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航拍视频车辆检测目标关联与时空轨迹匹配

冯汝怡 李志斌 吴启范 范昌彦

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, 39(2): 61-69, 77. doi: 10.3963/j.jssn.1674-4861.2021.02.008
引用本文: 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, 39(2): 61-69, 77. doi: 10.3963/j.jssn.1674-4861.2021.02.008
FENG Ruyi, LI Zhibin, WU Qifan, FAN Changyan. Association of Vehicle Object Detection and the Time-space Trajectory Matching from Aerial Videos[J]. Journal of Transport Information and Safety, 2021, 39(2): 61-69, 77. doi: 10.3963/j.jssn.1674-4861.2021.02.008
Citation: FENG Ruyi, LI Zhibin, WU Qifan, FAN Changyan. Association of Vehicle Object Detection and the Time-space Trajectory Matching from Aerial Videos[J]. Journal of Transport Information and Safety, 2021, 39(2): 61-69, 77. doi: 10.3963/j.jssn.1674-4861.2021.02.008

航拍视频车辆检测目标关联与时空轨迹匹配

doi: 10.3963/j.jssn.1674-4861.2021.02.008
基金项目: 

国家自然科学基金项目 71871057

详细信息
    作者简介:

    冯汝怡(1999—),博士研究生.研究方向:智能交通.E-mail: fengruyi@seu.edu.cn

    通讯作者:

    李志斌(1983—),博士,教授.研究方向:智能交通.E-mail: lizhibin@seu.edu.cn

  • 中图分类号: U491.4

Association of Vehicle Object Detection and the Time-space Trajectory Matching from Aerial Videos

  • 摘要: 高解析度轨迹数据蕴含丰富车辆行驶与交通流时空信息。为从航拍视频中提取车辆轨迹,构建了车辆检测目标跨帧关联与轨迹匹配融合方法。采用卷积神经网络YOLOv5构建视频全域车辆目标检测,提出车辆动力学与轨迹置信度约束下跨帧目标关联算法,建立了基于最大相关性的断续轨迹匹配与融合构建算法,实现轨迹车辆唯一编号。将轨迹从图像坐标转换为车道基准下Frenet坐标,构建集合经验模态分解(EEMD)模型进行轨迹数据噪声消除。采用南京市快速路无人机拍摄的2组开源航拍视频,涵盖拥堵与自由流交通状态,对轨迹提取算法进行效果测试。结果表明,在自由流和拥挤条件下轨迹准确率分别为98.86%和98.83%,轨迹召回率为93.00%和86.69%,构建算法的轨迹提取速度为0.07 s/辆/m。该方法处理得到的详细车辆时空轨迹信息能为交通流、交通安全、交通管控研究提供广泛的数据支撑,数据公开于http://seutraffic.com/

     

  • 图  1  典型车辆时空轨迹图

    Figure  1.  Typical vehicle time-space trajectory map

    图  2  轨迹构建算法框架图

    Figure  2.  Framework of the proposed algorithm

    图  3  轨迹关联示意图

    Figure  3.  Illustration for trajectory correlation

    图  4  坐标转换示意图

    Figure  4.  Illustration of coordinate transform

    图  5  假阳性检测结果的可能原因

    Figure  5.  Possible cause for false positive detection

    图  6  车辆轨迹降噪结果

    Figure  6.  Results for trajectory denoising

    图  7  关键交通参数与NGSIM数据对比

    Figure  7.  Comparison of key traffic parameters with NGSIM

    图  8  视频1车辆轨迹时空图

    Figure  8.  Time-space vehicle trajectory for video 1

    图  9  视频2车辆轨迹时空图

    Figure  9.  Time-space vehicle trajectory for video 2

    表  1  轨迹构建结果

    Table  1.   Results of trajectory construction

    变量 测试视频1 测试视频2
    轨迹数量真值(GT) 500 541
    真阳数(TP) 465 469
    假阴数(TN 35 72
    假阳数(FP) 4 43
    召回率(Recall)/% 93.00 86.69
    准确率(Precision)/% 99.15 91.6
    下载: 导出CSV
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出版历程
  • 收稿日期:  2020-07-06

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