Abstract

In the Intelligent Transportation System (ITS) realm, queue length estimation is one of an essential yet a challenging task. Queue lengths are important for determining traffic density in traffic lanes so that possible congestion in any lane can be minimized. Smart roadside sensors such as loop detectors, radars and pneumatic road tubes etc. are promising for such tasks though they have a very high installation and maintenance cost. Large scale deployment of surveillance cameras have shown a great potential in the collection of vehicular data in a flexible way and are also cost effective. Similarly, vision-based sensors can be used independently or if required can also augment the functionality of other roadside sensors to effectively process queue length at prescribed traffic lanes. In this research, a CNN-based approach for estimation of vehicle queue length in an urban traffic scenario using low-resolution traffic videos is proposed. The queue length is estimated based on count of total vehicles waiting on a signal. The proposed approach calculates queue length without the knowledge of any onsite camera calibration information. Average vehicle length is approximated to be 5 m. This caters for the vehicles at the far end of the traffic lane that appear smaller in the camera view. Identification of stopped vehicles is done using Deep SORT based object tracking. Due to robust and accurate CNN-based detection and tracking, the queue length estimated by using only the cameras has been very effective. This mostly eliminates the need for fusion with any roadside or in-vehicle sensors. A detailed comparative analysis of vehicle detection models including YOLOv3, YOLOv4, YOLOv5, SSD, ResNet101, and InceptionV3 was performed. Based on this analysis, YOLOv4 was selected as a baseline model for queue length estimation. Using the pre-trained 80-classes YOLOv4 model, an overall accuracy of 73% and 88% was achieved for vehicle count and vehicle count-based queue length estimation, respectively. After fine-tuning of model and narrowing the output classes to vehicle class only, an average accuracy of 83% and 93% was achieved, respectively. This shows the efficiency and robustness of the proposed approach.

Highlights

  • The increase in road traffic due to urbanization has led to several transportation and traffic management issues, such as frequent traffic congestions and traffic accidents etc [1,2,3]

  • Vehicle queue length on the signalized intersection is defined as the distance from the stop line to the tail of the last vehicle stopped in any traffic lane while the signal is red during one signal cycle

  • Queue length is the distance from the stop line to the tail of the last vehicle stopped in any traffic lane while the signal is red during one signal cycle

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Summary

Introduction

The increase in road traffic due to urbanization has led to several transportation and traffic management issues, such as frequent traffic congestions and traffic accidents etc [1,2,3]. Road congestions in a city traffic require smart solutions like estimation of vehicle queue length in a traffic lane and prediction of traffic etc [4,5,6,7,8,9]. ITS technologies such as smart roadside sensors and surveillance cameras with enhanced analytics functionalities are widely adapted around the world [3]. These traffic cameras can be used independently or if required can augment the functionality of other smart roadside sensors to effectively estimate queue length at prescribed traffic lanes

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