| Literature DB >> 34729498 |
Moein Razavi1, Hamed Alikhani2, Vahid Janfaza1, Benyamin Sadeghi3, Ehsan Alikhani4.
Abstract
The COVID-19 pandemic has caused many shutdowns in different industries around the world. Sectors such as infrastructure construction and maintenance projects have not been suspended due to their significant effect on people's routine life. In such projects, workers work close together that makes a high risk of infection. The World Health Organization recommends wearing a face mask and practicing physical distancing to mitigate the virus's spread. In this paper, we developed a computer vision system to automatically detect the violation of face mask wearing and physical distancing among construction workers to assure their safety on infrastructure projects during the pandemic. For the face mask detection, we collected and annotated 1000 images, including different types of face mask wearing, and added them to a pre-existing face mask dataset to develop a dataset of 1853 images and increased the dataset to 3300 images by data augmentation. Then, we trained and tested multiple Tensorflow state-of-the-art object detection models on the face mask dataset and chose the Faster R-CNN Inception ResNet V2 network that yielded the accuracy of 99.8%. For physical distance detection, we employed the Faster R-CNN Inception V2 to detect people. A transformation matrix was used to eliminate the camera angle's effect on the object distances on the image. The Euclidian distance used the pixels of the transformed image to compute the actual distance between people. A threshold of six feet was considered to capture physical distance violation. We also used transfer learning for training the model. The final model was applied on four videos of road maintenance projects in Houston, TX, that effectively detected the face mask and physical distance. We recommend that construction owners use the proposed system to enhance construction workers' safety in the pandemic situation. © This is a U.S. government work and not under copyright protection in the U.S.; foreign copyright protection may apply 2021.Entities:
Keywords: Construction Sites; Deep Learning; Facemask Detection; Faster RCNN; Social Distance Detection
Year: 2021 PMID: 34729498 PMCID: PMC8554503 DOI: 10.1007/s42979-021-00894-0
Source DB: PubMed Journal: SN Comput Sci ISSN: 2661-8907
Fig. 1Examples of images in the face mask database
Object detection models and their accuracy on the face mask dataset
| # | Model | Image size | Accuracy (%) |
|---|---|---|---|
| 1 | Faster R-CNN Inception ResNet V2 | 800*1333 | 99.8 |
| 2 | Faster R-CNN Inception ResNet V2 | 640*640 | 81.8 |
| 3 | Faster R-CNN ResNet 152 V1 | 640*640 | 95 |
| 4 | SSD ResNet50 V1 FPN (RetinaNet50) | 640*640 | 82 |
| 5 | SSD MobileNet V1 FPN | 640*640 | 93.6 |
The Faster R-CNN Inception ResNet V2 800*1333 was selected due to its highest accuracy, i.e., 99.8%
Fig. 2A perspective image transformation to a bird’s
Fig. 3A schematic architecture of the Faster R-CNN
Fig. 4The convergence of the classification loss for the face mask detection model
Fig. 5The application of the model on four road construction cases