Visible to the public Physical Security Detectors for Critical Infrastructures Against New-Age Threat of Drones and Human Intrusion

TitlePhysical Security Detectors for Critical Infrastructures Against New-Age Threat of Drones and Human Intrusion
Publication TypeConference Paper
Year of Publication2020
AuthorsZhang, X., Chandramouli, K., Gabrijelcic, D., Zahariadis, T., Giunta, G.
Conference Name2020 IEEE International Conference on Multimedia Expo Workshops (ICMEW)
Date PublishedJuly 2020
PublisherIEEE
ISBN Number978-1-7281-1485-9
Keywordscomplex cyber-physical systems, continuous stream, critical infrastructure operators, critical infrastructure security, critical infrastructures, cyber incidents, deep video, Deep-learning, DEFENDER project, distributed cyber-physical systems, drone detection, early stage threat detection, fast restoration, human intruders, human intrusion, Intrusion detection, learning (artificial intelligence), Media Data, Metrics, modern critical infrastructures, multithreaded media input streams, neural nets, neural network deep-learning model, NVIDIA GeForce GTX 1080, NVIDIA GeForce RTX 2070 Max-Q Design, physical intrusion, physical security detectors, physical security sensors, proactive protection, pubcrawl, real-time threat identification, Region based Fully Connected Neural Network (RFCN), remotely operated vehicles, resilience, Resiliency, Scalability, security of data, video analytics solution, Vulnerability
Abstract

Modern critical infrastructures are increasingly turning into distributed, complex Cyber-Physical systems that need proactive protection and fast restoration to mitigate physical or cyber incidents or attacks. Addressing the need for early stage threat detection against physical intrusion, the paper presents two physical security sensors developed within the DEFENDER project for detecting the intrusion of drones and humans using video analytics. The continuous stream of media data obtained from the region of vulnerability and proximity is processed using Region based Fully Connected Neural Network deep-learning model. The novelty of the pro-posed system relies in the processing of multi-threaded media input streams for achieving real-time threat identification. The video analytics solution has been validated using NVIDIA GeForce GTX 1080 for drone detection and NVIDIA GeForce RTX 2070 Max-Q Design for detecting human intruders. The experimental test bed for the validation of the proposed system has been constructed to include environments and situations that are commonly faced by critical infrastructure operators such as the area of protection, tradeoff between angle of coverage against distance of coverage.

URLhttps://ieeexplore.ieee.org/document/9106043
DOI10.1109/ICMEW46912.2020.9106043
Citation Keyzhang_physical_2020