TL;DR
DeepSOCIAL introduces a hybrid computer vision model using YOLOv4 for real-time social distancing monitoring and infection risk assessment from CCTV footage, achieving high accuracy and robustness in diverse conditions.
Contribution
The paper presents a novel hybrid deep neural network combining YOLOv4, IPM, and SORT for accurate, real-time people detection and social distancing monitoring in various environments.
Findings
Achieved 99.8% mean average precision in challenging conditions.
Real-time processing at 24.1 fps on standard CCTV footage.
Superior performance compared to existing state-of-the-art methods.
Abstract
Social distancing is a recommended solution by the World Health Organisation (WHO) to minimise the spread of COVID-19 in public places. The majority of governments and national health authorities have set the 2-meter physical distancing as a mandatory safety measure in shopping centres, schools and other covered areas. In this research, we develop a hybrid Computer Vision and YOLOv4-based Deep Neural Network model for automated people detection in the crowd in indoor and outdoor environments using common CCTV security cameras. The proposed DNN model in combination with an adapted inverse perspective mapping (IPM) technique and SORT tracking algorithm leads to a robust people detection and social distancing monitoring. The model has been trained against two most comprehensive datasets by the time of the research the Microsoft Common Objects in Context (MS COCO) and Google Open Image…
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Taxonomy
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