Abstract

Vehicle speed estimation is an important problem in traffic surveillance. Many existing approaches to this problem are based on camera calibration. Two shortcomings exist for camera calibration-based methods. First, camera calibration methods are sensitive to the environment, which means the accuracy of the results are compromised in some situations where the environmental condition is not satisfied. Furthermore, camera calibration-based methods rely on vehicle trajectories acquired by a two-stage tracking and detection process. In an effort to overcome these shortcomings, we propose an alternate end-to-end method based on 3-dimensional convolutional networks (3D ConvNets). The proposed method bases average vehicle speed estimation on information from video footage. Our methods are characterized by the following three features. First, we use non-local blocks in our model to better capture spatial–temporal long-range dependency. Second, we use optical flow as an input in the model. Optical flow includes the information on the speed and direction of pixel motion in an image. Third, we construct a multi-scale convolutional network. This network extracts information on various characteristics of vehicles in motion. The proposed method showcases promising experimental results on commonly used dataset with mean absolute error (MAE) as 2.71 km/h and mean square error (MSE) as 14.62 .

Highlights

  • Intelligent transportation systems (ITS) are of practical importance and interest for traffic regulators and supervisors

  • We focus on the average vehicle speed estimation problem, which is defined as the average speed of all the vehicles in a scene

  • As an attempt to ameliorate the aforementioned limitations of camera calibration- based methods, we propose an automatic approach to average vehicle speed estimation based on video footage

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Summary

Introduction

Intelligent transportation systems (ITS) are of practical importance and interest for traffic regulators and supervisors. They provide support for government departments in traffic management, commuting improvement, traffic congestion relief, traffic accident prevention, etc. A critical component of traffic management practice and a popular topic in ITS research is vehicle speed estimation [1], which is widely applied to identify traffic congestion or other events of interest. Three commonly used devices are induction-coil loop detectors, laser detectors, and radar detectors [2]. Laser detectors and radar detectors do not cause these problems, yet they need frequent and expensive maintenance. Radar detectors need to be meticulously positioned in consideration of installation angle

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