Abstract

Intelligent vehicle detection and counting are becoming increasingly important in the field of highway management. However, due to the different sizes of vehicles, their detection remains a challenge that directly affects the accuracy of vehicle counts. To address this issue, this paper proposes a vision-based vehicle detection and counting system. A new high definition highway vehicle dataset with a total of 57,290 annotated instances in 11,129 images is published in this study. Compared with the existing public datasets, the proposed dataset contains annotated tiny objects in the image, which provides the complete data foundation for vehicle detection based on deep learning. In the proposed vehicle detection and counting system, the highway road surface in the image is first extracted and divided into a remote area and a proximal area by a newly proposed segmentation method; the method is crucial for improving vehicle detection. Then, the above two areas are placed into the YOLOv3 network to detect the type and location of the vehicle. Finally, the vehicle trajectories are obtained by the ORB algorithm, which can be used to judge the driving direction of the vehicle and obtain the number of different vehicles. Several highway surveillance videos based on different scenes are used to verify the proposed methods. The experimental results verify that using the proposed segmentation method can provide higher detection accuracy, especially for the detection of small vehicle objects. Moreover, the novel strategy described in this article performs notably well in judging driving direction and counting vehicles. This paper has general practical significance for the management and control of highway scenes.

Highlights

  • Vehicle detection and statistics in highway monitoring video scenes are of considerable significance to intelligent traffic management and control of the highway

  • This study established a high-definition vehicle object dataset from the perspective of surveillance cameras and proposed an object detection and tracking method for highway surveillance video scenes

  • A more effective ROI area was obtained by the extraction of the road surface area of the highway

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Summary

Introduction

Vehicle detection and statistics in highway monitoring video scenes are of considerable significance to intelligent traffic management and control of the highway. The object size of the vehicle changes greatly at this viewing angle, and the detection accuracy of a small object far away from the road is low. Traditional machine vision methods use the motion of a vehicle to separate it from a fixed background image. This method can be divided into three categories [1]: the method of using background subtraction [2], the method of using continuous video frame difference [3], and the method of using optical flow [4]. The moving foreground region is separated by the threshold [3] By using this method and suppressing noise, the stopping of the vehicle can be detected [5].

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