An IoT-Fuzzy-Based Jamming Detection and Recovery System in Wireless Video Surveillance System

Mohammed A. Jasim, T. Atia
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引用次数: 1

Abstract

Wireless video surveillance system is one of the cyber-physical security systems kinds, which transmits the signal of IP cameras through a wireless medium using a radio band. WVSSs are widely deployed with large systems for use in strategic places such as city centers, public transportation, public roads, airports, and play a significant role in critical infrastructure protection. WVSSs are vulnerable to jamming attacks creating an unwanted denial of service. Hence, it is essential to secure this system from jamming attacks. In this paper, three models of IoT-fuzzy inference system-based jamming detection system are proposed for detecting and countermeasure the presence of jamming by computing two jamming detection metrics; PDR and PLR, and based on the result, the system countermeasures this attack by storing the video feed locally in the subsystem nodes. FIS models are based on Mamdani, Tsukamoto, and Sugeno fuzzy logic which optimizes the jamming detection metrics for detecting the jamming attack. The efficiency of these proposed models is compared in detecting jamming signals. The experimental results show that the proposed Tsukamoto model detects jamming attacks with high accuracy and efficiency. Finally, the proposed IoT-Tsukamoto-based model was compared with the existing systems and proved to be superior to them in terms of central processing complexity, accuracy, and countermeasure for this attack.
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基于物联网模糊的无线视频监控系统干扰检测与恢复系统
无线视频监控系统是网络物理安全系统的一种,它利用无线频段将网络摄像机的信号通过无线介质传输。wvss被广泛部署在大型系统中,用于城市中心、公共交通、公共道路、机场等战略场所,在关键基础设施保护中发挥重要作用。wvss容易受到干扰攻击,从而产生不必要的拒绝服务。因此,确保该系统免受干扰攻击至关重要。本文提出了三种基于物联网模糊推理系统的干扰检测系统模型,通过计算两个干扰检测指标来检测和对抗干扰的存在;基于PDR和PLR的结果,系统通过将视频馈送本地存储在子系统节点中来对抗这种攻击。FIS模型基于Mamdani、Tsukamoto和Sugeno模糊逻辑,优化了检测干扰攻击的干扰检测指标。比较了这些模型在检测干扰信号方面的效率。实验结果表明,所提出的冢本模型对干扰攻击具有较高的检测精度和效率。最后,将本文提出的基于iot - tsukamoto的模型与现有系统进行了比较,证明了该模型在中央处理复杂性、准确性和应对该攻击的对策方面都优于现有系统。
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