基于物联网的跌倒检测系统的神经网络应用设计流程

Won-Jae Yi, Boyang Wang, Bruno Fernandes dos Santos, Eduardo Fonseca Carvalho, J. Saniie
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引用次数: 4

摘要

在远程健康监测系统中,准确识别和分析当前用户的状态是至关重要的。准确性取决于许多不同的方面,包括物理条件,周围环境条件,用户的鲜明特征和其他因素。本文探讨了应用神经网络增强基于物联网的健康监测系统的可能性。通过对收集到的不同类型的医疗急救相关场景的用户数据进行训练,该系统将比传统的阈值数据分析系统获得更好的准确性。在本研究中,我们着重于将神经网络应用于带有加速度计和陀螺仪的无线可穿戴传感器的跌倒检测应用。我们利用多层感知器神经网络训练用户运动数据集,包括正跌倒(坠落事件)和负跌倒(非坠落事件)。该系统设计方法具有扩展到多用途用户活动和健康监测系统的潜力,包括有潜在医疗需求和日常活动跟踪的人群。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design Flow of Neural Network Application for IoT Based Fall Detection System
In the remote health monitoring system, it is crucial to identify and analyze the current users' status accurately. The accuracy depends on many different aspects including physical conditions, surrounding environmental conditions, users' distinct features and other factors. In this paper, we investigate the enhacement possibility of IoT based health monitoring system by applying neural network. By training the collected user data from different types of medical emergency-related scenarios, the system would gain better accuracy over the traditional thresholding data analysis systems. In this study, we focus on applying neural network to the fall detection application which involves wireless wearable sensors with accelerometers and a gyroscope. We utilize multilayer perceptron neural network to train user movement datasets including positive falls (falling events) and negative falls (non-falling events). This system design approach has the potential to be extended to multi-purpose user activity and health monitoring system, including people who have potential in needs of medical attentions and daily activity tracking.
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