基于摄像头传感网络的大规模车辆轨迹重建

Panrong Tong, Mingqian Li, Mo Li, Jianqiang Huang, Xiansheng Hua
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引用次数: 21

摘要

车辆轨迹为了解城市交通提供了必要的信息,有利于广泛的城市应用。最先进的车辆传感解决方案可能无法建立所有车辆轨迹的准确和完整的知识。为了填补这一空白,本文提出了VeTrac,这是一种综合系统,它使用广泛部署的交通摄像头作为传感网络来跟踪车辆运动并大规模重建其轨迹。VeTrac融合了机动性相关性和基于视觉的分析,以减少识别车辆的不确定性。采用图卷积过程来保持不同摄像机观测值之间的身份一致性,并在与城市路网对齐时调用自训练过程来自信地重建车辆轨迹。对来自1000多个交通摄像头的700多万张车辆快照进行的大量实验表明,VeTrac在简单高速公路场景中达到98%的准确率,在复杂的城市环境中达到89%的准确率。在高速公路和复杂城市环境中,其准确度分别比其他解决方案高出32%和59%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Large-scale vehicle trajectory reconstruction with camera sensing network
Vehicle trajectories provide essential information to understand the urban mobility and benefit a wide range of urban applications. State-of-the-art solutions for vehicle sensing may not build accurate and complete knowledge of all vehicle trajectories. In order to fill the gap, this paper proposes VeTrac, a comprehensive system that employs widely deployed traffic cameras as a sensing network to trace vehicle movements and reconstruct their trajectories in a large scale. VeTrac fuses mobility correlation and vision-based analysis to reduce uncertainties in identifying vehicles. A graph convolution process is employed to maintain the identity consistency across different camera observations, and a self-training process is invoked when aligning with the urban road network to reconstruct vehicle trajectories with confidence. Extensive experiments with real-world data input of over 7 million vehicle snapshots from over one thousand traffic cameras demonstrate that VeTrac achieves 98% accuracy for simple expressway scenario and 89% accuracy for complex urban environment. The achieved accuracy outperforms alternative solutions by 32% for expressway scenario and by 59% for complex urban environment.
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