)进行10倍交叉验证来训练分类器模型。针对目前无钥匙进入汽车盗窃的研究,本文的分类结果表明,在多重特征提取的射频指纹分类器下,各种钥扣信号的分类准确率可达99.3%,在多重判别分析、最大似然(MDA/ML)分类器下,误接受率(FAR)为0.7%,误拒率(FRR)为0.7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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