Deep Learning-Based Anomaly Detection in Video Surveillance: A Survey

Anomaly detection in video surveillance is a highly developed subject that is attracting increased attention from the research community. There is great demand for intelligent systems with the capacity to automatically detect anomalous events in streaming videos. Due to this, a wide variety of appro...

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Bibliographic Details
Published inSensors (Basel, Switzerland) Vol. 23; no. 11; p. 5024
Main Authors Duong, Huu-Thanh, Le, Viet-Tuan, Hoang, Vinh Truong
Format Journal Article
LanguageEnglish
Published Switzerland MDPI AG 24.05.2023
MDPI
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Summary:Anomaly detection in video surveillance is a highly developed subject that is attracting increased attention from the research community. There is great demand for intelligent systems with the capacity to automatically detect anomalous events in streaming videos. Due to this, a wide variety of approaches have been proposed to build an effective model that would ensure public security. There has been a variety of surveys of anomaly detection, such as of network anomaly detection, financial fraud detection, human behavioral analysis, and many more. Deep learning has been successfully applied to many aspects of computer vision. In particular, the strong growth of generative models means that these are the main techniques used in the proposed methods. This paper aims to provide a comprehensive review of the deep learning-based techniques used in the field of video anomaly detection. Specifically, deep learning-based approaches have been categorized into different methods by their objectives and learning metrics. Additionally, preprocessing and feature engineering techniques are discussed thoroughly for the vision-based domain. This paper also describes the benchmark databases used in training and detecting abnormal human behavior. Finally, the common challenges in video surveillance are discussed, to offer some possible solutions and directions for future research.
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ISSN:1424-8220
1424-8220
DOI:10.3390/s23115024