Object-size invariant anomaly detection in video-surveillance

Juan C. Sanmiguel, J. Sanchez, Luis Caro Campos
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引用次数: 5

Abstract

Nowadays, there is a growing demand for automated video-based surveillance systems due to increase security concerns. Anomaly detection is a popular application in this area where anomalous events of interest are defined as observed behavior that stands out from its context in space and time. In this paper, we present an approach for the detection of anomalous motion based on the extraction of object-size features that is independent of object size and video resolution. The proposed approach relies on a variable spatial window based on object size that has shown robustness in scenarios that present motion of objects of different sizes. We propose a system composed of four building blocks: background subtraction, feature extraction, event modeling and outlier detection. The proposed approach is evaluated on publicly available datasets which contain instances of abandoned objects of different sizes (considered as anomalies). The experiments carried out demonstrate that our approach outperforms the related state-of-the-art in the selected datasets. The proposal can identify anomalies associated to objects with different sizes and motion without increasing the number of false positives.
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视频监控中对象大小不变异常检测
如今,由于安全问题的增加,对自动视频监控系统的需求不断增长。异常检测是该领域的一个流行应用,其中感兴趣的异常事件被定义为在空间和时间上从其上下文中脱颖而出的观察行为。在本文中,我们提出了一种基于对象大小特征提取的异常运动检测方法,该方法与对象大小和视频分辨率无关。所提出的方法依赖于基于物体大小的可变空间窗口,该窗口在呈现不同大小物体运动的场景中显示出鲁棒性。我们提出了一个由四个模块组成的系统:背景减除、特征提取、事件建模和离群点检测。该方法在公开可用的数据集上进行了评估,这些数据集包含不同大小的废弃物体(被认为是异常)的实例。所进行的实验表明,我们的方法在选定的数据集中优于相关的最新技术。该方案可以识别与不同大小和运动的物体相关的异常,而不会增加误报的数量。
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