Abstract

Lane level traffic data such as average waiting time and flow data at each turn direction not only enable navigation systems to provide users with more detailed and finer-grained information; it can also pave the way for future traffic congestion prediction. Although few studies considered extracting traffic flow data from a video at the lane level, it is not clear how many vehicles required turn left in fine-grained lanes during a fixed time. Many previous works focus on applying sensor data instead to videos to extract traffic flow. However, the reversible lanes and various shooting angles obstruct the progress of constructing a traffic data collection system. A framework is proposed to get these data in the intersection directly from a video and solve the problem of vehicle occlusion based on the delayed matching model. First, the different direction lanes are detected automatically by clustering trajectory data which are generated by tracking each vehicle. Experiments are conducted on urban intersections to show that our method can generate these traffic data effectively.

Highlights

  • In the era of big data, the data such as the waiting time, the turning type of vehicles, and traffic flow of each lane are important parts of traffic data

  • In the stage of generating traffic big data, we propose a clustering method to estimate lanes in each intersection based on vehicle driving trajectory

  • We extend a single trajectory by matching the end of the trajectory and the newly detected vehicle by comparing their feature distance

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Summary

Research Article

A Way to Automatically Generate Lane Level Traffic Data from Video in the Intersections. Lane level traffic data such as average waiting time and flow data at each turn direction enable navigation systems to provide users with more detailed and finer-grained information; it can pave the way for future traffic congestion prediction. Few studies considered extracting traffic flow data from a video at the lane level, it is not clear how many vehicles required turn left in fine-grained lanes during a fixed time. A framework is proposed to get these data in the intersection directly from a video and solve the problem of vehicle occlusion based on the delayed matching model. The different direction lanes are detected automatically by clustering trajectory data which are generated by tracking each vehicle. Experiments are conducted on urban intersections to show that our method can generate these traffic data effectively

Introduction
Journal of Advanced Transportation
Vehicle tracking
Waiting for some time
Clustered trajectory and estimated lane
Turn type
Findings
Volume in five minutes
Full Text
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