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Stress Recognition Using Wearable Sensors and Mobile Phones

机译:使用可穿戴传感器和手机的应力识别

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In this study, we aim to find physiological or behavioral markers for stress. We collected 5 days of data for 18 participants: a wrist sensor (accelerometer and skin conductance), mobile phone usage (call, short message service, location and screen on/off) and surveys (stress, mood, sleep, tiredness, general health, alcohol or caffeinated beverage intake and electronics usage). We applied correlation analysis to find statistically significant features associated with stress and used machine learning to classify whether the participants were stressed or not. In comparison to a baseline 87.5% accuracy using the surveys, our results showed over 75% accuracy in a binary classification using screen on, mobility, call or activity level information (some showed higher accuracy than the baseline). The correlation analysis showed that the higher-reported stress level was related to activity level, SMS and screen on/off patterns.
机译:在这项研究中,我们的目标是找到压力的生理或行为标记。我们收集了18名参与者的5天数据:手腕传感器(加速度计和皮肤电导),手机使用(呼叫,短信服务,位置和屏幕开/关)和调查(压力,心情,睡眠,疲倦,一般健康,酒精或含咖啡因饮料摄入和电子用法)。我们应用相关分析以查找与压力和使用过的机器学习相关的统计上有明显的特征,以分类参与者是否受到压力。与基线使用调查的准确度相比,我们的结果在二进制分类中使用屏幕,移动性,呼叫或活动级别信息(一些显示比基线的准确性更高)显示出超过75%的准确性。相关性分析表明,报告的应力水平与活动水平,SMS和屏幕开/关图案有关。

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