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A Deep Learning-Based Framework for Intersectional Traffic Simulation and Editing

机译:基于深度学习的交叉流量仿真和编辑的框架

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摘要

Most of existing traffic simulation methods have been focused on simulating vehicles on freeways or city-scale urban networks. However, relatively little research has been done to simulate intersectional traffic to date despite its broad potential applications. In this paper, we propose a novel deep learning-based framework to simulate and edit intersectional traffic. Specifically, based on an in-house collected intersectional traffic dataset, we employ the combination of convolution network (CNN) and recurrent network (RNN) to learn the patterns of vehicle trajectories in intersectional traffic. Besides simulating novel intersectional traffic, our method can be used to edit existing intersectional traffic. Through many experiments as well as comparative user studies, we demonstrate that the results by our method are visually indistinguishable from ground truth, and our method can outperform existing methods.
机译:大多数现有的流量仿真方法都集中在高速公路或城市规模城市网络上的模拟车辆。然而,尽管其广泛的潜在应用程序,已经进行了相对较少的研究来模拟交叉流量。在本文中,我们提出了一种新的深度学习框架来模拟和编辑交叉流量。具体地,基于内部收集的交叉路口数据集,我们采用卷积网络(CNN)和经常性网络(RNN)的组合来学习交叉路口中的车辆轨迹的模式。除了模拟新颖的交叉流量外,我们的方法可用于编辑现有的交叉路口。通过许多实验以及比较用户研究,我们证明了我们方法的结果与地面真理视觉无法区分,我们的方法可以优于现有方法。

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