A Novel Two-Step Fall Detection Method Using Smartphone Sensors

John C. Dogan, M. Hossain
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引用次数: 9

Abstract

A smartphone-based fall detection system has two major advantages over a traditional fall detection system that comes as a separate device: (1) the phone can automatically send messages to or call the emergency contact person when a fall is detected and (2) a user does not need to carry an extra device. This paper presents a novel two-step fall detection method which uses data extracted from smartphone sensors to detect falls. A fall can happen in many ways. A person can fall while he/she is walking, jogging, sitting, or even sleeping. Patterns of all falls are not the same. It is important to identify the type of falls to precisely distinguish it from non-falls (normal activities). Hence, our method first identifies the correct type of falls by performing multi-class classification. In the second step, this method produces a binary decision based on the multiclass prediction. We collected data from 10 users to evaluate our proposed fall detection method. Each user performed five normal activities–namely, walking, jogging, standing, sitting, lying, and also fell after performing each activity. We performed experiments with five common smartphone sensors: accelerometer, gyroscope, magnetometer, gravity, and linear acceleration. We tested five machine learning classifiers–namely, Support Vector Machine, K-Nearest Neighbor, Decision Tree, Random Forest, and Naive Bayes. Our two-step fall detection method achieved the maximum accuracy of 95.65% and the maximum area under ROC curve (AUC) of 0.93, both with the gyroscope sensor and Support Vector Machine classifier.
一种基于智能手机传感器的两步跌倒检测方法
与作为独立设备的传统跌倒检测系统相比,基于智能手机的跌倒检测系统有两个主要优势:(1)当检测到跌倒时,手机可以自动向紧急联系人发送信息或拨打电话;(2)用户不需要携带额外的设备。本文提出了一种新的两步跌倒检测方法,该方法利用智能手机传感器提取的数据来检测跌倒。摔倒的原因有很多。一个人在走路、慢跑、坐着甚至睡觉时都可能摔倒。所有的下跌模式都不一样。重要的是要确定跌倒的类型,以准确区分它与非跌倒(正常活动)。因此,我们的方法首先通过执行多类分类来识别正确的跌倒类型。第二步,该方法基于多类预测生成二值决策。我们收集了10个用户的数据来评估我们提出的跌倒检测方法。每个用户进行五项正常活动,即散步、慢跑、站立、坐着、躺着,并在完成每项活动后摔倒。我们用五种常见的智能手机传感器进行了实验:加速度计、陀螺仪、磁力计、重力和线性加速度。我们测试了五种机器学习分类器,即支持向量机、k近邻、决策树、随机森林和朴素贝叶斯。我们的两步跌倒检测方法在陀螺仪传感器和支持向量机分类器下的准确率最高为95.65%,ROC曲线下面积(AUC)最大为0.93。
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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