A new YOLO-based method for social distancing from real-time videos.
Mehmet Şirin GündüzGültekin IşıkPublished in: Neural computing & applications (2023)
The coronavirus disease (COVID-19) is primarily disseminated through physical contact. As a precaution, it is recommended that indoor spaces have a limited number of people and at least one meter apart. This study proposes a real-time method for monitoring physical distancing compliance in indoor spaces using computer vision and deep learning techniques. The proposed method utilizes YOLO (You Only Look Once), a popular convolutional neural network-based object detection model, pre-trained on the Microsoft COCO (Common Objects in Context) dataset to detect persons and estimate their physical distance in real time. The effectiveness of the proposed method was assessed using metrics including accuracy rate, frame per second (FPS), and mean average precision (mAP). The results show that the YOLO v3 model had the most remarkable accuracy (87.07%) and mAP (89.91%). On the other hand, the highest fps rate of up to 18.71 was achieved by the YOLO v5s model. The results demonstrate the potential of the proposed method for effectively monitoring physical distancing compliance in indoor spaces, providing valuable insights for future use in other public health scenarios.
Keyphrases
- coronavirus disease
- deep learning
- convolutional neural network
- mental health
- physical activity
- public health
- air pollution
- particulate matter
- sars cov
- healthcare
- climate change
- randomized controlled trial
- artificial intelligence
- machine learning
- health risk
- resistance training
- loop mediated isothermal amplification