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Perception-Based Road Traffic Congestion Classification Using Neural Networks and Decision Tree

机译:神经网络和决策树的基于感知的道路交通拥堵分类

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In this study, we investigated an alternative technique to automatically classify road traffic congestion with travelers' opinions. The method utilized an intelligent traffic camera system orchestrated with an interactive web survey system to collect the traffic conditions and travelers' opinions. A large numbers of human perceptions were used to train the artificial neural network (ANN) model and the decision tree (J48) model that classify velocity and traffic flow into three congestion levels: light, heavy, and jam. The both model was then compared to the Occupancy Ratio (OR) technique, currently in service in the Bangkok Metropolitan Administration (BMA). The accuracy of ANN was more than accuracy of the J48. The evaluation indicated that our ANN model could determine the traffic congestion levels 12.15% more accurately than the existing system. The methodology, though conceived for use in Bangkok, is a general Intelligent Transportation System (ITS) practice that can be applied to any part of the world.
机译:在这项研究中,我们研究了一种可替代的技术,可以根据旅行者的意见自动对道路交通拥堵进行分类。该方法利用与交互式网络调查系统配合使用的智能交通摄像头系统来收集交通状况和旅行者的意见。大量的人类感知被用于训练人工神经网络(ANN)模型和决策树(J48)模型,这些模型将速度和交通流分为三个拥堵级别:轻,重和阻塞。然后将这两种模型与曼谷市政府(BMA)目前正在使用的占用率(OR)技术进行了比较。 ANN的准确性超过J48的准确性。评估表明,我们的ANN模型可以比现有系统更准确地确定交通拥堵程度12.15%。尽管该方法被设想在曼谷使用,但它是一种通用的智能运输系统(ITS)惯例,可以应用于世界的任何地方。

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