Department of Computer Engineering, Gachon University, Seongnam 13120, Korea.
Department of Energy IT, Gachon University, Seongnam 13120, Korea.
Sensors (Basel). 2019 Jul 30;19(15):3340. doi: 10.3390/s19153340.
Recently, various studies have been conducted on the quality of sleep in medical and health care fields. Sleep analysis in these areas is typically performed through polysomnography. However, since polysomnography involves attaching sensor devices to the body, accurate sleep measurements may be difficult due to the inconvenience and sensitivity of physical contact. In recent years, research has been focused on using sensors such as Ultra-wideband Radar, which can acquire bio-signals even in a non-contact environment, to solve these problems. In this paper, we have acquired respiratory signal data using Ultra-wideband Radar and proposed 1D CNN (1-Dimension Convolutional Neural Network) model that can classify and recognize five respiration patterns (Eupnea, Bradypnea, Tachypnea, Apnea, and Motion) from the signal data. Also, in the proposed model, we find the optimum parameter range through the recognition rate experiment on the combination of parameters (layer depth, size of kernel, and number of kernels). The average recognition rate of five breathing patterns experimented by applying the proposed method was 93.9%, which is about 3%~13% higher than that of conventional methods (LDA, SVM, and MLP).
最近,医学和保健领域的各种研究都在进行睡眠质量研究。这些领域的睡眠分析通常通过多导睡眠图来进行。然而,由于多导睡眠图需要将传感器设备附着在身体上,因此由于物理接触的不便和敏感性,准确的睡眠测量可能会很困难。近年来,研究人员一直专注于使用超宽带雷达等传感器,即使在非接触环境中也可以获取生物信号,以解决这些问题。在本文中,我们使用超宽带雷达获取了呼吸信号数据,并提出了一种 1DCNN(一维卷积神经网络)模型,该模型可以从信号数据中分类和识别五种呼吸模式(正常呼吸、呼吸过缓、呼吸过速、呼吸暂停和运动)。此外,在提出的模型中,我们通过对参数组合(层深度、核大小和核数量)的识别率实验找到了最优的参数范围。通过应用所提出的方法进行的五种呼吸模式的平均识别率为 93.9%,比传统方法(LDA、SVM 和 MLP)高约 3%~13%。