| Literature DB >> 33679209 |
Sunil Singh1, Umang Ahuja1, Munish Kumar2, Krishan Kumar1, Monika Sachdeva3.
Abstract
There are many solutions to prevent the spread of the COVID-19 virus and one of the most effective solutions is wearing a face mask. Almost everyone is wearing face masks at all times in public places during the coronavirus pandemic. This encourages us to explore face mask detection technology to monitor people wearing masks in public places. Most recent and advanced face mask detection approaches are designed using deep learning. In this article, two state-of-the-art object detection models, namely, YOLOv3 and faster R-CNN are used to achieve this task. The authors have trained both the models on a dataset that consists of images of people of two categories that are with and without face masks. This work proposes a technique that will draw bounding boxes (red or green) around the faces of people, based on whether a person is wearing a mask or not, and keeps the record of the ratio of people wearing face masks on the daily basis. The authors have also compared the performance of both the models i.e., their precision rate and inference time.Entities:
Keywords: COVID-19; Deep learning; Face mask detection; Faster R-CNN; YOLO v3
Year: 2021 PMID: 33679209 PMCID: PMC7917166 DOI: 10.1007/s11042-021-10711-8
Source DB: PubMed Journal: Multimed Tools Appl ISSN: 1380-7501 Impact factor: 2.757
Fig. 1This shows that people not wearing mask has very high risk (97.0%) of getting infected
Fig. 2YOLOv3 neural network
Fig. 3RPN architecture
Fig. 4Masked faces with diversified orientations, degrees of occlusion and mask types
Fig. 5Yolov3 architecture
Fig. 6Results from YOLO_v3 model
Fig. 7Faster-RCNN architecture
Comparative analysis
| MODEL | Average Precision | Inference Time |
|---|---|---|
| YOLOv3 | 55 | 0.045 s |
| Faster R-CNN | 62 | 0.15 s |
Fig. 8Results from faster-RCNN model