Vehicle Trajectory Prediction Method Based on License Plate Information Obtained from Video-Imaging Detectors in Urban Road Environment

The vehicle license plate data obtained from video-imaging detectors contains a huge volume of information of vehicle trip rules and driving behavior characteristics. In this paper, a real-time vehicle trajectory prediction method is proposed based on historical trip rules extracted from vehicle lic...

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Main Authors: Zheng Zhang, Haiqing Liu, Laxmisha Rai, Siyi Zhang
Format: Article
Language:English
Published: MDPI AG 2020-02-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/20/5/1258
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spelling doaj-68a0970900e6496795b48b1c5cd3d4652020-11-25T00:31:47ZengMDPI AGSensors1424-82202020-02-01205125810.3390/s20051258s20051258Vehicle Trajectory Prediction Method Based on License Plate Information Obtained from Video-Imaging Detectors in Urban Road EnvironmentZheng Zhang0Haiqing Liu1Laxmisha Rai2Siyi Zhang3College of Transportation, Shandong University of Science and Technology, Qingdao 266000, ChinaCollege of Transportation, Shandong University of Science and Technology, Qingdao 266000, ChinaCollege of Electronic and Information Engineering, Shandong University of Science and Technology, Qingdao 266000, ChinaCollege of Transportation, Shandong University of Science and Technology, Qingdao 266000, ChinaThe vehicle license plate data obtained from video-imaging detectors contains a huge volume of information of vehicle trip rules and driving behavior characteristics. In this paper, a real-time vehicle trajectory prediction method is proposed based on historical trip rules extracted from vehicle license plate data in an urban road environment. Using the driving status information at intersections, the vehicle trip chain is acquired on the basis of the topologic graph of the road network and channelization of intersections. In order to obtain an integral and continuous trip chain in cases where data is missing in the original vehicle license plate, a trip chain compensation method based on the Dijkstra algorithm is presented. Moreover, the turning state transition matrix which is used to describe the turning probability of a vehicle when it passes a certain intersection is calculated by a massive volume of historical trip chain data. Finally, a <i>k</i>-step vehicle trajectory prediction model is proposed to obtain the maximum possibility of downstream intersections. The overall method is thoroughly tested and demonstrated in a realistic road traffic scenario with actual vehicle license plate data. The results show that vehicles can reach an average accuracy of 0.72 for one-step prediction when there are only 200 historical training data samples. The proposed method presents significant performance in trajectory prediction.https://www.mdpi.com/1424-8220/20/5/1258vehicle trajectory predictionlicense plate datatrip chainturning state transit
collection DOAJ
language English
format Article
sources DOAJ
author Zheng Zhang
Haiqing Liu
Laxmisha Rai
Siyi Zhang
spellingShingle Zheng Zhang
Haiqing Liu
Laxmisha Rai
Siyi Zhang
Vehicle Trajectory Prediction Method Based on License Plate Information Obtained from Video-Imaging Detectors in Urban Road Environment
Sensors
vehicle trajectory prediction
license plate data
trip chain
turning state transit
author_facet Zheng Zhang
Haiqing Liu
Laxmisha Rai
Siyi Zhang
author_sort Zheng Zhang
title Vehicle Trajectory Prediction Method Based on License Plate Information Obtained from Video-Imaging Detectors in Urban Road Environment
title_short Vehicle Trajectory Prediction Method Based on License Plate Information Obtained from Video-Imaging Detectors in Urban Road Environment
title_full Vehicle Trajectory Prediction Method Based on License Plate Information Obtained from Video-Imaging Detectors in Urban Road Environment
title_fullStr Vehicle Trajectory Prediction Method Based on License Plate Information Obtained from Video-Imaging Detectors in Urban Road Environment
title_full_unstemmed Vehicle Trajectory Prediction Method Based on License Plate Information Obtained from Video-Imaging Detectors in Urban Road Environment
title_sort vehicle trajectory prediction method based on license plate information obtained from video-imaging detectors in urban road environment
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-02-01
description The vehicle license plate data obtained from video-imaging detectors contains a huge volume of information of vehicle trip rules and driving behavior characteristics. In this paper, a real-time vehicle trajectory prediction method is proposed based on historical trip rules extracted from vehicle license plate data in an urban road environment. Using the driving status information at intersections, the vehicle trip chain is acquired on the basis of the topologic graph of the road network and channelization of intersections. In order to obtain an integral and continuous trip chain in cases where data is missing in the original vehicle license plate, a trip chain compensation method based on the Dijkstra algorithm is presented. Moreover, the turning state transition matrix which is used to describe the turning probability of a vehicle when it passes a certain intersection is calculated by a massive volume of historical trip chain data. Finally, a <i>k</i>-step vehicle trajectory prediction model is proposed to obtain the maximum possibility of downstream intersections. The overall method is thoroughly tested and demonstrated in a realistic road traffic scenario with actual vehicle license plate data. The results show that vehicles can reach an average accuracy of 0.72 for one-step prediction when there are only 200 historical training data samples. The proposed method presents significant performance in trajectory prediction.
topic vehicle trajectory prediction
license plate data
trip chain
turning state transit
url https://www.mdpi.com/1424-8220/20/5/1258
work_keys_str_mv AT zhengzhang vehicletrajectorypredictionmethodbasedonlicenseplateinformationobtainedfromvideoimagingdetectorsinurbanroadenvironment
AT haiqingliu vehicletrajectorypredictionmethodbasedonlicenseplateinformationobtainedfromvideoimagingdetectorsinurbanroadenvironment
AT laxmisharai vehicletrajectorypredictionmethodbasedonlicenseplateinformationobtainedfromvideoimagingdetectorsinurbanroadenvironment
AT siyizhang vehicletrajectorypredictionmethodbasedonlicenseplateinformationobtainedfromvideoimagingdetectorsinurbanroadenvironment
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