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Networking Systems for Video Anomaly Detection: A Tutorial and Survey

Author(s)
Liu, Jing; Liu, Yang; Lin, Jieyu; Li, Jielin; Cao, Liang; Sun, Peng; Hu, Bo; Song, Liang; Boukerche, Azzedine; Leung, Victor; ... Show more Show less
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Abstract
The increasing utilization of surveillance cameras in smart cities, coupled with the surge of online video applications, has heightened concerns regarding public security and privacy protection, which propelled automated Video Anomaly Detection (VAD) into a fundamental research task within the Artificial Intelligence (AI) community. With the advancements in deep learning and edge computing, VAD has made significant progress and advances synergized with emerging applications in smart cities and video internet, which has moved beyond the conventional research scope of algorithm engineering to deployable Networking Systems for VAD (NSVAD), a practical hotspot for intersection exploration in the AI, IoVT, and computing fields. In this article, we delineate the foundational assumptions, learning frameworks, and applicable scenarios of various deep learning-driven VAD routes, offering an exhaustive tutorial for novices in NSVAD. In addition, this article elucidates core concepts by reviewing recent advances and typical solutions and aggregating available research resources accessible at https://github.com/fdjingliu/NSVAD. Lastly, this article projects future development trends and discusses how the integration of AI and computing technologies can address existing research challenges and promote open opportunities, serving as an insightful guide for prospective researchers and engineers.
Date issued
2025-05-07
URI
https://hdl.handle.net/1721.1/164873
Department
Massachusetts Institute of Technology. Department of Chemical Engineering
Journal
ACM Computing Surveys
Publisher
ACM
Citation
Jing Liu, Yang Liu, Jieyu Lin, Jielin Li, Liang Cao, Peng Sun, Bo Hu, Liang Song, Azzedine Boukerche, and Victor C.M. Leung. 2025. Networking Systems for Video Anomaly Detection: A Tutorial and Survey. ACM Comput. Surv. 57, 10, Article 270 (October 2025), 37 pages.
Version: Final published version
ISSN
0360-0300

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