Generalized Video Anomaly Event Detection: Systematic Taxonomy and Comparison of Deep Models

Author:

Liu Yang1ORCID,Yang Dingkang2ORCID,Wang Yan2ORCID,Liu Jing3ORCID,Liu Jun4ORCID,Boukerche Azzedine5ORCID,Sun Peng6ORCID,Song Liang2ORCID

Affiliation:

1. Fudan University, Shanghai, China and University of Toronto, Toronto, Canada

2. Fudan University, Shanghai, China

3. Fudan University, Shanghai, China and University of British Columbia, Vancouver, Canada and Duke Kunshan University, Suzhou, China

4. Singapore University of Technology and Design, Singapore, Singapore

5. University of Ottawa, Ottawa, Canada

6. Duke Kunshan University, Kunshan, China

Abstract

Video Anomaly Detection (VAD) serves as a pivotal technology in the intelligent surveillance systems, enabling the temporal or spatial identification of anomalous events within videos. While existing reviews predominantly concentrate on conventional unsupervised methods, they often overlook the emergence of weakly-supervised and fully-unsupervised approaches. To address this gap, this survey extends the conventional scope of VAD beyond unsupervised methods, encompassing a broader spectrum termed Generalized Video Anomaly Event Detection (GVAED). By skillfully incorporating recent advancements rooted in diverse assumptions and learning frameworks, this survey introduces an intuitive taxonomy that seamlessly navigates through unsupervised, weakly-supervised, supervised and fully-unsupervised VAD methodologies, elucidating the distinctions and interconnections within these research trajectories. In addition, this survey facilitates prospective researchers by assembling a compilation of research resources, including public datasets, available codebases, programming tools, and pertinent literature. Furthermore, this survey quantitatively assesses model performance, delves into research challenges and directions, and outlines potential avenues for future exploration.

Funder

China Mobile Research Fund of the Chinese Ministry of Education

National Natural Science Foundation of China

Specific Research Fund of the Innovation Platform for Academicians of Hainan Province

Shanghai Key Research Laboratory of NSAI

Joint Laboratory on Networked AI Edge Computing Fudan University-Changan

China Scholarship Council

Publisher

Association for Computing Machinery (ACM)

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