Abstract
Near the end of December 2019, the globe was hit
with a major crisis, which is nothing but the coronavirusbased
pandemic. The authorities at the train station should
also keep in mind the need to limit the spread of the covid
virus in the event of a global pandemic. When it comes to
controlling the COVID-19 epidemic, public transportation
facilities like train stations play a pivotal role because of the
proximity of so many people who may be exposed to the
virus. Using common place CCTV cameras and deep
learning with simple online and real-time (DeepSORT)
methods, this study develops social distance monitoring
using a YOLOv4 identification of a Surveillance Object
Model. Based on experiments conducted with a
minicomputer equipped with an Intel 11th Gen Intel(R)
Core(TM) i3-1115G4 at 3.00GHz, 2995 Mhz, two Core(s),
four Logical processor, four gigabytes of random-access
memory (RAM), this paper makes use of CCTV
surveillance, which was put into practice at the Guindy
railway station, Chennai, Tamilnadu in India in order to
detect the violation of social distancing.