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首页> 外文期刊>EURASIP journal on image and video processing >An online graph-based anomalous change detection strategy for unsupervised video surveillance
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An online graph-based anomalous change detection strategy for unsupervised video surveillance

机译:基于在线图的无监督视频监控的异常变化检测策略

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Abstract Due to various accidents and crime threats to an unspecified number of people, many surveillance technologies have been studied as an interest in individual security continues to increase throughout society. In particular, intelligent video surveillance technology is one of the most active research areas in the field of surveillance; this popularity has been spurred by recent advances in computer vision/image processing and machine learning. The main goal is to automatically detect, recognize, and analyze objects of interest from collected sensor information and then efficiently extract/utilize this useful information, such as by detecting abnormal events or intruders and recognizing objects. Anomalous event detection is a key component of security, and many existing anomaly detection algorithms rely on a foreground subtraction process to detect changes in the foreground scene. By comparing input image frames with a reference image, changed areas of the image can be efficiently detected. However, this technique can be insensitive to static changes and has difficulties in noisy environments since it depends on a reference image. We propose a new strategy for improved dynamic/static change detection that complements the weak points of existing detection methods, which have low robustness in noisy environments. To achieve this goal, we employed a self-organizing map (SOM) for data clustering and regarded the cluster distribution of neurons, represented by the weight of the optimized SOM, as a directed graph problem. We then applied the shortest path algorithm to recognize anomalous events. The real-time monitoring capability of the proposed change detection system was verified by applying it to self-produced test data and the CDnet-2014 dataset. This system showed robustness against noise that was superior to other surveillance systems in various environments.
机译:摘要由于各种事故和犯罪威胁对未指明数量的人,许多监视技术已经被研究,因为对个人安全的兴趣继续增加整个社会。特别是,智能视频监控技术是监视领域中最活跃的研究领域之一;这种普及是计算机视觉/图像处理和机器学习的最新进展。主要目标是自动检测,识别和分析来自收集的传感器信息的感兴趣的对象,然后有效地提取/利用这种有用的信息,例如通过检测异常事件或入侵者并识别对象。异常事件检测是安全的关键组件,并且许多现有的异常检测算法依赖于前景减法过程来检测前景场景中的变化。通过将输入图像帧与参考图像进行比较,可以有效地检测图像的改变区域。然而,这种技术可以对静态变化不敏感,并且在嘈杂的环境中具有困难,因为它取决于参考图像。我们提出了一种改进动态/静态变化检测的新策略,这些策略补充了现有检测方法的弱点,在嘈杂的环境中具有低稳健性。为实现这一目标,我们使用了一个自组织地图(SOM),用于数据聚类,并考虑了神经元的集群分布,由优化的SOM的权重作为定向图问题。然后,我们将最短的路径算法应用于识别异常事件。通过将其应用于自我生产的测试数据和CDNet-2014数据集来验证所提出的更改检测系统的实时监控能力。该系统显示出对各种环境中的其他监视系统的噪声稳健性。

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