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An accurate and robust monitoring method of full-bridge traffic load distribution based on YOLO-v3 machine vision

机译:基于YOLO-V3机器视觉的全桥交通负荷分布精确稳健的监控方法

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The accurate and stable identification of the traffic load distribution on the bridge deck is of great significance to bridge health monitoring and safety early warning. To accomplish this task, we have combined the weigh-in-motion system (WIMs) with machine vision and developed a traffic load monitoring (TLM) technology for the whole bridge deck. For bridge health monitoring, the TLM should be available for online structural analysis, have high accuracy, and be able to adapt to changes in lighting conditions. However, existing TLM methods are difficult to meet the requirements of real-time, accuracy, and lighting robustness simultaneously. In this regard, this paper proposes an improved full-bridge TLM method based on YOLO-v3 convolutional neural network. The core of this method includes training a dual-target detection model and correcting vehicle locations. The detection model can identify profiles of the entire vehicle and its tail and can mark them with compact rectangular boxes. Based on the corner points of these rectangular boxes, an optical geometry model is proposed to measure vehicle dimensions and correct vehicle centroids, thereby the vehicle locations can be estimated more accurately. By applying the time synchronization of cameras and the WIMs, each measured load is paired with the vehicle "pixel cluster" detected in the video; further, the traffic load distribution on the whole bridge deck is identified accurately in real-time. Verified by the field data of a ramp bridge, the proposed method is proved more accurately on the identification of vehicle locations, more robust lighting adaptability, and faster calculation speed, which can meet the requirements of field monitoring of traffic load distribution.
机译:桥式甲板上交通负荷分布的准确稳定识别对于桥梁健康监测和安全预警具有重要意义。为完成此任务,我们将动作体系(WIMS)与机器视觉相结合,并为整个桥甲板开发了交通负荷监测(TLM)技术。对于桥梁健康监测,TLM应提供在线结构分析,具有高精度,能够适应照明条件的变化。然而,现有的TLM方法难以同时满足实时,准确性和照明鲁棒性的要求。在这方面,本文提出了一种基于Yolo-V3卷积神经网络的改进的全桥TLM方法。该方法的核心包括训练双目标检测模型和校正车辆位置。检测模型可以识别整个车辆及其尾部的轮廓,可以用紧凑的矩形盒标记它们。基于这些矩形盒的角点,提出了一种光学几何模型来测量车辆尺寸和校正车辆质心,从而可以更准确地估计车辆位置。通过应用摄像机和WIM的时间同步,每个测量的负载与视频中检测到的车辆“像素簇”配对;此外,整个桥盘上的交通负载分布在实时准确地识别。通过斜坡桥的现场数据验证,所提出的方法在识别车辆位置,更稳健的照明适应性和更快的计算速度方面可以更准确地证明,这可以满足交通负荷分布的现场监测的要求。

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