An Automated Classification of Vehicles and Violation Detection in Special Purpose Lanes

J. Torres, Miguel Antonio E. Gumaru, Ezekiel Aaron N. Luna, Leonard H. Quiroga, Kyle Joash Generalao, Kanny Krizzy D. Serrano
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Abstract

The frequent traffic congestion in major highways, especially through rush hours, led to the strict implementation of special purpose lanes as an efficient way of public transportation. However, due to these special purpose lanes often being uncongested, other vehicles would use this lane to skip traffic and led to an increase in personnel deployment to monitor the said lane. Current developed automated traffic violation detection systems in the Philippines have included various traffic violation detection but do not include violations for special purpose lanes. Papers that did include special purpose lane violations, however, would use onboard cameras, which might not provide continuous lane monitoring, while others that utilized fixed surveillance cameras had outdated algorithms. Hence, there is a need to develop a system deployed to a fixed surveillance camera setup with updated set of algorithms. Vehicle detection and classification using YOLOv5, and lane detection using a polygonal mask are used to build up the system for violation detection in special purpose lanes. This would be applied to existing stationary traffic surveillance cameras to monitor the roads 24/7. The system developed would aid enforcers in apprehension and would increase the efficiency and objectivity of the apprehension process.
专用车道车辆自动分类与违章检测
主要高速公路经常出现交通拥堵,特别是在高峰时段,作为一种高效的公共交通方式,必须严格实施专用车道。然而,由于这些专用车道通常不拥挤,其他车辆会使用这条车道来避开交通,导致增加人员部署来监控该车道。菲律宾目前开发的自动交通违规检测系统包括各种交通违规检测,但不包括特殊目的车道的违规行为。然而,涉及特殊目的车道违规的文件将使用车载摄像头,这可能无法提供连续的车道监控,而其他使用固定监控摄像头的文件则使用过时的算法。因此,有必要开发一个系统,部署到一个固定的监控摄像头设置与更新的一套算法。采用YOLOv5进行车辆检测与分类,采用多边形掩模进行车道检测,构建专用车道违章检测系统。这将应用于现有的固定交通监控摄像头,全天候监控道路。所开发的系统将有助于执法者的逮捕,并将提高逮捕过程的效率和客观性。
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