Models to Predict Sleeping Quality from Activities and Environment: Current Status, Challenges and Opportunities

Thi Phuoc Van Nguyen, D. Nguyen, K. Zettsu
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引用次数: 2

Abstract

The development of remote/wearable sensors enables more research in the health care area. Based on these kinds of sensors, the information of human's active level, health parameters can be collected to predict one's health status. Sleeping quality is an important factor to make a person feel healthy. In this work, we summarize the current models to predict sleeping quality. Inputs of those models could be environmental factors, activities, or time-series data from wearable sensors. The characteristic of the input data may lead to the choice of prediction models. The domain of data that was used to forecast sleeping quality will be considered carefully in parallel with the prediction model. Challenges and future work for this research direction will be discussed in this paper.
从活动和环境预测睡眠质量的模型:现状、挑战和机遇
远程/可穿戴传感器的发展使更多的研究在医疗保健领域。基于这些传感器,可以收集人体的活动水平、健康参数等信息,从而预测一个人的健康状况。睡眠质量是使人感到健康的一个重要因素。在这项工作中,我们总结了目前预测睡眠质量的模型。这些模型的输入可以是环境因素、活动或来自可穿戴传感器的时间序列数据。输入数据的特性可能导致预测模型的选择。用于预测睡眠质量的数据域将与预测模型并行仔细考虑。本文将讨论该研究方向面临的挑战和未来的工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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