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Fall detection using a Gaussian distribution of clustered knowledge, augmented radial basis neural-network, and multilayer perceptron

机译:使用聚类知识,增强型径向基神经网络和多层感知器的高斯分布进行跌倒检测

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The rapidly increasing population of elderly people has posed a big challenge to research in fall prevention and detection. Substantial amounts of injuries, disabilities, traumas and deaths among elderly people due to falls have been reported worldwide. There is therefore a need for a reliable, simple, and affordable automatic fall detection system. This paper proposes a reliable fall detection algorithm using minimal information from a single waist worn wireless tri-axial accelerometer. The method proposed is to approach fall detection using digital signal processing and neural networks. This method includes the application of Discrete Wavelet Transform (DWT), Regrouping Particle Swarm Optimization (RegPSO), a proposed method called Gaussian Distribution of Clustered Knowledge (GCK), and an Ensemble of Classifiers using two different classifiers: Multilayer Perceptron Neural Network (MLP) and Augmented Radial Basis Neural Networks (ARBF). The proposed method has been tested on 8 healthy individuals in a home environment and yields promising result of up to 100% sensitivity on ingroup, 97.65% sensitivity on outgroup, and 99.56% specificity on Activities of Daily Living (ADL) data.
机译:迅速增长的老年人口对跌倒预防和检测的研究提出了巨大挑战。据报道,世界范围内由于摔倒而导致老年人的大量伤亡,残疾,创伤和死亡。因此,需要可靠,简单且负担得起的自动跌倒检测系统。本文提出了一种可靠的跌倒检测算法,该算法使用了来自单腰穿戴式无线三轴加速度计的最少信息。提出的方法是使用数字信号处理和神经网络来进行跌倒检测。该方法包括离散小波变换(DWT),重组粒子群优化(RegPSO),一种提出的称为集群知识的高斯分布(GCK)的方法以及使用两个不同分类器的分类器集合:多层感知器神经网络(MLP) )和增强径向基神经网络(ARBF)。该提议的方法已经在家庭环境中的8位健康个体上进行了测试,并产生了令人鼓舞的结果,对小组内的敏感性高达100%,对于小组外的敏感性高达97.65%,对日常生活活动(ADL)数据的特异性高达99.56%。

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