基于随机森林分类的COVID-19协议中热像仪发热检测性能改进

Aji Gautama Putrada, D. Perdana
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引用次数: 11

摘要

AMG8833传感器可用于COVID-19协议执行期间基于热像仪的低成本体温测量。但是,传感器测量体温的精度不够,发热检测性能变差。本研究的目的是将随机森林作为分类器应用于使用AMG8833传感器的热像仪体温测量中,并评估其在检测发烧方面的性能。除了AMG8833外,该热像仪还使用网络摄像头进行面部检测,并将树莓派用作微型计算机和应用随机森林模型的地方。这样,热像仪经历了三个过程,即从网络摄像头捕获的图像中检测人脸,然后从AMG8833中检测温度和发烧。经受试者工作曲线(ROC)检验,随机森林曲线下面积(AUC)值优于Logistic回归和决策树方法,为0.977。随机森林检测发热的敏感性和特异性分别为88.5%和99.5%。该值高于不使用随机森林分类进行发热检测的检测系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Thermal Camera Performance in Fever Detection during COVID-19 Protocol with Random Forest Classification
The AMG8833 sensor can be utilized for a low-cost thermal camera-based body temperature measurement during COVID-19 protocol enforcement. However, the sensor is not accurate enough for body temperature measurement, so fever detection performance becomes poor. The aim of this study is to apply Random Forest as a classifier in a thermal camera body temperature measurement that uses the AMG8833 sensor and evaluate its performance in detecting fever. In addition to the AMG8833, the thermal camera made also uses a webcam for face detection, and a Raspberry Pi as a minicomputer and a place to apply the Random Forest model. That way, the Thermal camera undergoes three processes, namely face detection from the image captured from the webcam, then temperature and fever detection from AMG8833. From the receiver operating curve (ROC) test conducted, Random Forest area under curve (AUC) value is superior compared to the Logistic Regression and Decision Tree methods with a value of 0.977. Furthermore, the sensitivity and specificity values of Random Forest in detecting fever are 88.5% and 99.5%, respectively. This value is higher than a detection system that does not use Random Forest classification for fever detection.
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