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Sleepy: Wireless Channel Data Driven Sleep Monitoring via Commodity WiFi Devices

机译:Sleepy:无线通道数据驱动睡眠监控通过商品WiFi设备

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摘要

Sleep is a major event of our daily lives. Its quality constitutes a critical indicator of people's health conditions, both mentally and physically. Existing sensor-based or vision-based sleep monitoring systems either are obstructive to use or fail to provide adequate coverage. With the fast expansion of wireless infrastructures nowadays, channel data, which is pervasive and transparent, emerges as another alternative. To this end, we propose Sleepy, a wireless channel data driven sleep monitoring system leveraging commercial WiFi devices. The key idea of Sleepy is that the energy feature of the wireless channel follows a Gaussian Mixture Model (GMM) derived from the accumulated channel data over a long period. Therefore, a GMM based foreground extraction method has been designed to adaptively distinguish motions like rollovers (foreground) from background (stationary postures), leading to certain major merits, e.g., no calibrations or target-dependent training needed. We prototype Sleepy and evaluate it in two real environments. In the short-term controlled experiments, Sleepy achieves 95.65 percent detection accuracy (DA) and 2.16 percent false negative rate (FNR) on average. In the 60-minute real sleep studies, Sleepy demonstrates strong stability, i.e., 0 percent FNR and 98.22 percent DA. Considering that Sleepy is compatible with existing WiFi infrastructure, it constitutes a low-cost yet promising solution for sleep monitoring.
机译:睡眠是我们日常生活的主要活动。其质量构成了人们健康状况的关键指标,术士学和身体。现有的基于传感器或基于视觉的睡眠监测系统是使用或不能提供足够的覆盖率的阻碍性。现在,随着无线基础设施的快速扩展,普遍存在和透明的频道数据作为另一种替代方案出现。为此,我们提出困倦,无线通道数据驱动睡眠监测系统利用商业WiFi设备。困的关键概念是无线信道的能量特征遵循长期衍生自累积信道数据的高斯混合模型(GMM)。因此,基于GMM的前景提取方法旨在自适应地区分来自背景(静止姿势)的滚动(前景)等运动,导致某些主要优点,例如,不需要校准或目标依赖培训。我们的原型昏昏欲睡,并在两个真实环境中评估它。在短期对照实验中,困倦平均地达到了95.65%的检测精度(DA)和2.16%的假负率(FNR)。在60分钟的真实睡眠研究中,困倦表明强大的稳定性,即0%FNR和98.22%DA。考虑到困倦与现有的WiFi基础设施兼容,它构成了睡眠监测的低成本但有希望的解决方案。

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