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基于车联网BSM数据与路侧视频融合的港口集装箱卡车碰撞危险辨识方法

郭晓晗 彭理群 马定辉

郭晓晗, 彭理群, 马定辉. 基于车联网BSM数据与路侧视频融合的港口集装箱卡车碰撞危险辨识方法[J]. 交通信息与安全, 2023, 41(1): 1-12. doi: 10.3963/j.jssn.1674-4861.2023.01.001
引用本文: 郭晓晗, 彭理群, 马定辉. 基于车联网BSM数据与路侧视频融合的港口集装箱卡车碰撞危险辨识方法[J]. 交通信息与安全, 2023, 41(1): 1-12. doi: 10.3963/j.jssn.1674-4861.2023.01.001
GUO Xiaohan, PENG Liqun, MA Dinghui. A Method of Identifying Collision Risk of Container Trucks in Port Terminal Areas under an Integrated Connected Vehicle BSM and Roadside Video Surveillance Data[J]. Journal of Transport Information and Safety, 2023, 41(1): 1-12. doi: 10.3963/j.jssn.1674-4861.2023.01.001
Citation: GUO Xiaohan, PENG Liqun, MA Dinghui. A Method of Identifying Collision Risk of Container Trucks in Port Terminal Areas under an Integrated Connected Vehicle BSM and Roadside Video Surveillance Data[J]. Journal of Transport Information and Safety, 2023, 41(1): 1-12. doi: 10.3963/j.jssn.1674-4861.2023.01.001

基于车联网BSM数据与路侧视频融合的港口集装箱卡车碰撞危险辨识方法

doi: 10.3963/j.jssn.1674-4861.2023.01.001
基金项目: 

国家重点研发计划项目 2020YFE0201200

国家自然科学基金项目 52062015

详细信息
    作者简介:

    郭晓晗(1996—),硕士研究生. 研究方向:智能交通系统. E-mail:zhuang99799717@163.com

    通讯作者:

    彭理群(1984—),博士,副教授. 研究方向:交通信息化与控制. E-mail:lq.peng@ecjtu.edu.cn

  • 中图分类号: U491

A Method of Identifying Collision Risk of Container Trucks in Port Terminal Areas under an Integrated Connected Vehicle BSM and Roadside Video Surveillance Data

  • 摘要: 大型港口集装箱码头运输车辆调度频繁,堆场过道和交换区等区域视距狭窄,容易导致港口集装箱卡车与设施、作业人员和车辆发生擦碰事故。为提高智能集装箱卡车在港口密集区域的轨迹跟踪精度和行车安全感知能力,提出了一种车联网条件下融合车载终端基本安全消息(Basic Safety Messages,BSM)数据和路侧视频数据的集装箱卡车碰撞风险辨识方法。采用YOLOv5s算法提取视频监控范围内的目标车辆和作业人员,根据目标集卡大尺寸特点设计非极大值抑制锚框来提高目标识别准确度。运用透视变换原理将目标像素坐标转换成地理坐标,并应用Deep-SORT算法匹配每帧图像的车辆轨迹信息。应用交互式多模型方法(interactive multi-model,IMM)融合视频轨迹信息和车载单元(on-board units,OBU)定位数据,减小了目标机动过程中的观测误差。基于集卡融合轨迹结果,提出了1种新型的轨迹冲突风险评估模型,能够根据目标集卡与周围目标轨迹的相对运动状态实时感知车辆碰撞危险,该碰撞危险检测结果在实际场景中可通过路侧设备对车载终端和作业人员终端实时播发预警信息。针对集卡跟踪误差的实验结果表明:IMM自适应跟踪轨迹的平均均方根误差为0.29 m,比集卡自主跟踪轨迹误差提升81.05%;融合路侧监控视频与车载终端定位数据能够克服车辆自主定位系统在密集堆场环境下的误差增大问题。集卡碰撞危险辨识的结果表明:车辆碰撞危险识别结果(预设ETTC阈值为2 s)的召回率、精确度和准确度相对集卡自主感知分别提升了7.39%,4.27%,2.50%,更准确地辨识出了视线遮挡情况下的轨迹冲突风险。

     

  • 图  1  港口运输车辆行驶安全监测系统

    Figure  1.  Container truck driving safety monitoring system

    图  2  透视变换

    Figure  2.  Perspective transformation

    图  3  集卡数据融合

    Figure  3.  Container truck data fusion

    图  4  集卡碰撞危险场景

    Figure  4.  Container truck crash risk scenario

    图  5  集卡碰撞危险区域

    Figure  5.  Container truck crash risk area

    图  6  集卡跟踪结果

    Figure  6.  Tracking result of container trucks

    图  7  实验设计

    Figure  7.  Experimental design

    图  8  集卡跟踪轨迹展示

    Figure  8.  Tracking trajectory demonstration of container truck

    图  9  目标集卡位置误差

    Figure  9.  Location error of target container truck

    图  10  模型概率曲线

    Figure  10.  The model probability curve

    图  11  集卡碰撞危险辨识

    Figure  11.  Crash risk identification of container trucks

    图  12  集卡碰撞危险辨识ROC曲线

    Figure  12.  The ROC curve of truck crash risk identification

    表  1  不同YOLO版本性能对比

    Table  1.   Performance comparison of different YOLO versions

    模型 图像尺寸px×px/ 数据集 平均精确度/% 帧/s 时间/(s/帧)
    YOLOv1 448×448 VOC2012 53.4 45 0.02
    YOLOv2 544×544 VOC2012 49.0 40 0.03
    YOLOv3 608×608 VOC2012 57.9 20 0.05
    YOLOv4 608×608 VOC2012 69.7 62 0.02
    YOLOv5s 640×640 VOC2012 75.4 140 0.01
    下载: 导出CSV

    表  2  集卡位置均方根误差均值

    Table  2.   Average RMSE of container truck positions  单位: m

    跟踪方式 X坐标位置RMSE Y坐标位置RMSE 平均RMSE
    集卡自主跟踪 1.59 1.47 1.53
    IMM自适应跟踪 0.31 0.26 0.29
    下载: 导出CSV

    表  3  碰撞危险辨识结果

    Table  3.   The results of crash risk identification  单位: %

    感知方式 召回率 精确度 准确度
    集卡自主感知 73.25 66.34 88.07
    IMM自适应感知 78.66 69.17 90.27
    下载: 导出CSV
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  • 收稿日期:  2022-01-24
  • 网络出版日期:  2023-05-13

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