A hybrid deep learning based approach for the prediction of social distancing among individuals in public places during Covid19 pandemic

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Abstract

Social distance is considered one of the most effective prevention techniques to prevent the spread of Covid19 disease. To date, there is no proper system available to monitor whether social distancing protocol is being followed by individuals or not in public places. This research has proposed a hybrid deep learning-based model for predicting whether individuals maintain social distancing in public places through video object detection. This research has implemented a customized deep learning model using Detectron2 and IOU for monitoring the process. The base model adapted is RCNN and the optimization algorithm used is Stochastic Gradient Descent algorithm. The model has been tested on real time images of people gathered in textile shops to demonstrate the real time application of the developed model. The performance evaluation of the proposed model reveals that the precision is 97.9% and the mAP value is 84.46, which makes it clear that the model developed is good in monitoring the adherence of social distancing by individuals.

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APA

Sahoo, S. K. (2023). A hybrid deep learning based approach for the prediction of social distancing among individuals in public places during Covid19 pandemic. Journal of Intelligent and Fuzzy Systems, 44(1), 981–999. https://doi.org/10.3233/JIFS-221174

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