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Detecting high indoor crowd density with Wi-Fi localization: a statistical mechanics approach

机译:通过Wi-Fi本地化检测高室内人群密度:一种统计力学方法

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Abstract We address the problem of detecting highly raised crowd density in situations such as indoor dance events. We propose a new method for estimating crowd density by anonymous, non-participatory, indoor Wi-Fi localization of smart phones. Using a probabilistic model inspired by statistical mechanics, and relying only on big data analytics, we tackle three challenges: (1) the ambiguity of Wi-Fi based indoor positioning, which appears regardless of whether the latter is performed with machine learning or with optimization, (2) the MAC address randomization when a device is not connected, and (3) the volatility of packet interarrival times. The main result is that our estimation becomes more—rather than less—accurate when the crowd size increases. This property is crucial for detecting dangerous crowd density.
机译:摘要我们解决了在室内舞蹈事件等情况下检测高度密集的人群密度的问题。我们提出了一种通过匿名,非参与性的智能手机室内Wi-Fi本地化估算人群密度的新方法。使用受统计机制启发的概率模型,并且仅依靠大数据分析,我们解决了三个挑战:(1)基于Wi-Fi的室内定位的歧义,无论后者是通过机器学习还是通过优化来实现,(2)未连接设备时的MAC地址随机化,以及(3)数据包到达时间的波动性。主要结果是,随着人群数量的增加,我们的估计变得更加准确而不是更少。此属性对于检测危险的人群密度至关重要。

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