A study of automatic classification of sleeping position by a pressure-sensitive sensor

Aya Mineharu, N. Kuwahara, K. Morimoto
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引用次数: 26

Abstract

Currently in care facilities, a fall preventive movement sensor is often used to prevent falls of care receivers during the night.. But the current sensors are usually designed to detect the motion of care receivers' getting out of bed. Therefore, there are cases where the care receiver has already fallen from the bed by the time the sensor reacted to the movement. It is a common knowledge that a person frequently changes position while sleeping. In this research, we focus on the frequency of sleeping position changes, and aim to realize a method for precise prediction of care receivers' attempt to get out of bed sufficiently before the actual action. We employed the automatic classification method of sleeping position in the pressure-sensitive sensor, with consideration to privacy of the research subjects, and identified nine types of sleeping position that are common, with 77.1% of accuracy. This result is reported in this paper.
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压力敏感传感器对睡姿自动分类的研究
目前在护理机构中,预防跌倒运动传感器通常用于防止夜间护理人员跌倒。但目前的传感器通常被设计用来检测护理人员起床的动作。因此,在某些情况下,当传感器对这个动作做出反应时,看护人已经从床上掉下来了。一个人在睡觉时经常变换姿势,这是一个常识。在本研究中,我们关注睡眠姿势变化的频率,旨在实现一种精确预测护理者在实际行动之前足够起床的尝试的方法。我们采用压敏传感器的睡姿自动分类方法,考虑到研究对象的隐私,识别出9种常见的睡姿,准确率为77.1%。本文报道了这一结果。
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