School of Architecture, Harbin Institute of Technology, Harbin 150001, China.
Key Laboratory of Cold Region Urban and Rural Human Settlement Environment Science, Ministry of Industry and Information Technology, Harbin 150001, China.
Int J Environ Res Public Health. 2020 Dec 29;18(1):200. doi: 10.3390/ijerph18010200.
With the increasing aging population in modern society, falls as well as fall-induced injuries in elderly people become one of the major public health problems. This study proposes a classification framework that uses floor vibrations to detect fall events as well as distinguish different fall postures. A scaled 3D-printed model with twelve fully adjustable joints that can simulate human body movement was built to generate human fall data. The mass proportion of a human body takes was carefully studied and was reflected in the model. Object drops, human falling tests were carried out and the vibration signature generated in the floor was recorded for analyses. Machine learning algorithms including K-means algorithm and K nearest neighbor algorithm were introduced in the classification process. Three classifiers (human walking versus human fall, human fall versus object drop, human falls from different postures) were developed in this study. Results showed that the three proposed classifiers can achieve the accuracy of 100, 85, and 91%. This paper developed a framework of using floor vibration to build the pattern recognition system in detecting human falls based on a machine learning approach.
随着现代社会人口老龄化的加剧,老年人跌倒及其引起的伤害已成为主要的公共卫生问题之一。本研究提出了一种分类框架,利用地板振动来检测跌倒事件,并区分不同的跌倒姿势。建立了一个可模拟人体运动的、带有十二个全可调关节的缩放 3D 打印模型,以产生人体跌倒数据。仔细研究了人体质量比例,并在模型中得到了体现。进行了物体掉落和人体跌倒测试,并记录地板上产生的振动特征进行分析。在分类过程中引入了 K-均值算法和 K 最近邻算法等机器学习算法。本研究开发了三种分类器(人行走与跌倒、跌倒与物落、不同姿势的跌倒)。结果表明,这三个提出的分类器可以达到 100%、85%和 91%的准确率。本文开发了一个利用地板振动建立基于机器学习的人体跌倒模式识别系统的框架。