利用二元运动传感器识别睡眠活动

Yassine El-Khadiri, G. Corona, C. Rose, F. Charpillet
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引用次数: 5

摘要

对于喜欢住在家里而不是搬到养老院的老年人来说,早期发现虚弱的迹象是很重要的。睡眠质量是虚弱监测的一个很好的预测指标。因此,我们感兴趣的是跟踪睡眠参数,如睡眠唤醒模式,以预测和检测潜在的睡眠障碍监测老年居民。我们使用了一种无监督推理方法,该方法基于分散在老年人公寓周围的环境运动传感器产生的活动记录数据。这使我们的监测解决方案能够灵活和强大地适应不同类型的外壳,同时仍然达到0.94的睡眠周期估计精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sleep Activity Recognition Using Binary Motion Sensors
Early detection of frailty signs is important for the senior population that prefers to keep living in their homes instead of moving to a nursing home. Sleep quality is a good predictor for frailty monitoring. Thus we are interested in tracking sleep parameters like sleep wake patterns to predict and detect potential sleep disturbances of the monitored senior residents. We use an unsupervised inference method based on actigraphy data generated by ambient motion sensors scattered around the senior's apartment. This enables our monitoring solution to be flexible and robust to the different types of housings it can equip while still attaining accuracy of 0.94 for sleep period estimates.
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