COVID-19 Monitoring System using Social Distancing and Face Mask Detection on Surveillance video datasets
Sahana Srinivasan, Rujula Singh R, Ruchita R Biradar, Revathi SA

TL;DR
This paper presents an automated COVID-19 monitoring system using social distancing and face mask detection in surveillance videos, employing deep learning models for real-time analysis and dataset labeling to enhance community resources.
Contribution
It introduces a comprehensive system combining object detection, clustering, and CNN classifiers for COVID-19 safety compliance, along with a novel dataset labeling method for improved evaluation.
Findings
Achieved 91.2% accuracy in face mask detection
F1 score of 90.79% on the dataset
Average prediction time of 7.12 seconds for 78 frames
Abstract
In the current times, the fear and danger of COVID-19 virus still stands large. Manual monitoring of social distancing norms is impractical with a large population moving about and with insufficient task force and resources to administer them. There is a need for a lightweight, robust and 24X7 video-monitoring system that automates this process. This paper proposes a comprehensive and effective solution to perform person detection, social distancing violation detection, face detection and face mask classification using object detection, clustering and Convolution Neural Network (CNN) based binary classifier. For this, YOLOv3, Density-based spatial clustering of applications with noise (DBSCAN), Dual Shot Face Detector (DSFD) and MobileNetV2 based binary classifier have been employed on surveillance video datasets. This paper also provides a comparative study of different face detection…
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Taxonomy
MethodsDepthwise Convolution · Pointwise Convolution · Depthwise Separable Convolution · Softmax · Global Average Pooling · 1x1 Convolution · Residual Connection · Batch Normalization · Inverted Residual Block · BNB Customer Service Number +1-833-534-1729
