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Infection Screening System Using Thermography and CCD Camera with Good Stability and Swiftness for Non-contact Vital-Signs Measurement by Feature Matching and MUSIC Algorithm

机译:通过特征匹配和音乐算法使用热成像和CCD摄像机使用热成像和CCD摄像机具有良好的稳定性和迅速的速度测量

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Screening systems for infectious diseases based on fever have been implemented at international airports to prevent the spread of infection for over a decade. Currently, only Infrared Thermography (IRT) is used for screening and measuring facial skin temperature, which is one of clinical indicators of potential infection. Aiming at higher accuracy in screening, our group adopted heart rate (HR) and respiration rate (RR) for the first time as the new screening parameters. In our previous study, we proposed a screening system based on dual image sensors, which include IRT and a charged-coupled devices (CCD) camera. The sensors can measure three vital signs simultaneously, namely HR, RR, and facial skin temperature. For the measurement of RR in this system, stability and swiftness must be applied for application in airports. In this study, we introduce feature matching and multiple signal classification (MUSIC) algorithm in this system. Feature matching between thermal images and RGB images captured by a CCD camera and IRT, respectively, is used to detect the nose and mouth in IRT, which helps extract respiration signals corresponding to airflow from breathing. In addition, the MUSIC algorithm improves the accuracy of RR frequency estimations in limited time respiration signal and achieves swiftness. The proposed method improves stability by simultaneously detecting the nose and mouth in thermal images, and enhances the accuracy of estimated RR using the MUSIC algorithm. By using this system, we evaluate the accuracy of the estimated vital signs. The performance of this screening system was evaluated using data obtained from 12 influenza patients and 13 healthy subjects at a clinical facility in Fukushima, Japan.
机译:基于发烧的传染病的筛查系统已经在国际机场实施,以防止十年多的感染传播。目前,只有红外热成像(IRT)用于筛选和测量面部皮肤温度,这是潜在感染的临床指标之一。旨在筛选的更高准确性,我们的团队首次采用心率(HR)和呼吸率(RR)作为新的筛选参数。在我们以前的研究中,我们提出了一种基于双重图像传感器的筛选系统,其包括IRT和带电耦合器件(CCD)相机。传感器可以同时测量三个生命体征,即HR,RR和面部皮肤温度。为了测量该系统中的RR,必须在机场申请稳定性和迅速。在本研究中,我们在该系统中引入特征匹配和多信号分类(音乐)算法。通过CCD摄像机和IRT捕获的热图像和RGB图像之间的特征匹配用于检测IRT中的鼻子和嘴,这有助于提取与气流对应的呼吸信号。另外,音乐算法在有限的时间呼吸信号中提高了RR频率估计的准确性,并实现了迅速。所提出的方法通过在热图像中同时检测鼻子和嘴,提高稳定性,并通过音乐算法增强估计的RR的精度。通过使用该系统,我们评估估计的生命体征的准确性。使用从日本福岛福岛的临床设施获得的12个流感患者和13名健康受试者获得的数据评估该筛选系统的性能。

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