面向视频显示终端用户的可穿戴式多模态人体性能监测系统:概念、开发及临床数据验证

Yudong Luo, Na Zhao, Yantao Shen
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引用次数: 0

摘要

本项目旨在通过设计集成的可穿戴设备,监测视频显示终端(VDT)用户的多生理参数,评估其疲劳状态。对VDT使用者的疲劳状态进行评估后,采用疲劳缓解指导可以预防相关综合征的发生。作为该项目的第一阶段,本文研究了基于脑电图(EEG)、心电图(ECG)、眼电图(EOG)和外周氧饱和度(SpO2)数据的人体疲劳实时检测,以验证我们的初步研究概念。基于采集到的多生理信号,选择并提取不同类型的特征。我们使用k-means聚类改进的无监督学习方法k-medoids来帮助我们对视频显示终端用户的疲劳状态进行分类。更重要的是,我们通过使用25名受试者的全夜间多生理数据来验证我们的概念,提出了监测睡眠期间疲劳恢复的特征和分类方法。结果验证了我们的概念,并表明评估的人体性能(疲劳)状态在睡眠中明显恢复。实验证明,该系统可以监测VDT用户的人体性能(疲劳)变化,并能够反馈值,帮助他们缓解疲劳,防止下一阶段的相关综合征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A wearable multi-modal human performance monitoring system for video display terminal users: Concept, development and clinical data validation
The objective of this project is to evaluate the fatigue of the video display terminal (VDT) users by monitoring the multi-physiological parameters through the designed and integrated wearable device. The evaluated fatigue condition of the VDT user can prevent the related syndrome by using the guide of fatigue relief. As the first stage of this project, this paper investigates the real time human fatigue detection based on Electroencephalo-graphy (EEG), Electrocardiograph (ECG), Electrooculography (EOG) and Saturation of Peripheral oxygen(SpO2) data to test our concept for the preliminary study. We selected and extracted different types of features base on the collected multi-physiological signals. We used the unsupervised learning method k-medoids which is the modifications of the k-means clustering to help us to classify the fatigue condition of the video display terminal user. More importantly, we tested our concept by using 25-subject full overnight multi-physiological data, proposed features and classification methods to monitor the fatigue recovery during sleeping. The results validate our concept and show the evaluated human performance (fatigue) condition becomes recovery during sleeping clearly. It proves that the proposed system can monitor the human performance (fatigue) change for the VDT users and it is able to feedback the value to help them relieve the fatigue and to prevent the related syndrome for the next stage.
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