Voiceprint: A Novel Sybil Attack Detection Method Based on RSSI for VANETs

Yuan Yao, Bin Xiao, Gaofei Wu, Xue Liu, Zhiwen Yu, Kailong Zhang, Xingshe Zhou
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引用次数: 33

Abstract

Vehicular Ad Hoc Networks (VANETs) enable vehicle-to-vehicle (V2V) and vehicle-to-infrastructure (V2I) communications that bring many benefits and conveniences to improve the road safety and drive comfort in future transportation systems. Sybil attack is considered one of the most risky threats in VANETs since a Sybil attacker can generate multiple fake identities with false messages to severely impair the normal functions of safety-related applications. In this paper, we propose a novel Sybil attack detection method based on Received Signal Strength Indicator (RSSI), Voiceprint, to conduct a widely applicable, lightweight and full-distributed detection for VANETs. To avoid the inaccurate position estimation according to predefined radio propagation models in previous RSSI-based detection methods, Voiceprint adopts the RSSI time series as the vehicular speech and compares the similarity among all received time series. Voiceprint does not rely on any predefined radio propagation model, and conducts independent detection without the support of the centralized infrastructure. It has more accurate detection rate in different dynamic environments. Extensive simulations and real-world experiments demonstrate that the proposed Voiceprint is an effective method considering the cost, complexity and performance.
声纹:一种新的基于RSSI的vanet女黑客攻击检测方法
车辆自组织网络(VANETs)实现了车辆对车辆(V2V)和车辆对基础设施(V2I)的通信,为提高未来交通系统的道路安全性和驾驶舒适性带来了许多好处和便利。Sybil攻击被认为是vanet中最危险的威胁之一,因为Sybil攻击者可以生成多个带有虚假消息的假身份,严重损害安全相关应用程序的正常功能。本文提出了一种基于RSSI (Received Signal Strength Indicator,接收信号强度指标)声纹的Sybil攻击检测方法,对vanet进行了广泛适用、轻量化、全分布式的检测。为了避免以往基于RSSI的检测方法根据预定义的无线电传播模型进行位置估计不准确,声纹采用RSSI时间序列作为车辆语音,并对接收到的所有时间序列进行相似性比较。声纹不依赖于任何预定义的无线电传播模型,在没有集中基础设施支持的情况下进行独立检测。在不同的动态环境下具有更准确的检测率。大量的仿真和实际实验表明,从成本、复杂度和性能等方面考虑,该方法是一种有效的声纹识别方法。
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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