MotionPhone:一种基于无线检波器的床上身体运动检测与分类系统

Musaab Alaziz, Zhenhua Jia, Murtadha M. N. Aldeer, R. Howard, Yanyong Zhang
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引用次数: 4

摘要

在跟踪患者或个人睡眠时,测量床上活动是一个非常重要的考虑因素。各种各样的应用,如睡眠监测和睡眠中的异常运动,可以通过观察一个人在睡眠中的身体运动来实现。在床上运动可能是睡眠中断的标志,因为它与影响睡眠质量的清醒有关,也可能是许多疾病的征兆。在这项研究中,我们介绍了一种利用地震检波器传感器进行床内运动检测和分类的低调方案。检波器可以感应到每一次床内运动所引起的振动。我们从传感信号中提取了两个特征,我们将其命名为能量峰和对数峰。在这一点上,我们使用了一个简单的基于阈值的计算来识别每个可能的运动。除了运动检测,我们进一步将其分为大运动和小运动。我们在两个月内与15名成员进行了30次测试,对该框架进行了评估。每个实验有35个动作。通过使用我们的两种主要方法,Energy-Peak和Log-Peak,我们的系统可以以2%的低错误率识别床内运动。在分类阶段,我们从每个检测到的运动中提取4个特征,并使用随机森林技术进行分类决策。我们的系统可以将每个动作分类为大小,错误率为1.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MotionPhone: a Wireless Geophone-Based In-Bed Body Motion Detection and Classification System
Measuring in-bed mobility is a very significant consideration when it comes to tracking patients or individuals during sleep. A variety of applications, such as sleep monitoring and unusual movements during sleep, can be enabled by observing a persons body movements throughout sleep. In-bed movement can be a sign of sleep disruption as it is associated with wakefulness that affects the quality of sleep and can be a sign of many illnesses. We introduce, in this study, an unobtrusive scheme for in-bed motion detection and classification using geophones sensor. Geophone can sense the vibration that caused by every in-bed movement. We have extracted two features from the sensed signal, which we named as Energy-Peak and Log-Peak. We, at that point, utilized a straightforward threshold-based calculation to identify each conceivable movement. In addition to movements detection, we further classify them as a big or small motion. We have assessed this framework by doing 30 tests with 15 members over a two-month. There are 35 movements in each experiment. By using our two primary approaches, Energy-Peak and Log-Peak, our system can identify in-bed motions with a 2% as a low error rate. For classification phase, we have extracted 4 features from every detected movement and we have used Random Forest technique for classification decision. Our system can classify every movement as big or small with 1.5% as an error rate.
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