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Monitoring Physical Activity and Mental Stress Using Wrist-Worn Device and a Smartphone

机译:使用腕戴式设备和智能手机监控体育活动和心理压力

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The paper presents a smartphone application for monitoring physical activity and mental stress. The application utilizes sensor data from a wristband and/or a smartphone, which can be worn in various pockets or in a bag in any orientation. The presence and location of the devices are used as contexts for the selection of appropriate machine-learning models for activity recognition and the estimation of human energy expenditure. The stress-monitoring method uses two machine-learning models, the first one relying solely on physiological sensor data and the second one incorporating the output of the activity monitoring and other context information. The evaluation showed that we recognize a wide range of atomic activities with the accuracy of 87%, and that we outperform the state-of-the art consumer devices in the estimation of energy expenditure. In stress monitoring we achieved the accuracy of 92% in a real-life setting.
机译:本文介绍了监测身体活动和精神压力的智能手机申请。该应用程序利用来自腕带和/或智能手机的传感器数据,该智能手机可以在各种口袋或任何方向上佩戴。设备的存在和位置用作选择适当的机器学习模型以进行活动识别和人力能耗的估计。压力监测方法使用两种机器学习模型,第一个仅依赖于生理传感器数据以及结合活动监测的输出和其他上下文信息的第二个。评估显示,我们认识到各种原子活动,准确性为87%,而且我们在估计能源支出中优于最先进的消费设备。在压力监测中,我们在现实生活环境中实现了92%的准确性。

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