一种基于空时信号处理的支持向量机无线监测系统状态分类方法

Jihoon Hong, T. Ohtsuki
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引用次数: 19

摘要

在本文中,我们专注于改进状态分类方法,可以在老年人护理监测系统中实现。作者小组先前提出了一种室内监控和安全系统(阵列传感器),该系统仅使用一个阵列天线作为接收器。与传统系统相比,其明显的优点是改善了对使用闭路电视(CCTV)摄像机的隐私关注,并消除了安装困难。我们的方法与以前的检测方法不同,以前的检测方法使用一系列传感器和一个只能分类两种状态的阈值:无状态和有状态发生。本文提出了一种仅利用无线电波传播中获得的一个特征,并辅以多类支持向量机(SVM)对发生状态进行分类的状态分类方法。特征是张成感兴趣的信号子空间的第一个特征向量。该方法不仅适用于室内环境,也适用于车辆监控系统等室外环境。我们进行了实验,将室内环境中的七种状态分为:“无事件”、“行走”、“进入浴缸”、“站着淋浴”、“坐着淋浴”、“摔倒”和“晕过去”;在室外环境中分为两种状态:“正常状态”和“异常状态”。实验结果表明,在室内和室外环境下,我们的分类准确率分别达到96.5%和100%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A state classification method based on space-time signal processing using SVM for wireless monitoring systems
In this paper we focus on improving state classification methods that can be implemented in elderly care monitoring systems. The authors group has previously proposed an indoor monitoring and security system (array sensor) that uses only one array antenna as the receiver. The clear advantages over conventional systems are improvement of privacy concern from the usage of closed-circuit television (CCTV) cameras, and elimination of installation difficulties. Our approach is different from the previous detection method which uses an array of sensors and a threshold that can classify only two states: nothing and something happening. In this paper, we present a state classification method that uses only one feature obtained from the radio wave propagation, and assisted by multiclass support vector machines (SVM) to classify the occurring states. The feature is the first eigenvector that spans the signal subspace of interest. The proposed method can be applied to not only indoor environments but also outdoor environments such as vehicle monitoring system. We performed experiments to classify seven states in an indoor setting: “No event,” “Walking,” “Entering into a bathtub,” “Standing while showering,” “Sitting while showering,” “Falling down,” and “Passing out;” and two states in an outdoor setting: “Normal state” and “Abnormal state.” The experimental results show that we can achieve 96.5 % and 100 % classification accuracy for indoor and outdoor settings, respectively.
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