Saved in:
Bibliographic Details
Main Authors: Shaqib, SM, Alo, Alaya Parvin, Ramit, Shahriar Sultan, Rupak, Afraz Ul Haque, Khan, Sadman Sadik, Rahman, Md. Sadekur
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.07710
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866917762637496320
author Shaqib, SM
Alo, Alaya Parvin
Ramit, Shahriar Sultan
Rupak, Afraz Ul Haque
Khan, Sadman Sadik
Rahman, Md. Sadekur
author_facet Shaqib, SM
Alo, Alaya Parvin
Ramit, Shahriar Sultan
Rupak, Afraz Ul Haque
Khan, Sadman Sadik
Rahman, Md. Sadekur
contents In order to ensure traffic safety through a reduction in fatalities and accidents, vehicle speed detection is essential. Relentless driving practices are discouraged by the enforcement of speed restrictions, which are made possible by accurate monitoring of vehicle speeds. Road accidents remain one of the leading causes of death in Bangladesh. The Bangladesh Passenger Welfare Association stated in 2023 that 7,902 individuals lost their lives in traffic accidents during the course of the year. Efficient vehicle speed detection is essential to maintaining traffic safety. Reliable speed detection can also help gather important traffic data, which makes it easier to optimize traffic flow and provide safer road infrastructure. The YOLOv8 model can recognize and track cars in videos with greater speed and accuracy when trained under close supervision. By providing insights into the application of supervised learning in object identification for vehicle speed estimation and concentrating on the particular traffic conditions and safety concerns in Bangladesh, this work represents a noteworthy contribution to the area. The MAE was 3.5 and RMSE was 4.22 between the predicted speed of our model and the actual speed or the ground truth measured by the speedometer Promising increased efficiency and wider applicability in a variety of traffic conditions, the suggested solution offers a financially viable substitute for conventional approaches.
format Preprint
id arxiv_https___arxiv_org_abs_2406_07710
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Vehicle Speed Detection System Utilizing YOLOv8: Enhancing Road Safety and Traffic Management for Metropolitan Areas
Shaqib, SM
Alo, Alaya Parvin
Ramit, Shahriar Sultan
Rupak, Afraz Ul Haque
Khan, Sadman Sadik
Rahman, Md. Sadekur
Computer Vision and Pattern Recognition
In order to ensure traffic safety through a reduction in fatalities and accidents, vehicle speed detection is essential. Relentless driving practices are discouraged by the enforcement of speed restrictions, which are made possible by accurate monitoring of vehicle speeds. Road accidents remain one of the leading causes of death in Bangladesh. The Bangladesh Passenger Welfare Association stated in 2023 that 7,902 individuals lost their lives in traffic accidents during the course of the year. Efficient vehicle speed detection is essential to maintaining traffic safety. Reliable speed detection can also help gather important traffic data, which makes it easier to optimize traffic flow and provide safer road infrastructure. The YOLOv8 model can recognize and track cars in videos with greater speed and accuracy when trained under close supervision. By providing insights into the application of supervised learning in object identification for vehicle speed estimation and concentrating on the particular traffic conditions and safety concerns in Bangladesh, this work represents a noteworthy contribution to the area. The MAE was 3.5 and RMSE was 4.22 between the predicted speed of our model and the actual speed or the ground truth measured by the speedometer Promising increased efficiency and wider applicability in a variety of traffic conditions, the suggested solution offers a financially viable substitute for conventional approaches.
title Vehicle Speed Detection System Utilizing YOLOv8: Enhancing Road Safety and Traffic Management for Metropolitan Areas
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2406.07710