基于行为分析的物联网人群管理服务

Talal H. Noor
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引用次数: 4

摘要

随着世界人口呈指数级增长,到2020年将达到78亿人,人群管理问题变得更加困难,特别是在需要保持社交距离的情况下(例如,由于COVID-19)。物联网(IoT)技术可以帮助解决这些问题。在本文中,我们提出了一种基于行为分析的物联网服务架构,用于人群管理。我们建议使用基于生成模型作为隐马尔可夫模型的行为分析方法来帮助人群管理者在调用物联网服务时做出正确的决策。所提出的方法是基于从需要人群管理的地点的监控摄像机捕获的视频片段分割成时空流块,以便对任意密集的流场进行边缘化。然后,将每个流块划分为正常和异常。为了演示我们的方法,我们使用了一个需要人群管理的真实案例研究,即穆斯林的朝圣(即朝觐和朝觐),其中使用了真实的数据集进行实验。我们所进行的实验结果在实时性方面是有希望的。这样的结果有望与其他研究人员在文献中发现的结果进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Behavior Analysis-Based IoT Services For Crowd Management
With the world population growing exponentially reaching 7.8 billion people in 2020, the issue of crowd management has become more difficult especially when the situation requires social distancing (e.g. due to COVID-19). The Internet of Things (IoT) technology can help in tackling such issues. In this article, we propose a behavior analysis-based IoT services architecture for crowd management. We propose to use a behavior analysis approach based on using generative model as Hidden Markov Model to help crowd managers to make good decisions in invoking IoT services. The proposed approach is based on sectioning video segments captured from surveillance cameras of locations that require crowd management into spatio-temporal flow-blocks for marginalization of arbitrarily dense flow field. Then, each flow-block is classified as normal and abnormal. To demonstrate our approach, we used a real case study where crowd management is required namely, Muslim’s pilgrimage (i.e. Hajj and Umrah), where real dataset is used for experimenting. The results of the experiments we have conducted are promising in real-time performance. Such results are expected to compare favorably to those found in the literature by other researchers.
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