A Method to Detect Accurately Falling Asleep and Awakening Time

Takayuki Okamura, N. Isoyama, G. Lopez
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引用次数: 1

Abstract

So far, approximately 30 kinds of sleep disorders have been raised, and irregular sleep rhythm caused by disturbance of sleep induction and nocturnal awakening is one important factor in lifestyle-related diseases. Therefore, evaluating quality of sleep on a daily basis has a great significance for healthcare. On the other hand, in late years smart phone applications came to be able to record life activity log, mostly physical activity monitoring, and sleep length. However, the method used are mainly based on motion analysis, such sleep length cannot be measured accurately enough. This paper presents a newly proposed method to detect accurately falling asleep and awakening times, towards its application for a new smart clock alarm. Proposed method relies on using a wearable heart rate sensor to extract activity indices of autonomic nervous system calculated from heart rate variability in addition to body motion, and on algorithms that dynamically mine into the sequences of heterogeneous data to identify accurately sleep start and end times.
一种准确检测入睡和觉醒时间的方法
迄今为止,已经提出了大约30种睡眠障碍,睡眠诱导障碍和夜间觉醒障碍引起的睡眠节律不规律是生活方式相关疾病的重要因素之一。因此,每天评估睡眠质量对医疗保健具有重要意义。另一方面,近年来智能手机应用程序开始能够记录生活活动日志,主要是身体活动监测和睡眠时间。然而,所使用的方法主要是基于运动分析,这样的睡眠时间无法准确测量。本文提出了一种新的准确检测入睡和醒来时间的方法,并将其应用于一种新型智能闹钟。该方法依赖于使用可穿戴心率传感器提取由心率变异性和身体运动计算的自主神经系统活动指数,以及动态挖掘异构数据序列的算法来准确识别睡眠开始和结束时间。
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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