An efficient traffic management system to detect lane rule violation using Real-time Object Detection
Abstract
There has been an upsurge in the number of issues with Bangladesh’s present traffic
control system. Hence, several accidents have occurred frequently. The two primary
causes of a rise in the number of injuries are violations of traffic laws, such as illegal
lane changes and excessive speeding. Here we have presented extensive research with
an intention to resolve the current traffic management system using real-time object
detection. In our proposed system, an edge node will detect the lane-based rule
violation and send the data to the nearest intermediary node. Afterward, License
plates as objects will be detected using YOLO object detection executed in the
intermediary computing device. Finally, extracted license plate images from the
intermediary nodes will be sent to BRTA traffic servers to detect the violator’s
Bangla license plate number using pytesseract. We have built a data set of 1450
images for object detection and achieved an accuracy of 91%. Our system will
assist the traffic control department in identifying those responsible for traffic rule
violations and ensuring that the laws are strictly enforced.