An efficient user-customisable multiresolution classifier fall detection and diagnostic system

Ryan M. Gibson, A. Amira, P. Casaseca-de-la-Higuera, N. Ramzan, Zeeshan Pervez
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引用次数: 2

Abstract

Falling can cause significant injury, where quick medical response and fall information are critical to providing aid. In this paper we present a wearable wireless fall detection system utilising a Shimmer accelerometer device, where important additional information is obtained, such as direction and strength of the occurred fall instance. Discrete Wavelet Transforms and multiresolution wavelet analysis are used to accurately determine fall occurrence and additionally determine the strength of the fall. The wavelet signal is additionally evaluated with Principal Component Analysis to generate a decision tree classifier for fall occurrence, strength and direction. Test subjects undertook fall and Activities of Daily Living experiments to generate data for wavelet and Principal Component Analysis. The presented fall detection and diagnostic system obtained highly accurate and robust fall detection with both methods, while the decision tree strength analysis demonstrated a better fall strength response.
一个高效的用户可定制的多分辨率分类器跌落检测和诊断系统
跌倒会造成严重伤害,快速的医疗反应和跌倒信息对于提供援助至关重要。在本文中,我们提出了一个可穿戴的无线跌倒检测系统,利用微光加速度计设备,其中重要的附加信息,如发生的跌倒实例的方向和强度。采用离散小波变换和多分辨率小波分析来准确判断跌落的发生和强度。用主成分分析对小波信号进行评估,生成一个判断坠落发生、强度和方向的决策树分类器。被试进行跌倒和日常生活活动实验,生成数据用于小波和主成分分析。本文提出的跌倒检测诊断系统在两种方法下均获得了较高的准确率和鲁棒性,而决策树强度分析则显示出更好的跌倒强度响应。
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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