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A Method of Extracting Road Network Structure from Trajectory Data Based on U-Net Network

机译:基于U-Net网络的轨迹数据提取道路网络结构的方法

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Accurate road network plays a very important role in urban traffic application. The traditional methods to generate road network are expensive and the update of the road network is not timely enough. With the widespread use of Global Positioning System (GPS) embedded equipment, lots of moving objects can generate a large amount of trajectory data, from which it could become possible to extract road network information. The existing road network extraction methods require different prior experiences and parameters for road networks in different regions, and the effect is not satisfactory. In this article, we propose a method to generate city road network structure based on an improved U-Net network, which can extract road network from trajectory data. More specifically, we first learn the existing road network structure and extract the feature from trajectory data, then use the improved U-Net network to infer the road centerline, finally, we postprocess its topology and generate the final road network. Our method has been validated on different trajectory datasets and achieved good visualization results.
机译:准确的道路网络在城市交通申请中起着非常重要的作用。生成道路网络的传统方法昂贵,道路网络的更新不够及时。随着全球定位系统(GPS)嵌入式设备的广泛使用,大量的移动物体可以产生大量的轨迹数据,从而可以提取道路网络信息。现有的道路网络提取方法需要不同地区的道路网络的不同事先经验和参数,效果并不令人满意。在本文中,我们提出了一种基于改进的U-Net网络生成城市道路网络结构的方法,该网络可以从轨迹数据中提取道路网络。更具体地说,我们首先学习现有的道路网络结构并从轨迹数据中提取特征,然后使用改进的U-Net网络推断道路中心线,最后,我们后处理其拓扑并生成最终的道路网络。我们的方法已在不同的轨迹数据集上验证并实现了良好的可视化结果。

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