Multi-branch Neural Networks for Video Anomaly Detection in Adverse Lighting and Weather Conditions

Sam Leroux, Bo Li, P. Simoens
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引用次数: 5

Abstract

Automated anomaly detection in surveillance videos has attracted much interest as it provides a scalable alternative to manual monitoring. Most existing approaches achieve good performance on clean benchmark datasets recorded in well-controlled environments. However, detecting anomalies is much more challenging in the real world. Adverse weather conditions like rain or changing brightness levels cause a significant shift in the input data distribution, which in turn can lead to the detector model incorrectly reporting high anomaly scores. Additionally, surveillance cameras are usually deployed in evolving environments such as a city street of which the appearance changes over time because of seasonal changes or roadworks. The anomaly detection model will need to be updated periodically to deal with these issues. In this paper, we introduce a multi-branch model that is equipped with a trainable preprocessing step and multiple identical branches for detecting anomalies during day and night as well as in sunny and rainy conditions. We experimentally validate our approach on a distorted version of the Avenue dataset and provide qualitative results on real-world surveillance camera data. Experimental results show that our method outperforms the existing methods in terms of detection accuracy while being faster and more robust on scenes with varying visibility.
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多分支神经网络在恶劣光照和天气条件下的视频异常检测
监控视频中的自动异常检测吸引了很多人的兴趣,因为它提供了一种可扩展的人工监控替代方案。大多数现有方法在控制良好的环境中记录的干净基准数据集上都能取得良好的性能。然而,在现实世界中,检测异常要困难得多。恶劣的天气条件,如下雨或改变亮度水平,会导致输入数据分布发生重大变化,这反过来又会导致探测器模型错误地报告高异常分数。此外,监控摄像机通常部署在不断变化的环境中,例如城市街道,由于季节变化或道路工程,其外观会随着时间而变化。异常检测模型需要定期更新以处理这些问题。在本文中,我们引入了一个多分支模型,该模型配备了一个可训练的预处理步骤和多个相同的分支,用于检测白天和黑夜以及晴天和雨天条件下的异常。我们在Avenue数据集的扭曲版本上实验验证了我们的方法,并在真实世界的监控摄像机数据上提供了定性结果。实验结果表明,该方法在检测精度方面优于现有方法,同时在不同可见性场景下具有更快和更强的鲁棒性。
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