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Edge-Based Traffic Flow Data Collection Method Using Onboard Monocular Camera

机译:基于边缘的流量流数据收集方法使用车载单眼相机

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摘要

Traffic data collection is the fundamental step in most applications of intelligent transportation systems (ITS). Recently, traffic data collection methods have become more robust and diversified, yet still have some limitations in their flexibility and coverage. Onboard monocular cameras have considerable potential to be turned into cost-effective moving traffic sensors combining the low cost and ego-vehicles' high mobility. Existing studies have explored the feasibility of onboard cameras for scene understanding, etc. However, few studies have been conducted to utilize onboard monocular cameras for traffic flow data collection. To this end, this paper puts forward a method using the onboard monocular camera to collect traffic data. The basic structure is composed of a you-only-look-once (YOLO) model and spatial transformer network (STN) to detect vehicles in real-time. Then the traffic flow parameters are computed via fundamental optic and traffic flow theories. The experiment results show its reliability and similar sensing accuracy with inductive loop detectors on the road segment detection. In addition, the STN-YOLO model has a higher vehicle detection accuracy than the original YOLO model under complicated conditions. (c) 2020 American Society of Civil Engineers.
机译:交通数据收集是大多数智能运输系统(其)应用中的基本步骤。最近,交通数据收集方法变得更加强大和多样化,但在灵活性和覆盖范围内仍然存在一些局限性。在板载单像素相机具有相当大的电位,可以转化为具有低成本和自我车辆的高移动性的成本效益的移动交通传感器。现有的研究已经探索了场景理解的船上相机的可行性等。然而,已经进行了很少的研究以利用车载单手套摄像机进行交通流数据收集。为此,本文提出了一种使用船上单眼相机收集流量数据的方法。基本结构由You-Look-one-Orn-Orn-Orn-ones(Yolo)模型和空间变压器网络(STN)组成,可以实时检测车辆。然后通过基础光学和流量流理计算流量流参数。实验结果表明其可靠性和类似的感应精度,在路段检测上具有电感回路检测器。此外,STN-YOLO模型具有比复杂条件下的原始YOLO模型更高的车辆检测精度。 (c)2020年美国土木工程师协会。

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  • 来源
    《Journal of Transportation Engineering》 |2020年第9期|04020096.1-04020096.10|共10页
  • 作者单位

    Univ Washington Dept Civil & Environm Engn Smart Transportat Applicat & Res Lab 101 More Hall Seattle WA 98195 USA;

    Univ Washington Dept Civil & Environm Engn Smart Transportat Applicat & Res Lab 101 More Hall Seattle WA 98195 USA;

    Univ Washington USDOT Univ Transportat Ctr Fed Reg 10 Pacific Northwest Transportat Consortium Seattle WA 98195 USA;

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