Video Anomaly Event Detection (VAED) is the core technology of intelligent surveillance systems aiming to temporally or spatially locate anomalous events in videos. With the penetration of deep learning, the recent advances in VAED have diverged various routes and achieved significant success. However, most existing reviews focus on traditional and unsupervised VAED methods, lacking attention to emerging weakly-supervised and fully-unsupervised routes. Therefore, this review extends the narrow VAED concept from unsupervised video anomaly detection to Generalized Video Anomaly Event Detection (GVAED), which provides a comprehensive survey that integrates recent works based on different assumptions and learning frameworks into an intuitive taxonomy and coordinates unsupervised, weakly-supervised, fully-unsupervised, and supervised VAED routes. To facilitate future researchers, this review collates and releases research resources such as datasets, available codes, programming tools, and literature. Moreover, this review quantitatively compares the model performance and analyzes the research challenges and possible trends for future work.
翻译:视频异常事件探测(VAED)是智能监测系统的核心技术,目的是在视频中暂时或空间定位异常事件。随着深层学习的普及,VAED的近期进展使各种途径出现差异,并取得了显著成功。然而,大多数现有审查侧重于传统和不受监督的VAED方法,缺乏对新出现的受监管薄弱和完全不受监督的路径的关注。因此,本次审查将范围狭窄的VAED概念从未经监督的视频异常探测扩大到一般视频异常事件探测(GVAED),该调查提供了一项综合调查,将基于不同假设和学习框架的近期工作纳入直观分类学,并协调不受监督、监管、完全不受监督和监督的VAED路径。为便利未来的研究人员,这项审查整理并释放了诸如数据集、可用代码、编程工具和文献等研究资源。此外,本次审查还从数量上比较了模型业绩,并分析了未来工作的研究挑战和可能趋势。