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Enlighten Wearable Physiological Monitoring Systems: On-Body RF Characteristics Based Human Motion Classification Using a Support Vector Machine

机译:启发可穿戴式生理监测系统:使用支持向量机基于人体RF特性的人体运动分类

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摘要

The real-time health monitoring system is a promising body area network application to enhance the safety of firefighters when they are working in harsh and dangerous environments. Other than monitoring the physiological status of the firefighters, on-body monitoring networks can be also regarded as a candidate solution of motion detection and classification. In this paper, we consider motion classification with features obtained from the on-body radio frequency (RF) channel. Various relevant RF features have been identified and a support vector machine (SVM) has been implemented to facilitate human motion classification. In particular, we distinguish the most frequently appearing human motions of firefighters including standing, walking, running, lying, crawling, climbing, and running upstairs with an average true classification rate of 88.69 percent. Classification performance has been analyzed from three different perspectives including typical classification results, effects of candidate human motions, and effects of on-body sensor locations. We prove that even a subset of available RF features provides an acceptable classification rate, which may result in less computational cost and easier implementation by using our proposed scheme.
机译:实时健康监控系统是有前途的人体局域网络应用程序,可增强消防员在严酷和危险环境中工作时的安全性。除了监视消防员的生理状况外,人体监视网络也可以视为运动检测和分类的候选解决方案。在本文中,我们考虑具有从人体射频(RF)通道获得的特征的运动分类。已经确定了各种相关的RF功能,并且已经实现了支持向量机(SVM)以促进人体运动分类。特别是,我们区分了消防员最常出现的人为动作,包括站立,行走,奔跑,躺卧,爬行,爬升和跑上楼,平均真实分类率为88.69%。从三种不同的角度分析了分类性能,包括典型的分类结果,候选人体运动的影响以及人体传感器位置的影响。我们证明,即使可用的射频功能的一个子集也可以提供可接受的分类率,这可以通过使用我们提出的方案减少计算成本并更易于实现。

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