Active Gait System for Real-Time Surveillance Against Cyber-Physical Attacks

G. Moepi, Topside E. Mathonsi
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Abstract

Cyberterrorism, espionage, and warfare are serious threats to national security. These attacks can harm people or destroy critical infrastructures like the data centres, computer networks, and systems. Surveillance systems currently used in monitoring critical infrastructures, national key points, and military exclusion zones (MEZ) are ineffective in detecting unauthorised intrusions. These issues compromise the stability of the countries, and the safety of the citizens and result in the loss of important assets. This experimental research study developed a Cyber Physical Security (CPS) defense gait-recognition monitoring system. Autonomous Machine Learning (ML) technology was employed to enhance the precision and reliability of the system against CPA, in tracking access, managing security clearances, and triggering alerts in the event of unauthorized entries to restricted areas.  
用于实时监控网络物理攻击的主动步态系统
网络恐怖主义、间谍活动和战争是对国家安全的严重威胁。这些攻击会伤害人员或破坏数据中心、计算机网络和系统等关键基础设施。目前用于监控重要基础设施、国家关键点和军事禁区(MEZ)的监控系统无法有效检测未经授权的入侵。这些问题损害了国家的稳定和公民的安全,并导致重要资产的损失。本实验研究开发了网络物理安全(CPS)防御步态识别监控系统。该系统采用了自主机器学习(ML)技术,以提高系统对 CPA 的精确度和可靠性,跟踪访问情况,管理安全许可,并在未经授权进入禁区时触发警报。
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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