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基于深度神经网络的热图像口罩检测

Face with Mask Detection in Thermal Images Using Deep Neural Networks.

机构信息

Department of Biomedical Engineering, Faculty of Electronics, Telecommunications and Informatics, Gdansk University of Technology, Narutowicza 11/12, 80-233 Gdansk, Poland.

出版信息

Sensors (Basel). 2021 Sep 24;21(19):6387. doi: 10.3390/s21196387.

Abstract

As the interest in facial detection grows, especially during a pandemic, solutions are sought that will be effective and bring more benefits. This is the case with the use of thermal imaging, which is resistant to environmental factors and makes it possible, for example, to determine the temperature based on the detected face, which brings new perspectives and opportunities to use such an approach for health control purposes. The goal of this work is to analyze the effectiveness of deep-learning-based face detection algorithms applied to thermal images, especially for faces covered by virus protective face masks. As part of this work, a set of thermal images was prepared containing over 7900 images of faces with and without masks. Selected raw data preprocessing methods were also investigated to analyze their influence on the face detection results. It was shown that the use of transfer learning based on features learned from visible light images results in mAP greater than 82% for half of the investigated models. The best model turned out to be the one based on Yolov3 model (mean average precision-mAP, was at least 99.3%, while the precision was at least 66.1%). Inference time of the models selected for evaluation on a small and cheap platform allows them to be used for many applications, especially in apps that promote public health.

摘要

随着对面部检测的兴趣日益增长,特别是在大流行期间,人们正在寻找有效且能带来更多好处的解决方案。这就是使用热成像技术的情况,它不受环境因素的影响,可以根据检测到的面部来确定温度,这为使用这种方法进行健康控制带来了新的视角和机会。这项工作的目的是分析应用于热图像的基于深度学习的面部检测算法的有效性,特别是对于被病毒防护面罩覆盖的面部。作为这项工作的一部分,准备了一组包含超过 7900 张有和没有口罩的面部图像的热图像。还研究了选定的原始数据预处理方法,以分析它们对面部检测结果的影响。结果表明,使用基于可见光图像中学习到的特征的迁移学习,对于一半的研究模型,mAP 大于 82%。最好的模型是基于 Yolov3 模型的模型(平均精度-mAP 至少为 99.3%,而精度至少为 66.1%)。在小型廉价平台上对选定模型进行评估的推断时间允许它们用于许多应用,特别是在促进公共健康的应用程序中。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9e32/8512205/f770044b60e5/sensors-21-06387-g001.jpg

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