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Evaluating the Effect of Roadside Parking on a Dual-Direction Urban Street
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Real-Time Queue Length Detection with Roadside LiDAR Data.

Jianqing Wu1,2, Hao Xu2, Yongsheng Zhang2

  • 1School of Qilu Transportation, Shandong University, Jinan 250061, China.

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This study introduces a new method using roadside LiDAR data for real-time traffic queue length detection. The novel approach achieves 98% accuracy, improving traffic management systems.

Keywords:
queue lengthroadside sensorvehicle detection

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Area of Science:

  • Traffic engineering
  • Remote sensing technology
  • Computer vision

Background:

  • Real-time traffic queue length data is crucial for effective traffic management and applications.
  • Existing methods may face challenges with accuracy and real-time data acquisition.

Purpose of the Study:

  • To develop and validate a novel method for real-time traffic queue length detection using roadside LiDAR data.
  • To address challenges such as occlusion and data loss in queue length estimation.

Main Methods:

  • Continuous vehicle tracking using LiDAR data processing: background filtering, point clustering, object classification, lane identification, and object association.
  • Development of a specific algorithm to identify the last vehicle in a queue, accounting for occlusion and package loss.
  • Field validation using ground-truth data from multiple sites.

Main Results:

  • The proposed method accurately detects traffic queue lengths in real-time.
  • Achieved an average accuracy of 98% across six investigated sites.
  • Detailed diagnosis of errors in queue length detection was performed.

Conclusions:

  • The novel LiDAR-based method provides a reliable and accurate solution for real-time traffic queue length detection.
  • This technology can significantly enhance the capabilities of traffic management systems.
  • The method's robustness in handling occlusion and data loss makes it suitable for practical deployment.