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Automated Openstreetmap Data Alignment for Road Network Mapping

机译:自动OpenStreetMAP路线映射数据对齐

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OpenStreetMap(OSM) provides extensive coverage of road network that can be a source to prepare training samples for automated road mapping using very high resolution(VHR) satellite images and machine learning. However, several studies have shown that the pervasive spatial misalignment between OSM vector data and VHR images yields poor quality training samples and thereby compromises the performance of models. In this study, we undertake to address this shortcoming and develop an automated line segment shifting workflow to yield OSM vector data that aligns with VHR road features to generate high quality training samples. The approach leverages the standard deviation differences of road pixels and background information to guide the transformations. By taking into account trees, shadows, cars and water body on or beside the road when STD was calculated, our method is robust to various road obstacles. Experimental validations are conducted to confirm the correctness of aligned OSM data showing up to 338% improvement compared with original OSM. Finally, based on visual inspection, the road map generated by aligned OSM also presents obvious quality improvement in comparison with map created by original OSM.
机译:OpenStreetMap(OSM)提供了广泛的道路网络覆盖范围,可以成为准备使用非常高分辨率(VHR)卫星图像和机器学习的自动化道路映射培训样本的源头。然而,几项研究表明,OSM矢量数据和VHR图像之间的普遍存在空间未对准产生质量差的训练样本,从而损害模型的性能。在这项研究中,我们承诺解决这种缺点并开发自动线段移位工作流程,从而产生与VHR Road功能对齐的OSM矢量数据,以产生高质量的培训样本。该方法利用道路像素和背景信息的标准偏差差异来引导变换。在计算STD时,通过在路上或旁边的树木,阴影,汽车和水体上,我们的方法对各种道路障碍物很健康。进行实验验证以确认对齐OSM数据的正确性显示与原始OSM相比高达338%的改进。最后,基于目视检查,通过原始OSM创建的地图相比,由对齐OSM产生的路线图也提出了明显的质量改进。

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