Department of Family Care Solutions, Philips Research, 5656 AE Eindhoven, The Netherlands.
Department of Electrical Engineering, Eindhoven University of Technology, 5612 AP Eindhoven, The Netherlands.
Sensors (Basel). 2019 Mar 3;19(5):1075. doi: 10.3390/s19051075.
Prolonged monitoring of infant sleep is paramount for parents and healthcare professionals for interpreting and evaluating infants' sleep quality. Wake-sleep patterns are often studied to assess this. Video cameras have received a lot of attention in infant sleep monitoring because they are unobtrusive and easy to use at home. In this paper, we propose a method using motion data detected from infrared video frames (video-based actigraphy) to identify wake and sleep states. The motion, mostly caused by infant body movement, is known to be substantially associated with infant wake and sleep states. Two features were calculated from the video-based actigraphy, and a Bayesian-based linear discriminant classification model was employed to classify the two states. Leave-one-subject-out cross validation was performed to validate our proposed wake and sleep classification model. From a total of 11.6 h of infrared video recordings of 10 healthy term infants in a laboratory pilot study, we achieved a reliable classification performance with a Cohen's kappa coefficient of 0.733 ± 0.204 (mean ± standard deviation) and an overall accuracy of 92.0% ± 4.6%.
对父母和医疗保健专业人员来说,长时间监测婴儿睡眠对于解释和评估婴儿的睡眠质量至关重要。通常通过研究觉醒-睡眠模式来评估睡眠质量。视频摄像机在婴儿睡眠监测中受到了广泛关注,因为它们不引人注目且易于在家中使用。在本文中,我们提出了一种使用从红外视频帧中检测到的运动数据(基于视频的活动记录)来识别觉醒和睡眠状态的方法。众所周知,运动主要由婴儿身体运动引起,与婴儿的觉醒和睡眠状态密切相关。从基于视频的活动记录中计算了两个特征,并使用基于贝叶斯的线性判别分类模型对这两个状态进行分类。采用受试者留一交叉验证方法验证了我们提出的觉醒和睡眠分类模型。在一项实验室试点研究中,对 10 名健康足月婴儿的 11.6 小时红外视频记录进行了分析,我们实现了可靠的分类性能,Cohen's kappa 系数为 0.733 ± 0.204(平均值 ± 标准差),总体准确率为 92.0% ± 4.6%。