抗击新冠疫情:一种基于带有ResNet-50的YOLO-v2的新型深度学习模型用于医用口罩检测
Fighting against COVID-19: A novel deep learning model based on YOLO-v2 with ResNet-50 for medical face mask detection.
作者信息
Loey Mohamed, Manogaran Gunasekaran, Taha Mohamed Hamed N, Khalifa Nour Eldeen M
机构信息
Department of Computer Science, Faculty of Computers and Artificial Intelligence, Benha University, Benha 13518, Egypt.
University of California, Davis, USA.
出版信息
Sustain Cities Soc. 2021 Feb;65:102600. doi: 10.1016/j.scs.2020.102600. Epub 2020 Nov 12.
Deep learning has shown tremendous potential in many real-life applications in different domains. One of these potentials is object detection. Recent object detection which is based on deep learning models has achieved promising results concerning the finding of an object in images. The objective of this paper is to annotate and localize the medical face mask objects in real-life images. Wearing a medical face mask in public areas, protect people from COVID-19 transmission among them. The proposed model consists of two components. The first component is designed for the feature extraction process based on the ResNet-50 deep transfer learning model. While the second component is designed for the detection of medical face masks based on YOLO v2. Two medical face masks datasets have been combined in one dataset to be investigated through this research. To improve the object detection process, mean IoU has been used to estimate the best number of anchor boxes. The achieved results concluded that the adam optimizer achieved the highest average precision percentage of 81% as a detector. Finally, a comparative result with related work has been presented at the end of the research. The proposed detector achieved higher accuracy and precision than the related work.
深度学习在不同领域的许多实际应用中展现出了巨大潜力。其中一个潜力领域是目标检测。基于深度学习模型的近期目标检测在图像中目标的发现方面取得了令人瞩目的成果。本文的目的是在现实生活图像中对医用口罩目标进行标注和定位。在公共场所佩戴医用口罩可保护人们免受新冠病毒在彼此之间的传播。所提出的模型由两个组件组成。第一个组件基于ResNet - 50深度迁移学习模型设计用于特征提取过程。而第二个组件基于YOLO v2设计用于医用口罩的检测。在本研究中,将两个医用口罩数据集合并为一个数据集进行研究。为了改进目标检测过程,使用平均交并比来估计最佳锚框数量。所取得的结果表明,作为检测器,adam优化器实现了最高平均精度百分比,为81%。最后,在研究结尾给出了与相关工作的对比结果。所提出的检测器比相关工作具有更高的准确性和精度。
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