Fall-prediction algorithm using a neural network for safety enhancement of elderly

Shih-Hung Yang, Wenlong Zhang, Yizou Wang, M. Tomizuka
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引用次数: 14

Abstract

Among the elderly, falls are a well-known safety hazard, often resulting in major injury, hospitalization and death. To reduce the injuries caused by falls, it is first necessary to predict a fall as early as possible and then to provide protection for the person who is falling. This paper proposes a fall-prediction algorithm (FPA) that can predict whether the person will fall within one-walking-step. The fall prediction is different from the fall detection, and it is intended to predict a fall before it occurs and provide sufficient time to enable a safety mechanism. The proposed FPA adopts a neural network to perform prediction in which the inputs are accelerations and angular rates of upper trunk and the output presents fall or no fall. A wearable inertial sensor package with a triple axis accelerometer and a triple axis gyroscope is developed to measure the required motion data. Five subjects were asked to wear the inertial sensor package and perform a number of simulated falls. The experimental results show that the FPA could predict a fall 0.4 seconds prior to the beginning of the fall. The time interval is sufficient to inflate an airbag covering the head, trunk, and hip, an intervention that would reduce fall-related injuries among older people.
基于神经网络的老年人跌倒预测算法
在老年人中,跌倒是众所周知的安全隐患,经常导致重大伤害、住院和死亡。为了减少跌倒造成的伤害,首先有必要尽早预测跌倒,然后为正在摔倒的人提供保护。本文提出了一种跌倒预测算法(FPA),该算法可以预测人是否会在一步内跌倒。坠落预测不同于坠落检测,其目的是在坠落发生之前进行预测,并提供足够的时间来启用安全机制。本文提出的FPA采用神经网络进行预测,输入为上主干的加速度和角速度,输出为跌落或不跌落。设计了一种具有三轴加速度计和三轴陀螺仪的可穿戴式惯性传感器,用于测量所需的运动数据。五名受试者被要求佩戴惯性传感器包并进行一些模拟跌倒。实验结果表明,FPA可以在坠落开始前0.4秒预测到坠落。这个时间间隔足以使覆盖头部、躯干和臀部的安全气囊充气,这是一种减少老年人跌倒相关伤害的干预措施。
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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