Vehicle Speed Detection System Utilizing YOLOv8: Enhancing Road Safety and Traffic Management for Metropolitan Areas
SM Shaqib, Alaya Parvin Alo, Shahriar Sultan Ramit, Afraz Ul Haque, Rupak, Sadman Sadik Khan, Md. Sadekur Rahman

TL;DR
This paper presents a vehicle speed detection system using YOLOv8 that improves accuracy and efficiency, aiding traffic safety and management in Bangladesh by providing reliable speed monitoring and data collection.
Contribution
The work applies supervised learning with YOLOv8 for vehicle speed estimation tailored to Bangladesh's traffic conditions, demonstrating improved accuracy and practical viability.
Findings
MAE of 3.5 and RMSE of 4.22 in speed prediction
Enhanced speed detection accuracy over traditional methods
Potential for wider application in diverse traffic environments
Abstract
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…
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Taxonomy
TopicsIoT and GPS-based Vehicle Safety Systems · Autonomous Vehicle Technology and Safety · Fire Detection and Safety Systems
MethodsYou Only Look Once · SPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings · Masked autoencoder
