Human Psychophysiological Activity Detection Based on Wearable Electronics

V. Maliutin, A. Kashevnik
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Abstract

Nowadays stress is an important problem of a society that is often the main reason for different diseases. For people, it is important to regularly monitor their health. However, it is not very convenient to go to medical centers or carry a lot of equipment every time. It is necessary to implement a means for monitoring health with the help of devices that we use in everyday life. Also, such devices must be able to analyze the human condition to exclude erroneous results and, as a result, erroneous influences. The paper considers modern approaches related to the human body state detection during various physical and mental activities. We describe the developed mobile application for collecting data on a person's state using connected wearable electronics. We identify physical and mental patterns of a person's state depending on various activities. We presented a classification model based on a random forest algorithm that can detect the patterns based on accelerometer data as well as heart rate measured by wearable electronics. We compared the results of classification accuracy using the random forest algorithm with other models based on logistic regression and AdaBoost.
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基于可穿戴电子设备的人体心理生理活动检测
如今,压力是一个重要的社会问题,往往是不同疾病的主要原因。对人们来说,定期监测自己的健康状况是很重要的。然而,每次去医疗中心或携带大量设备都不是很方便。有必要借助我们日常生活中使用的设备实施一种监测健康的手段。此外,这些设备必须能够分析人类状况,以排除错误的结果,从而排除错误的影响。本文考虑了各种身心活动中人体状态检测的现代方法。我们描述了开发的移动应用程序,用于使用连接的可穿戴电子设备收集个人状态的数据。我们根据不同的活动来确定一个人的身体和精神状态。我们提出了一种基于随机森林算法的分类模型,该模型可以根据加速度计数据和可穿戴电子设备测量的心率来检测模式。我们将随机森林算法与其他基于逻辑回归和AdaBoost的模型的分类精度结果进行了比较。
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