应用深度学习从可穿戴数据预测睡眠质量

Dinh-Van Phan, Chien-Lung Chan, Duc-Khanh Nguyen
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引用次数: 6

摘要

睡眠不仅对人的身体健康很重要,而且对人的心理健康也很重要,这一点在以前的很多研究中都有提到。如今,随着科技的发展,这开启了在改善睡眠质量方面的应用,如可穿戴设备、人工智能、神经网络等。在这项研究中,我们应用深度学习(DL)神经网络和智能可穿戴设备来预测睡眠质量。通过Fitbit Charge HR™设备在106天内收集学生(平均年龄= 20.79)的数据。结果表明,深度睡眠模型可以根据清醒时的身体活动来预测睡眠质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applying Deep Learning for Prediction Sleep Quality from Wearable Data
Sleep is not only very important for physical health but also the mental health of human, that was addressed by many previous studies. Today, with the development of technology, which opens in the application for improving quality of sleep, such as wearable devices, artificial intelligence, neural network. In this study, we applied deep learning (DL) neural networks and smart wearable devices to predict the quality of sleep. The data was collected on students (mean age = 20.79) during 106 days by Fitbit Charge HR™ device. The results showed DL models could predict sleep quality base on physical activities in awake time.
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