Uysal Can, Onat Altan, Filik Tansu
Electrical and Electronics Engineering DepartmentEskisehir Technical University26555EskisehirTurkey.
School of Engineering, Stephenson BuildingNewcastle UniversityNewcastle upon TyneNE1 7RUU.K.
IEEE Access. 2020 May 28;8:99445-99457. doi: 10.1109/ACCESS.2020.2998117. eCollection 2020.
It can be life-saving to monitor the respiratory rate (RR) even for healthy people in real-time. It is reported that the infected people with coronavirus disease 2019 (COVID-19), generally develop mild respiratory symptoms in the early stage. It will be more important to continuously monitor the RR of people in nursing homes and houses with a non-contact method. Conventional, contact-based, methods are not suitable for long-term health monitoring especially in-home care services. The potentials of wireless radio signals for health care applications, such as fall detection, etc., are examined in literature. In this paper, we focus on a device-free real-time RR monitoring system using wireless signals. In our recent study, we proposed a non-contact RR monitoring system with a batch processing (delayed) estimation method. In this paper, for real-time monitoring, we modify the standard joint unscented Kalman filter (JUKF) method for this new and time-critical problem. Due to the nonlinear structure of the RR estimation problem with respect to the measurements, a novel modification is proposed to transform measurement errors into parameter errors by using the hyperbolic tangent function. It is shown in the experiments conducted with the real measurements taken using healthy volunteers that the proposed modified joint unscented Kalman filter (ModJUKF) method achieves the highest accuracy according to the windowing-based methods in the time-varying RR scenario. It is also shown that the ModJUKF not only reduces the computational complexity approximately 8.54% but also improves the accuracy 36.7% with respect to the standard JUKF method.
即使对于健康人而言,实时监测呼吸频率(RR)也可能挽救生命。据报道,2019冠状病毒病(COVID-19)感染者在早期通常会出现轻微的呼吸道症状。采用非接触式方法持续监测养老院和家中人员的呼吸频率将更为重要。传统的基于接触的方法不适用于长期健康监测,尤其是在家居护理服务中。文献中研究了无线射频信号在诸如跌倒检测等医疗保健应用中的潜力。在本文中,我们专注于一种使用无线信号的无设备实时呼吸频率监测系统。在我们最近的研究中,我们提出了一种采用批处理(延迟)估计方法的非接触式呼吸频率监测系统。在本文中,为了进行实时监测,我们针对这个新的、对时间要求严格的问题对标准联合无迹卡尔曼滤波器(JUKF)方法进行了改进。由于呼吸频率估计问题相对于测量值具有非线性结构,我们提出了一种新颖的改进方法,通过使用双曲正切函数将测量误差转换为参数误差。在使用健康志愿者进行的实际测量实验中表明,在所提出的改进联合无迹卡尔曼滤波器(ModJUKF)方法在时变呼吸频率场景中,根据基于窗口的方法实现了最高的精度。还表明,与标准JUKF方法相比,ModJUKF不仅将计算复杂度降低了约8.54%,而且将精度提高了36.7%。