使用轻量级环境指纹共识检测受损边缘智能相机

Deeraj Nagothu, Ronghua Xu, Yu Chen, Erik Blasch, Alexander J. Aved
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引用次数: 7

摘要

现代智慧城市中视频物联网(IoVT)部署的快速发展使安全的基础设施能够以最少的人为干预实现。然而,对音频视频输入的攻击会影响大型多媒体监控系统的可靠性,因为攻击者能够操纵对实时事件的感知。例如,Deepfake音频/视频攻击和帧复制攻击会导致严重的安全漏洞。提出了一种基于轻量级环境指纹共识的边缘监控系统(LEFC)中受损智能摄像头检测方法。LEFC是一种部分去中心化的身份验证机制,它利用电网频率(ENF)作为环境指纹和分布式账本技术(DLT)。ENF信号携带随机波动的时空签名,这使得数字媒体认证成为可能。以提议的DLT共识机制PoENF (Proof-of-ENF)为骨干,LEFC可以估计和验证媒体记录,并检测由犯罪者控制的拜占庭节点。实验验证了分布式拜占庭网络环境下LEFC方案的可行性和有效性。
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Detecting Compromised Edge Smart Cameras using Lightweight Environmental Fingerprint Consensus
Rapid advances in the Internet of Video Things (IoVT) deployment in modern smart cities has enabled secure infrastructures with minimal human intervention. However, attacks on audio-video inputs affect the reliability of large-scale multimedia surveillance systems as attackers are able to manipulate the perception of live events. For example, Deepfake audio/video attacks and frame duplication attacks can cause significant security breaches. This paper proposes a Lightweight Environmental Fingerprint Consensus based detection of compromised smart cameras in edge surveillance systems (LEFC). LEFC is a partial decentralized authentication mechanism that leverages Electrical Network Frequency (ENF) as an environmental fingerprint and distributed ledger technology (DLT). An ENF signal carries randomly fluctuating spatio-temporal signatures, which enable digital media authentication. With the proposed DLT consensus mechanism named Proof-of-ENF (PoENF) as a backbone, LEFC can estimate and authenticate the media recording and detect byzantine nodes controlled by the perpetrator. The experimental evaluation shows feasibility and effectiveness of proposed LEFC scheme under a distributed byzantine network environment.
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