论文标题

使用机器学习的Covid-19自动热筛选

Automated Thermal Screening for COVID-19 using Machine Learning

论文作者

Katte, Pratik, Kakileti, Siva Teja, Madhu, Himanshu J., Manjunath, Geetha

论文摘要

在过去的两年中,由于19日,数以百万计的生命丧生。尽管有一年的疫苗接种计划,但由于Covid-19的新变体,住院率和死亡仍然很高。在所有公共场所,严格的准则和共同筛查措施,例如温度检查和面罩检查,有助于减少COVID-19的传播。视觉检查以确保这些筛查措施可能会征税和错误。自动检查可确保有效,准确的筛选。传统方法涉及从视觉相机图像中识别面部和口罩,然后从热成像相机中提取温度值。将视觉成像用作主要模式仅限于良好条件的这些应用。仅将热成像用于这些筛选措施使系统不变到照明。但是,缺乏开源数据集是开发此类系统的问题。在本文中,我们讨论了使用热视频流进行机器学习的工作,以一种被动的非侵入性方式进行面部和掩蔽式检测以及随后的温度筛查,该方式可以在公共场所采用有效的自动化Covid-19筛查方法。我们开源的NTIC数据集用于培训模型,并在8个不同的位置收集。我们的结果表明,在高照明存在下,热成像的使用与视觉成像一样有效。即使在低光条件下,对于热图像,此性能也保持不变,而视觉训练的分类器的性能显示出超过50%的降解。

In the last two years, millions of lives have been lost due to COVID-19. Despite the vaccination programmes for a year, hospitalization rates and deaths are still high due to the new variants of COVID-19. Stringent guidelines and COVID-19 screening measures such as temperature check and mask check at all public places are helping reduce the spread of COVID-19. Visual inspections to ensure these screening measures can be taxing and erroneous. Automated inspection ensures an effective and accurate screening. Traditional approaches involve identification of faces and masks from visual camera images followed by extraction of temperature values from thermal imaging cameras. Use of visual imaging as a primary modality limits these applications only for good-lighting conditions. The use of thermal imaging alone for these screening measures makes the system invariant to illumination. However, lack of open source datasets is an issue to develop such systems. In this paper, we discuss our work on using machine learning over thermal video streams for face and mask detection and subsequent temperature screening in a passive non-invasive way that enables an effective automated COVID-19 screening method in public places. We open source our NTIC dataset that was used for training our models and was collected at 8 different locations. Our results show that the use of thermal imaging is as effective as visual imaging in the presence of high illumination. This performance stays the same for thermal images even under low-lighting conditions, whereas the performance with visual trained classifiers show more than 50% degradation.

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