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Lane-based queue length estimation at signalized intersections using single-section license plate recognition data

Keshuang Tang, Hao Wu, Jiarong Yao, Chaopeng Tan, Yangbeibei Ji

2021Transportmetrica B Transport Dynamics15 citationsDOI

Abstract

Due to full record of discharging vehicle headway, License Plate Recognition (LPR) is used as an ideal source in most existing queue length estimation methods through a double-section detection using shock-wave models or input-output models. However, the impacts of heavy vehicles and miss detection by LPR detectors are mostly ignored. Therefore, this paper proposes a lane-based queue length estimation method using single-section LPR detection, considering miss detection and heavy vehicles. The queue length estimation problem is transformed to a change-point identification problem for discharging headways time-series, using E-Divisive with Medians (EDM) method. The maximal queue length is identified as the change-point of the discharging headways with the maximal differences between queued and non-queued vehicles, considering the queuing homogeneity of a lane group and the miss detection rate of LPR. The proposed method is validated using simulation and empirical cases with promising performance and good robustness under various conditions.

Topics & Concepts

QueueComputer scienceQueueing theoryRobustness (evolution)AlgorithmReal-time computingSimulationComputer networkGeneBiochemistryChemistryVehicle License Plate RecognitionAutonomous Vehicle Technology and SafetyTraffic control and management
Lane-based queue length estimation at signalized intersections using single-section license plate recognition data | Litcius