He Chunhua, Fang Zewen, Liu Shuibin, Wu Heng, Li Xiaoping, Wen Yangxing, Lin Juze
School of Computer, Guangdong University of Technology, Guangzhou, 510000, PR China.
School of Automation, Guangdong University of Technology, Guangzhou, 510000, PR China.
Heliyon. 2024 May 30;10(11):e31839. doi: 10.1016/j.heliyon.2024.e31839. eCollection 2024 Jun 15.
People spend approximately one-third of their lives in sleep, but more and more people are suffering from sleep disorders. Sleep posture is closely related to sleep quality, so related detection is very significant. In our previous work, a smart flexible sleep monitoring belt with MEMS triaxial accelerometer and pressure sensor has been developed to detect the vital signs, snore events and sleep stages. However, the method for sleep posture detection has not been studied. Therefore, to achieve high performance, low cost and comfortable experience, this paper proposes a smart detection method for sleep posture based on a flexible sleep monitoring belt and vital sign signals measured by a MEMS Inertial Measurement Unit (IMU). Statistical analysis and wavelet packet transform are applied for the feature extraction of the vital sign signals. Then the algorithm of recursive feature elimination with cross-validation is introduced to further extract the key features. Besides, machine learning models with 10-fold cross validation process, such as decision tree, random forest, support vector machine, extreme gradient boosting and adaptive boosting, were adopted to recognize the sleep posture. 15 subjects were recruited to participate the experiment. Experimental results demonstrate that the detection accuracy of the random forest algorithm is the highest among the five machine learning models, which reaches 96.02 %. Therefore, the proposed sleep posture detection method based on the flexible sleep monitoring belt is feasible and effective.
人们一生中大约有三分之一的时间在睡眠中度过,但越来越多的人正遭受睡眠障碍的困扰。睡眠姿势与睡眠质量密切相关,因此相关检测非常重要。在我们之前的工作中,已经开发了一种带有MEMS三轴加速度计和压力传感器的智能柔性睡眠监测带,用于检测生命体征、打鼾事件和睡眠阶段。然而,睡眠姿势检测方法尚未得到研究。因此,为了实现高性能、低成本和舒适的体验,本文提出了一种基于柔性睡眠监测带和由MEMS惯性测量单元(IMU)测量的生命体征信号的睡眠姿势智能检测方法。应用统计分析和小波包变换对生命体征信号进行特征提取。然后引入具有交叉验证的递归特征消除算法,进一步提取关键特征。此外,采用具有10折交叉验证过程的机器学习模型,如决策树、随机森林、支持向量机、极端梯度提升和自适应提升,来识别睡眠姿势。招募了15名受试者参与实验。实验结果表明,随机森林算法在五种机器学习模型中的检测准确率最高,达到了96.02%。因此,所提出的基于柔性睡眠监测带的睡眠姿势检测方法是可行且有效的。