首页> 外文会议>Sensors and Smart Structures Technologies for Civil, Mechanical, and Aerospace Systems 2019 >Reidentification of Trucks in Highway Corridors using Convolutional Neural Networks to Link Truck Weights to Bridge Responses
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Reidentification of Trucks in Highway Corridors using Convolutional Neural Networks to Link Truck Weights to Bridge Responses

机译:使用卷积神经网络将卡车重量与桥梁响应联系起来的公路走廊卡车识别

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The widespread availability of cost-effective sensing technologies is translating into an increasing number of highwaybridges being instrumented with structural health monitoring (SHM) systems. Current bridge SHM systems are onlycapable of measuring bridge responses and lack the ability to directly measure the traffic loads inducing bridge responses.The output-only nature of the monitoring data available often leaves damage detection algorithms ill-posed and incapableof robust detection. Attempting to overcome this challenge, this study leverages state-of-the-art computer vision techniquesto establish a means of reliably acquiring load data associated with the trucks inducing bridge responses. Using a cyberenabledhighway corridor consisting of cameras, bridge monitoring systems, and weigh-in-motion (WIM) stations,computer vision methods are used to track trucks as they excite bridges and pass WIM stations where their weightparameters are acquired. Convolutional neural network (CNN) methods are used to develop automated vehicle detectorsembedded in GPU-enabled cameras along highway corridors to identify and track trucks from real-time traffic video.Detected vehicles are used to trigger the bridge monitoring systems to ensure structural responses are captured when truckspass. In the study, multiple one-stage object detection CNN architectures have been trained using a customized dataset toidentify various types of vehicles captured at multiple locations along a highway corridor. YOLOv3 is selected for itscompetitive speed and precision in identifying trucks. A customized CNN-based embedding network is trained followinga triplet architecture to convert each truck image into a feature vector and the Euclidean distance of two feature vectors isused as a measure of truck similarity for reidentification purposes. The performance of the CNN-based feature extract isproved to be more robust than a hand-crafted method. Reidentification of the same vehicle allows truck weights measuredat the WIM station to be associated with measured bridge responses collected by bridge monitoring systems.
机译:具有成本效益的传感技术的广泛普及正在转化为越来越多的高速公路/桥梁正在使用结构健康监测(SHM)系统进行检测。当前的桥梁SHM系统仅\ r \ n无法测量桥梁响应,并且缺乏直接测量引起桥梁响应的交通负荷的能力。\ r \ n可用的监视数据的仅输出特性经常使损坏检测算法不适当地使用,无法进行可靠的检测。为了克服这一挑战,本研究利用了最新的计算机视觉技术来建立一种可靠地获取与引起桥梁响应的卡车相关的载荷数据的方法。通过使用具有摄像头,桥梁监控系统和动态称重(WIM)站组成的具有网络功能的\ n \ n高速公路走廊,\ r \ n计算机视觉方法可用于跟踪卡车在刺激桥梁并通过WIM站时卡车的重量\ r \ n参数已获取。卷积神经网络(CNN)方法用于开发自动车辆检测器\ r \内置在沿高速公路走廊的具有GPU功能的摄像头中,以从实时交通视频中识别和跟踪卡车。\ r \ n检测到的车辆用于触发桥梁监控系统以确保卡车\ r \ n通过时捕获结构响应。在这项研究中,已经使用定制数据集训练了多个单阶段对象检测CNN架构,以识别沿高速公路走廊的多个位置捕获的各种类型的车辆。之所以选择YOLOv3,是因为它在识别卡车方面具有竞争力的速度和精度。按照三元组体系结构训练定制的基于CNN的嵌入网络,以将每个卡车图像转换为特征向量,并且为了重新识别目的,将两个特征向量的欧几里德距离作为卡车相似性的度量。事实证明,基于CNN的特征提取的性能比手工制作的方法更强大。重新识别同一辆车可使WIM站测量的卡车重量与桥梁监控系统收集的桥梁响应进行测量。

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