Real-time vehicle detection system on the highway

Pisanu Kumeechai
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Abstract

Locating and classifying different types of vehicles is a vital element in numerous applications of automation and intelligent systems ranging from traffic surveillance to vehicle identification, with deep learning models now dominating the field of vehicle detection. However, vehicle detection in Bangladesh remains a relatively unexplored research lacuna. One of the main goals of vehicle detection is its real-time application, with “You Only Look Once” (YOLO) models proving to be the most effective. This paper compared real-time vehicle highway detection systems using YOLOv4, Faster R-CNN and SSD algorithms to determine the best performance. A vehicle detection and tracking system was also developed that improved highway safety. Vehicle trials compared the real-time performances of the YOLO, Faster R-CNN and SSD algorithms in detecting and tracking highway vehicles by measuring precision, recall, F1-score and operating speed. Models for each algorithm were constructed and each model was trained and tested, with performance measured using a confusion matrix. This statistical tool assessed the efficiency of the system using a prepared test dataset and evaluated the results using appropriate indicators such as real-time road lines, traffic signs and vehicle detection false positive rates. Results showed that the YOLOv4 algorithm outperformed Faster R-CNN and SSD in real-time vehicle detection and tracking on highways. YOLOv4 also processed the results more quickly and proved superior in detecting and tracking objects in real time. The Faster R-CNN algorithm gave high object detection, tracking accuracy and recall while reducing the number of locations needing detection, with the SSD algorithm providing high precision, recall and good image detection results.
高速公路上的实时车辆检测系统
在从交通监控到车辆识别的众多自动化和智能系统应用中,不同类型车辆的定位和分类是一个重要因素,而深度学习模型目前在车辆检测领域占据主导地位。然而,孟加拉国的车辆检测仍是一个相对空白的研究领域。车辆检测的主要目标之一是实时应用,而 "只看一次"(YOLO)模型被证明是最有效的。本文比较了使用 YOLOv4、Faster R-CNN 和 SSD 算法的高速公路车辆实时检测系统,以确定最佳性能。同时还开发了一个车辆检测和跟踪系统,以提高高速公路的安全性。车辆试验通过测量精确度、召回率、F1 分数和运行速度,比较了 YOLO、Faster R-CNN 和 SSD 算法在检测和跟踪高速公路车辆方面的实时性能。为每种算法构建了模型,并对每个模型进行了训练和测试,使用混淆矩阵对性能进行测量。该统计工具使用准备好的测试数据集评估了系统的效率,并使用实时道路线、交通标志和车辆检测误报率等适当指标对结果进行了评估。结果表明,YOLOv4 算法在高速公路实时车辆检测和跟踪方面的表现优于 Faster R-CNN 和 SSD。YOLOv4 还能更快地处理结果,并在实时检测和跟踪物体方面表现出色。Faster R-CNN 算法提供了较高的物体检测、跟踪精度和召回率,同时减少了需要检测的位置数量,而 SSD 算法则提供了较高的精度、召回率和良好的图像检测结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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