Volume 41 Issue 3
Jun.  2023
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LI Bin, MA Jing, XU Xuecai, MA Changxi. An Automatic Freeway Incident Detection Algorithm using Vehicle Trajectories[J]. Journal of Transport Information and Safety, 2023, 41(3): 23-29. doi: 10.3963/j.jssn.1674-4861.2023.03.003
Citation: LI Bin, MA Jing, XU Xuecai, MA Changxi. An Automatic Freeway Incident Detection Algorithm using Vehicle Trajectories[J]. Journal of Transport Information and Safety, 2023, 41(3): 23-29. doi: 10.3963/j.jssn.1674-4861.2023.03.003

An Automatic Freeway Incident Detection Algorithm using Vehicle Trajectories

doi: 10.3963/j.jssn.1674-4861.2023.03.003
  • Received Date: 2021-10-20
    Available Online: 2023-09-16
  • An automatic freeway incident detection method is important for maintaining a safe, efficient traffic operation. Due to the fact that a large number of surveillance videos may hinder the real-time and accurate response of current automatic incident detection algorithms, a comparative pessimistic likelihood estimation (CPLE) algorithm based on trajectory classification is proposed. A framework for automatic detection of anomalous events, which contains vehicle detection, vehicle tracking and trajectory classification, is developed. YOLO v3 is employed to detect the vehicles, and related information about four different types of vehicles is obtained. Online real-time tracking algorithms are used for multi-target tracking of vehicles. Anomalous event vehicle trajectories are obtained for different scenarios. Based on semi-supervised learning, the maximum likelihood method is employed to improve the classification of vehicle trajectories. CPLE is introduced and parameter setting and labeling are centered on comparison and pessimistic rules in order to classify and determine the incident trajectories, consequently, the automatic incident detection algorithm based on vehicle trajectories is proposed. The intelligent inspection system of Gansu Province G312 highway is used as a test object. A total of 1 300 videos were collected. Among them, 530 and 630 tracks are employed as test set and validation set, respectively. By testing difference scenarios of incidents and prewarning, the algorithm accuracy of trajectory classification based on CPLE reaches 89.7%, which is 23.6% higher than that of self-learning and 41.3% higher than that of supervised learning, respectively. Although the accuracy of scattered goods and speeding is averaged about 77.0%, the accuracy of sudden stopping, congestion, and accidents reaches 98.2%, and as for the incident detection influencing traffic seriously, the average accuracy reaches 94%. The proposed method enriches automatic incident detection algorithms and can be considered an alternative for freeway incident detection.

     

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  • [1]
    李浩澜. 基于视频图形的高速公路异常事件实时检测系统[D]. 重庆: 重庆理工大学, 2020.

    LI H L. A real-time detection system for abnormal events of highway based on image[D]. Chongqing: Chongqing University of Technology, 2020. (in Chinese)
    [2]
    常丹丹. 基于深度学习的公路货物运输量预测方法研究[D]. 西安: 长安大学, 2018.

    CHANG D D. Research on volume of road cargo transportation forecasting method based on deep learning[D]. Xi'an: Chang'an University, 2018. (in Chinese)
    [3]
    EVANS J, WATERSON B, HAMILTON A. Evolution and future of urban road incident detection algorithms[J]. Journal of Transportation Engineering Part A: Systems, 2020, 146(6): 03120001. doi: 10.1061/JTEPBS.0000362
    [4]
    MASTERS P H, LAM J, WONG K. Incident detection algorithms for COMPASS-An advanced traffic management system[C]. Vehicle Navigation and Information Systems Conference, New York, U. S. A. : IEEE, 1991.
    [5]
    LEVEN M, Krause G M. Incident detection: A Bayesian approach[J]. Transportation Research Record, 1978(682): 52-58.
    [6]
    LYALL B B. Performance evaluation of the McMaster incident detection algorithm[D]. Ontario: McMaster University, 1991.
    [7]
    AHMED S A, COOK A R. Application of time-series analysis techniques to freeway incident detection[J]. Transportation Research Record, 1982(841), 19-21.
    [8]
    CREMER M, SCHUTT H. A comprehensive concept for simultaneous state observation, parameter estimation and incident detection[C]. The 11th International Symposium on Transportation and Traffic Theory, Amsterdam, Netherlands: Elsevier, 1990.
    [9]
    TENG H, QI Y. Application of wavelet technique to freeway incident detection[J]. Transportation Research Part C: Emerging Technologies, 2003, 11(3/4): 289-308.
    [10]
    朱金凤. 基于YOLO-v3的高速公路交通事件检测系统研究[D]. 徐州: 中国矿业大学, 2020.

    ZHU J F. Research on expressway traffic incident detection system based on YOLO-v3[D]. Xuzhou: China University of Mining and Technology, 2020. (in Chinese)
    [11]
    MICHALOPOULOS P G. Vehicle detection video through image processing: the Autoscope system[J]. Transactions on Vehicular Technology, 1991, 40(1): 21-29. doi: 10.1109/25.69968
    [12]
    CHARKRABORTY P. Freeway traffic incident detection using large scale traffic data and cameras[D]. Iowa: Iowa State University, 2019.
    [13]
    冯汝怡, 李志斌, 吴启范, 范昌彦. 航拍视频车辆检测目标关联与时空轨迹匹配[J]. 交通信息与安全, 2021, 9(2): 61-69. doi: 10.3963/j.jssn.1674-4861.2021.02.008

    FENG R Y, LI Z B, WU Q F, et al. Association of vehicle object detection and the time-space trajectory matching from aerial videos[J]. Journal of Transport Information and Safety, 2021, 9(2): 61-69. (in Chinese) doi: 10.3963/j.jssn.1674-4861.2021.02.008
    [14]
    LIN Y, LI L, JING H, et al. Automated traffic incident detection with a smaller dataset based on generative adversarial networks[J]. Accident Analysis & Prevention, 2020(4): 105628.
    [15]
    乔鹏. 基于深度学习和边缘任务卸载的交通流量检测研究[D]. 西安: 西安电子科技大, 2019.

    QIAO P. Research on traffic flow detection based on deep learning and edge task offloading[D]. Xi'an: Xi Dian University, 2019. (in Chinese)
    [16]
    高新闻, 沈卓, 许国耀, 等. 基于多目标跟踪的交通异常事件检测[J]. 计算机应用研究, 2021, 38(6): 1879-1883 https://www.cnki.com.cn/Article/CJFDTOTAL-JSYJ202106054.htm

    GAO X W, SHEN Z, XU G Y, et al. Traffic anomaly detection based on multi-target tracking[J]. Application Research of Computers, 2021, 38(6): 1879-1883. (in Chinese) https://www.cnki.com.cn/Article/CJFDTOTAL-JSYJ202106054.htm
    [17]
    孙士杰. 复杂交通场景下多目标检测跟踪问题研究[D]. 西安: 长安大学, 2019.

    SUN S J. Research on multiple object detection and tracking problems in complex traffic scenes[D]. Xi'an: Chang'an University, 2019. (in Chinese)
    [18]
    高铭. 基于深度学习的复杂交通环境下目标跟踪与轨迹预测研究[D]. 长春: 吉林大学, 2020.

    GAO M. Research on object tracing and trajectory prediction in complex environment based on deep learning[D]. Changchun: Jilin University, 2020. (in Chinese)
    [19]
    杨明辉. 基于循环神经网络的运动目标轨迹预测[D]. 武汉: 武汉大学, 2019.

    YANG M H. Trajectory prediction of moving target based on recurrent neural network[D]. Wuhan: Wuhan University, 2019. (in Chinese)
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