Vision-based Crowd Counting and Social Distancing Monitoring using Tiny-YOLOv4 and DeepSORT
Immanuel Jose C. Valencia, Elmer P. Dadios, Alexis M. Fillone, John Carlo V. Puno, Renann G. Baldovino, Robert Kerwin C. Billones
Abstract
With the novel coronavirus, social distancing and crowd monitoring became vital in managing the spread of the virus. This paper presents a desktop application that utilizes Tiny-YOLOv4 and DeepSORT tracking algorithm to monitor crowd count and social distancing in a top-view camera perspective. The application is able to process video files or live camera feed such as CCTV or surveillance cameras and generate reports indicating people detected per unit time, percentage of social distancing per unit time, detection and social distancing logs as well as color-coded bounding boxes to indicate if the detected people are following social distancing protocols.