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Non-Invasive Detection of Moving and Stationary Human With WiFi

机译:使用WiFi进行移动和固定人员的非侵入式检测

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Non-invasive human sensing based on radio signals has attracted a great deal of research interest and fostered a broad range of innovative applications of localization, gesture recognition, smart health-care, etc., for which a primary primitive is to detect human presence. Previous works have studied the detection of moving humans via signal variations caused by human movements. For stationary people, however, existing approaches often employ a prerequisite scenario-tailored calibration of channel profile in human-free environments. Based on in-depth understanding of human motion induced signal attenuation reflected by PHY layer channel state information (CSI), we propose DeMan, a unified scheme for non-invasive detection of moving and stationary human on commodity WiFi devices. DeMan takes advantage of both amplitude and phase information of CSI to detect moving targets. In addition, DeMan considers human breathing as an intrinsic indicator of stationary human presence and adopts sophisticated mechanisms to detect particular signal patterns caused by minute chest motions, which could be destroyed by significant whole-body motion or hidden by environmental noises. By doing this, DeMan is capable of simultaneously detecting moving and stationary people with only a small number of prior measurements for model parameter determination, yet without the cumbersome scenario-specific calibration. Extensive experimental evaluation in typical indoor environments validates the great performance of DeMan in various human poses and locations and diverse channel conditions. Particularly, DeMan provides a detection rate of around 95% for both moving and stationary people, while identifies human-free scenarios by 96%, all of which outperforms existing methods by about 30%.
机译:基于无线电信号的非侵入式人类感知已经引起了广泛的研究兴趣,并促进了定位,手势识别,智能医疗等领域的广泛创新应用,其主要原语是检测人类的存在。先前的工作已经研究了通过人体运动引起的信号变化来检测运动中的人体。但是,对于平稳的人来说,现有方法通常会在无人值守的环境中采用先决条件的场景量身定做的频道配置文件校准。基于对PHY层通道状态信息(CSI)反映的人体运动引起的信号衰减的深入了解,我们提出了DeMan,这是一种用于无创检测商品WiFi设备上活动和静止人体的统一方案。 DeMan利用CSI的幅度和相位信息来检测运动目标。此外,DeMan将人的呼吸视为人类静止状态的内在指标,并采用复杂的机制来检测由微小的胸部运动引起的特定信号模式,这些信号可能会因明显的全身运动而被破坏或被环境噪声所掩盖。这样,DeMan能够通过少量的先前测量来同时检测运动和静止的人,以进行模型参数确定,而无需进行繁琐的特定于场景的校准。在典型的室内环境中进行的广泛实验评估验证了DeMan在各种人体姿势和位置以及各种通道条件下的出色性能。特别是,DeMan为移动和静止的人提供了约95%的检测率,而识别无人的场景的检测率为96%,所有这些检测器的性能都比现有方法高出约30%。

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