Internet of Things in sleep monitoring: An application for posture recognition using supervised learning

Georges Matar, J. Lina, J. Carrier, Anna Riley, Georges Kaddoum
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引用次数: 48

Abstract

In this paper, we propose an Internet of Things (IoT) system application for remote medical monitoring. The body pressure distribution is acquired through a pressure sensing mattress under the person's body, data is sent to a computer workstation for processing, and results are communicated for monitoring and diagnosis. The area of application of such system is large in the medical domain making the system convenient for clinical use such as in sleep studies, non or partial anesthetic surgical procedures, medical-imaging techniques, and other areas involving the determination of the body-posture on a mattress. In this vein, a novel method for human body posture recognition that consists in providing an optimal combination of signal acquisition, processing, and data storage to perform the recognition task in a quasi-real-time basis. A supervised learning approach was used to build a model using a robust synthetic data. The data has been generated beforehand, in a way to enhance and generalize the recognition capability while maintaining both geometrical and spatial performance. Low-cost and fast computation per sample processing along with autonomy, make the system suitable for long-term operation and IoT applications. The recognition results with a Cohen's Kappa coefficient κ = 0.866 was satisfactorily encouraging for further investigation in this field.
睡眠监测中的物联网:使用监督学习进行姿势识别的应用
在本文中,我们提出了一个物联网(IoT)系统应用于远程医疗监测。通过人体下的压力传感床垫获取人体压力分布,将数据发送到计算机工作站进行处理,并将结果传达给监测和诊断。该系统在医疗领域的应用范围很大,使该系统便于临床使用,如睡眠研究、非麻醉或部分麻醉外科手术、医学成像技术和其他涉及确定床垫上的身体姿势的领域。在这种情况下,一种新的人体姿势识别方法,包括提供信号采集、处理和数据存储的最佳组合,以准实时的方式执行识别任务。采用监督学习方法,利用鲁棒合成数据建立模型。数据是预先生成的,在保持几何和空间性能的同时增强和推广识别能力。每个样品处理的低成本和快速计算以及自主性,使系统适合长期运行和物联网应用。Cohen’s Kappa系数κ = 0.866的识别结果为该领域的进一步研究提供了令人满意的鼓舞。
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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