Ward Ryan J, Mark Jjunju Fred Paul, Kabenge Isa, Wanyenze Rhoda, Griffith Elias J, Banadda Noble, Taylor Stephen, Marshall Alan
Department of Electrical Engineering and ElectronicsUniversity of Liverpool Liverpool L69 7ZX U.K.
Department of Agricultural and Biosystems EngineeringMakerere University Kampala Uganda.
IEEE Sens J. 2021 Sep 16;21(21):24740-24748. doi: 10.1109/JSEN.2021.3113467. eCollection 2021 Nov 1.
Influenza is an acute viral respiratory disease that is currently causing severe financial and resource strains worldwide. With the COVID-19 pandemic exceeding 153 million cases worldwide, there is a need for a low-cost and contactless surveillance system to detect symptomatic individuals. The objective of this study was to develop FluNet, a novel, proof-of-concept, low-cost and contactless device for the detection of high-risk individuals. The system conducts face detection in the LWIR with a precision rating of 0.98, a recall of 0.91, an F-score of 0.96, and a mean intersection over union of 0.74 while sequentially taking the temperature trend of faces with a thermal accuracy of ± 1 K. In parallel, determining if someone is coughing by using a custom lightweight deep convolutional neural network with a precision rating of 0.95, a recall of 0.92, an F-score of 0.94 and an AUC of 0.98. We concluded this study by testing the accuracy of the direction of arrival estimation for the cough detection revealing an error of ± 4.78°. If a subject is symptomatic, a photo is taken with a specified region of interest using a visible light camera. Two datasets have been constructed, one for face detection in the LWIR consisting of 250 images of 20 participants' faces at various rotations and coverings, including face masks. The other for the real-time detection of coughs comprised of 40,482 cough / not cough sounds. These findings could be helpful for future low-cost edge computing applications for influenza-like monitoring.
流感是一种急性病毒性呼吸道疾病,目前正在全球范围内造成严重的财政和资源压力。随着全球新冠疫情确诊病例超过1.53亿例,需要一种低成本且非接触式的监测系统来检测有症状的个体。本研究的目的是开发FluNet,这是一种新型的、概念验证的、低成本且非接触式的设备,用于检测高危个体。该系统在长波红外(LWIR)波段进行人脸检测,精度评分为0.98,召回率为0.91,F分数为0.96,平均交并比为0.74,同时以±1K的热精度依次获取人脸的温度趋势。与此同时,使用一个定制的轻量级深度卷积神经网络来确定某人是否在咳嗽,精度评分为0.95,召回率为0.92,F分数为0.94,曲线下面积(AUC)为0.98。我们通过测试咳嗽检测的到达方向估计精度来结束本研究,结果显示误差为±4.78°。如果受试者有症状,则使用可见光相机拍摄带有指定感兴趣区域的照片。构建了两个数据集,一个用于长波红外波段的人脸检测,由20名参与者在不同旋转角度和覆盖情况下(包括佩戴口罩)的250张人脸图像组成。另一个用于咳嗽实时检测,由40482个咳嗽/不咳嗽声音组成。这些发现可能有助于未来用于流感样监测的低成本边缘计算应用。