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An Unobtrusive Stress Recognition System for the Smart Office

机译:智能办公室不引人注目的应力识别系统

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摘要

This paper presents a novel approach to monitor office workers’ behavioral patterns and heart rate variability. We integrated an EMFi sensor into a chair to measure the pressure changes caused by a user’s body movements and heartbeat. Then, we employed machine learning methods to develop a classification model through which different work behaviors (body moving, typing, talking and browsing) could be recognized from the sensor data. Subsequently, we developed a BCG processing method to process the data recognized as ‘browsing’ and further calculate heart rate variability. The results show that the developed model achieved classification accuracies of up to 91% and the HRV could be calculated effectively with an average error of 5.77ms. By combining these behavioral and physiological measures, the proposed approach portrays work-related stress in a more comprehensive manner and could contribute an unobtrusive early stress detection system for future smart offices.
机译:本文介绍了监控办公室工作人员行为模式和心率变异性的新方法。我们将EMFI传感器集成到椅子中,以测量用户身体运动和心跳引起的压力变化。然后,我们采用机器学习方法来开发可以从传感器数据中识别不同的工作行为(身体移动,打字,谈话和浏览)的分类模型。随后,我们开发了一种用于处理识别为“浏览”的数据并进一步计算心率变异性的BCG处理方法。结果表明,开发的模型实现了高达91%的分类精度,并且可以有效地计算HRV,平均误差为5.77ms。通过结合这些行为和生理措施,提出的方法以更全面的方式描绘了与工作有关的压力,可以为未来的智能办公室提供不引人注目的早期压力检测系统。

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