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A system of human vital signs monitoring and activity recognition based on body sensor network

机译:基于人体传感器网络的人体生命体征监测与活动识别系统

摘要

Purpose - The purpose of this paper is to develop a health monitoring system that can measure human vital signs and recognize human activity based on body sensor network (BSN). Design/methodology/approach - The system is mainly composed of electrocardiogram (ECG) signal collection node, blood oxygen signal collection node, inertial sensor node, receiving node and upper computer software. The three collection nodes collect ECG signals, blood oxygen signals and motion signals. And then collected signals are transmitted wirelessly to receiving node and analyzed by software in upper computer in real-time. Findings - Experiment results show that the system can simultaneously monitor human ECG, heart rate, pulse rate, SpO2 and recognize human activity. A classifier based on coupled hidden Markov model (CHMM) is adopted to recognize human activity. The average recognition accuracy of CHMM classifier is 94.8 percent, which is higher than some existent methods, such as supported vector machine (SVM), C4.5 decision tree and naive Bayes classifier (NBC). Practical implications - The monitoring system may be used for falling detection, elderly care, postoperative care, rehabilitation training, sports training and other fields in the future. Originality/value - First, the system can measure human vital signs (ECG, blood pressure, pulse rate, SpO2, temperature, heart rate) and recognizes some specific simple or complex activities (sitting, lying, go boating, bicycle riding). Second, the researches of using CHMM for activity recognition based on BSN are extremely few. Consequently, the classifier based on CHMM is adopted to recognize activity with ideal recognition accuracies in this paper.
机译:目的-本文的目的是开发一种健康监测系统,该系统可以基于人体传感器网络(BSN)来测量人类生命体征并识别人类活动。设计/方法/方法-该系统主要由心电图(ECG)信号采集节点,血氧信号采集节点,惯性传感器节点,接收节点和上位计算机软件组成。三个采集节点采集心电信号,血氧信号和运动信号。然后将收集到的信号无线传输到接收节点,并通过上位机中的软件进行实时分析。研究结果-实验结果表明该系统可以同时监测人类的心电图,心率,脉搏率,SpO2并识别人类活动。采用基于耦合隐马尔可夫模型(CHMM)的分类器来识别人类活动。 CHMM分类器的平均识别准确率为94.8%,高于支持向量机(SVM),C4.5决策树和朴素贝叶斯分类器(NBC)等现有方法。实际意义-监控系统将来可能会用于跌倒检测,老人护理,术后护理,康复训练,运动训练和其他领域。原创性/价值-首先,该系统可以测量人的生命体征(ECG,血压,脉搏率,SpO2,温度,心率),并识别一些特定的简单或复杂活动(坐着,躺着,划船,骑自行车)。其次,基于BSN的将CHMM用于活动识别的研究很少。因此,本文采用基于CHMM的分类器对具有理想识别精度的活动进行识别。

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