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A deep convolutional neural network based approach for vehicle classification using large-scale GPS trajectory data

机译:基于深度卷积神经网络的基于大规模GPS轨迹数据的车辆分类方法

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摘要

Transportation agencies are starting to leverage increasingly-available GPS trajectory data to support their analyses and decision making. While this type of mobility data adds significant value to various analyses, one challenge that persists is lack of information about the types of vehicles that performed the recorded trips, which clearly limits the value of trajectory data in transportation system analysis. To overcome this limitation of trajectory data, a deep Convolutional Neural Network for Vehicle Classification (CNN-VC) is proposed to identify the vehicle's class from its trajectory. This paper proposes a novel representation of GPS trajectories, which is not only compatible with deep learning models, but also captures both vehicle-motion characteristics and roadway features. To this end, an open source navigation system is also exploited to obtain more accurate information on travel time and distance between GPS coordinates. Before delving into training the CNN-VC model, an efficient programmatic strategy is also designed to label large-scale GPS trajectories by means of vehicle information obtained through Virtual Weigh Station records. Our experimental results reveal that the proposed CNNVC model consistently outperforms both classical machine learning algorithms and other deep learning baseline methods. From a practical perspective, the CNN-VC model allows us to label raw GPS trajectories with vehicle classes, thereby enriching the data and enabling more comprehensive transportation studies such as derivation of vehicle class-specific origin-destination tables that can be used for planning.
机译:运输代理商开始利用日益增长的GPS轨迹数据,以支持他们的分析和决策。虽然这种类型的移动数据增加了各种分析的重要价值,但是一个持续存在的挑战是缺乏关于执行记录的行程类型的信息的挑战,这明显限制了运输系统分析中的轨迹数据的值。为了克服轨迹数据的这种限制,提出了一种用于车辆分类的深度卷积神经网络(CNN-VC),以从其轨迹识别车辆的类。本文提出了GPS轨迹的新颖表示,这不仅与深度学习模型兼容,而且还捕获了车辆运动特性和道路特征。为此,还利用开源导航系统以获得关于GPS坐标之间的旅行时间和距离的更准确的信息。在培训CNN-VC型号之前,旨在通过通过虚拟称量站记录获得的车辆信息来设计大规模GPS轨迹的高效编程策略。我们的实验结果表明,所提出的CNNVC模型始终如一地优于经典机器学习算法和其他深度学习基准方法。从实际角度来看,CNN-VC型号允许我们用车辆类标记原始GPS轨迹,从而丰富数据并实现更全面的运输研究,例如可用于规划的车辆类特定的原始目的表的推导。

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