跌落检测系统:使用内置三轴加速度计减少误报的信号分析

Nur Syazarin Natasha Abd Aziz, S. Daud, H. Abas, S. Shariff, Nur Qamarina Mohd Noor
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引用次数: 1

摘要

人们进行了广泛的研究来检测跌倒。然而,由于现有系统大多存在虚警现象,其对活动日常生活(ADLs)和跌倒的分类和区分的准确性仍存在不足。本研究探讨了利用内建三轴加速度计建立跌倒检测方法。本研究主要涉及四个阶段:(1)数据采集,(2)数据处理与过滤,(3)特征提取与选择,(4)数据分类。通过智能手机内置的三轴加速度计收集参与者模拟ADLs和跌倒的原始数据,然后通过无线通信自动发送到计算机。然后,对数据进行处理和提取。在分析中对所提出的算法进行了应用、评价和比较。研究结果表明,35个隐藏神经元的ANN方法是本研究中最准确的跌倒检测系统模型,其总体准确率达到99.24%,FPR为0.18%。这种方法在未来的实时移动应用中具有实现和部署的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fall Detection System: Signal Analysis in Reducing False Alarms Using Built-in Tri-axial Accelerometer
there are extensive researches conducted to detect falls. However, there are still vulnerable in its accuracy in categorizing and differentiating Activities Daily Living (ADLs) and falls as most of existing system cause false alarm. This research addresses the building of fall detection approach by using built-in tri-axial accelerometer. There are four main phases involved in this research: (1) data acquisition, (2) data processing and filtering, (3) feature extraction and selection and (4) data classification. The raw data of simulated ADLs and falls by participants is collected via built-in-tri-axial accelerometer in smart phone, then automatically send towards the computer via wireless communication. Then, the data is processed and extracted. The proposed algorithms were employed, evaluated and compared in analysis. The findings suggest that ANN method with 35 hidden neurons is the most accurate model for fall detection system in this research as it achieved 99.24% overall accuracy while producing 0.18% FPR. This approach has the potential to be implemented and deploy in real-time mobile application in future.
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