Yu GuJinhai ZhanZhi LiuJie LiYusheng JiXiaoyan Wang
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 sleep monitoring systems either are obstructive to use or fail to provide adequate coverage. To overcome these shortages, we propose Sleepy, an adaptive and noninvasive sleep monitoring system leveraging channel response in the commercial WiFi devices. Sleepy needs no calibrations or target-dependent training to recognize posture changes during sleep. To achieve that, a Gaussian Mixture Model (GMM) based foreground extraction method has been designed to adaptively distinguish motions like rollovers (foreground) from background (stationary postures). We prototype Sleepy and evaluate it in two real environments. In the short-term controlled experiments, Sleepy achieves 95.04% detection accuracy and 4.07% false negative rate. In the 60-minute real sleep studies, Sleepy demonstrates strong stability. Considering that Sleepy is compatible with existing WiFi infrastructures, it constitutes a low-cost yet promising solution for sleep monitoring.
Yu GuYifan ZhangJie LiYusheng JiXin AnFuji Ren
Jianfei YangHan ZouHao JiangLihua Xie
Bohan YuYuxiang WangKai NiuYouwei ZengTao GuLeye WangCuntai GuanDaqing Zhang
Xiaolong YangXin YuLiangbo XieHao XueMu ZhouQing Jiang
Qizhen ZhouChenshu WuJianchun XingJuelong LiZheng YangQiliang Yang