慢性应力水平估计侧重于从座椅压力分布获得的运动模式变化

M. Kuroha, Yuki Ban, R. Fukui, S. Warisawa
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引用次数: 2

摘要

在现代社会,工作场所的慢性压力是一个严重的问题,因为它会导致许多疾病。为了防止慢性压力,有必要在工作场所持续测量这种压力。因此,有必要实现一种对用户负荷较小的慢性应力估计方法。因此,我们提出了一种方法,通过测量慢性压力引起的办公桌工作时身体运动模式的变化来估计慢性压力水平。为了获取我们称之为“运动模式”(motion Pattern)的人体运动模式,我们开发了一种带有6个压力传感器的坐垫式传感器装置,测量了坐位工作时座椅压力分布的变化。“运动模式”是四个“运动标签”的时间序列模式,包括代表撞击座椅的运动的“冲击标签”。我们试图通过了解这种“运动模式”与压力评估问卷得分之间的关系来估计慢性压力水平。结果发现,六名被试在“影响标签”发生的间隔时间上均有显著差异。此外,我们使用针对每个个体学习的分类器实现了估计慢性压力存在和不存在的平均准确率为87.0%,并且实现了估计单个参与者慢性压力水平的最高准确率为70.0%。这表明我们提出的方法有潜力用于工作场所的慢性压力监测。
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Chronic Stress Level Estimation Focused on Motion Pattern Changes Acquired from Seat Pressure Distribution
In modern society, chronic stress in the workplace is a serious problem because it causes numerous diseases. To prevent chronic stress, it is necessary to continuously measurement this type of stress in the workplace. Thus, it is necessary to realize a chronic stress estimation method with small load to users. Therefore, we proposed a method to estimate chronic stress level by measuring changes of body motion patterns during desk work caused by chronic stress. For the acquisition of body motion patterns we called "Motion Pattern", a cushion-type sensor device with six pressure sensors was developed, and the changes of seat pressure distribution during desk work were measured. "Motion Pattern" was the time-series pattern of four"Motion Labels" including "Impact Label" which represented the motion that impacts the seat. We tried to estimate chronic stress level by learning the relationship between this "Motion Pattern" and the score of stress evaluation questionnaire. As a result, it was found that there was a significant difference in the interval time of "Impact Label" occurrence in all six participants. In addition, we achieved to estimate the existence and non-existence of chronic stress with an average accuracy of 87.0% using a classifier learned for each individual and achieved to estimate chronic stress level with a maximum accuracy of 70.0%for one participant. It suggests that our proposed method has potential for chronic stress monitoring in the workplace.
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