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WiCount: A Deep Learning Approach for Crowd Counting Using WiFi Signals

机译:WiCount:一种使用WiFi信号进行人群计数的深度学习方法

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摘要

The ubiquitous WiFi devices and recent research efforts on wireless sensing have led to intelligent environments which can sense people's locations and activities in a device-free manner. However, current works are mostly designed for single human environment owing to the complexity of multiple human environment and in turn greatly hinder this technology from real implementation. To realize such device-free sensing in a multiple human environment, the first step-stone is to estimate how many targets or in other words crowd counting, which is not only the basis for multiple human environmental sensing but also lead to many potential applications such as crowd control. Previous efforts for crowd counting using WiFi failed to do so, as the robustness of their method is limited. To this end, we propose WiCount - the first solution using a deep learning approach to infer the number of people robustly in the room with WiFi signals. Our scheme is based on the key intuition that now that it is too complex to model the crowd counting using WiFi directly, we can use deep learning approaches to construct a complex function to fit the correlation between the number of people and Channel State Information (CSI) values. The prototype of WiCount is implemented and evaluated on the commercial WiFi device. The experimental results show that our deep learning model is able to estimate the number of crowd up to 5 with the accuracy of 82.3% in a rather effective and robust manner.
机译:随处可见的WiFi设备以及最近在无线传感方面的研究成果已经导致了可以以无设备方式感知人们的位置和活动的智能环境。但是,由于多个人类环境的复杂性,当前的工作大多是针对单个人类环境设计的,从而极大地阻碍了该技术的实际实现。为了在多人类环境中实现这种无设备感测,第一步是估算有多少目标或换句话说是人群计数,这不仅是多人类环境感测的基础,而且还导致了许多潜在的应用领域。作为人群控制。以前使用WiFi进行人群计数的工作未能做到,因为其方法的鲁棒性受到限制。为此,我们提出了WiCount-第一个使用深度学习方法的解决方案,可以通过WiFi信号可靠地推断房间中的人数。我们的方案基于以下关键直觉:现在太复杂了,无法直接使用WiFi对人群计数进行建模,我们可以使用深度学习方法来构建复杂的函数,以适应人数与信道状态信息(CSI)之间的相关性)值。 WiCount的原型是在商用WiFi设备上实现和评估的。实验结果表明,我们的深度学习模型能够以相当有效和鲁棒的方式估计出最多5个人群,准确率达到82.3%。

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