HB-Phone: A Bed-Mounted Geophone-Based Heartbeat Monitoring System

Zhenhua Jia, Musaab Alaziz, Xiang Chi, R. Howard, Yanyong Zhang, Pei Zhang, W. Trappe, A. Sivasubramaniam, N. An
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引用次数: 59

Abstract

Heartbeat monitoring during sleep is critically important to ensuring the well-being of many people, ranging from patients to elderly. Technologies that support heartbeat monitoring should be unobtrusive, and thus solutions that are accurate and can be easily applied to existing beds is an important need that has been unfulfilled. We tackle the challenge of accurate, low-cost and easy to deploy heartbeat monitoring by investigating whether off-the- shelf analog geophone sensors can be used to detect heartbeats when installed under a bed. Geophones have the desirable property of being insensitive to lower-frequency movements, which lends itself to heartbeat monitoring as the heartbeat signal has harmonic frequencies that are easily captured by the geophone. At the same time, lower-frequency movements such as respiration, can be naturally filtered out by the geophone. With carefully-designed signal processing algorithms, we show it is possible to detect and extract heartbeats in the presence of environmental noise and other body movements a person may have during sleep. We have built a prototype sensor and conducted detailed experiments that involve 43 subjects (with IRB approval), which demonstrate that the geophone sensor is a compelling solution to long-term at-home heartbeat monitoring. We compared the average heartbeat rate estimated by our prototype and that reported by a pulse oximeter. The results revealed that the average error rate is around 1.30% over 500 data samples when the subjects were still on the bed, and 3.87% over 300 data samples when the subjects had different types of body movements while lying on the bed. We also deployed the prototype in the homes of 9 subjects for a total of 25 nights, and found that the average estimation error rate was 8.25% over more than 181 hours' data.
HB-Phone:基于床上检波器的心跳监测系统
睡眠期间的心跳监测对于确保从病人到老年人等许多人的健康至关重要。支持心跳监测的技术应该不引人注目,因此,准确且易于应用于现有病床的解决方案是一个尚未满足的重要需求。我们通过研究现成的模拟检波器传感器是否可以用于检测安装在床下的心跳,来解决准确、低成本和易于部署的心跳监测的挑战。检波器具有对低频运动不敏感的理想特性,这使其适合于心跳监测,因为心跳信号具有谐波频率,很容易被检波器捕获。与此同时,较低频率的运动,如呼吸,可以被检波器自然地过滤掉。通过精心设计的信号处理算法,我们可以检测和提取一个人在睡眠中可能存在的环境噪音和其他身体运动的心跳。我们已经建立了一个传感器原型,并进行了涉及43名受试者的详细实验(经IRB批准),这表明检波器传感器是长期家庭心跳监测的一个引人注目的解决方案。我们比较了我们的原型估计的平均心跳率和脉搏血氧计报告的结果。结果表明,当被试躺在床上时,500个数据样本的平均错误率约为1.30%,当被试躺在床上时,不同类型的身体运动时,300个数据样本的平均错误率为3.87%。我们还在9名受试者家中部署了原型,共25晚,发现在超过181小时的数据中,平均估计错误率为8.25%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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