Deep learning-based bird eye view social distancing monitoring using surveillance video for curbing the COVID-19 spread

被引:0
作者
Raghav Magoo
Harpreet Singh
Neeru Jindal
Nishtha Hooda
Prashant Singh Rana
机构
[1] Thapar Institute of Engineering and Technology,School of Computing
[2] Indian Institute of Information Technology,undefined
来源
Neural Computing and Applications | 2021年 / 33卷
关键词
Social distancing; Real-time; COVID-19; Bounding boxes; Deep learning;
D O I
暂无
中图分类号
学科分类号
摘要
The escalating transmission intensity of COVID-19 pandemic is straining the healthcare systems worldwide. Due to the unavailability of effective pharmaceutical treatment and vaccines, monitoring social distancing is the only viable tool to strive against asymptomatic transmission. Pertaining to the need of monitoring the social distancing at populated areas, a novel bird eye view computer vision-based framework implementing deep learning and utilizing surveillance video is proposed. This proposed method employs YOLO v3 object detection model and uses key point regressor to detect the key feature points. Additionally, as the massive crowd is detected, the bounding boxes on objects are received, and red boxes are also visible if social distancing is violated. When empirically tested over real-time data, proposed method is established to be efficacious than the existing approaches in terms of inference time and frame rate.
引用
收藏
页码:15807 / 15814
页数:7
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  • [1] Rahimi I(2021)A review on COVID-19 forecasting models Neural Comput Appl undefined undefined-undefined
  • [2] Chen F(2021)Types of COVID-19 clusters and their relationship with social distancing in Seoul Metropolitan area in South Korea Int J Infect Dis undefined undefined-undefined
  • [3] Gandomi AH(2021)Development and external evaluation of predictions models for mortality of COVID-19 patients using machine learning method Neural Comput Appl undefined undefined-undefined
  • [4] Choi YJ(2020)Nonpharmaceutical measures for pandemic influenza in nonhealthcare settings—social distancing measures Emerg Infect Dis undefined undefined-undefined
  • [5] Park MJ(2018)Effectiveness of workplace social distancing measures in reducing influenza transmission: a systematic review BMC Public Health undefined undefined-undefined
  • [6] Park SJ(2020)The effect of control strategies to reduce social mixing on outcomes of the COVID-19 epidemic in Wuhan, China: a modelling study The Lancet Public Health undefined undefined-undefined
  • [7] Li S(2020)Pandemic politics: Timing state-level social distancing responses to COVID-19 J Health Polit Policy Law undefined undefined-undefined
  • [8] Lin Y(2020)Target specific mining of COVID-19 scholarly articles using one-class approach Chaos Soliton Fract undefined undefined-undefined
  • [9] Zhu T(2020)Automated diagnosis of COVID-19 with limited posteroanterior chest X-ray images using fine-tuned deep neural networks Appl Intell undefined undefined-undefined
  • [10] Fong MW(2020)COVID-19 epidemic analysis using machine learning and deep learning algorithms MedRxiv undefined undefined-undefined