Crowd anomaly detection is one of the most popular topics in computer vision in the context of smart cities. A plethora of deep learning methods have been proposed that generally outperform other machine learning solutions. Our review primarily discusses algorithms that were published in mainstream conferences and journals between 2020 and 2022. We present datasets that are typically used for benchmarking, produce a taxonomy of the developed algorithms, and discuss and compare their performances. Our main findings are that the heterogeneities of pre-trained convolutional models have a negligible impact on crowd video anomaly detection performance. We conclude our discussion with fruitful directions for future research.
翻译:人群异常现象的检测是智能城市中计算机视觉中最受欢迎的话题之一。 大量深层次的学习方法已经提出,通常优于其他机器学习解决方案。 我们的审查主要讨论了2020年至2022年在主流会议和期刊上公布的算法。 我们介绍了通常用于基准设定的数据集,对发达算法进行分类,并讨论和比较其表现。 我们的主要发现是,预先训练的革命模型的异质性对人群视频异常现象的检测效果影响甚微。 我们结束我们的讨论,为今后的研究提供富有成果的指导。