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Relaxation-Based Point Feature Matching for Vector Map Conflation

机译:矢量地图融合中基于松弛的点特征匹配

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摘要

With the rapid advance of geospatial technologies, the availability of geospatial data from a wide variety of sources has increased dramatically. It is beneficial to integrate / conflate these multi-source geospatial datasets, since the integration of multi-source geospatial data can provide insights and capabilities not possible with individual datasets. However, multi-source datasets over the same geographical area are often disparate. Accurately integrating geospatial data from different sources is a challenging task. Among the subtasks of integration/conflation, the most crucial one is feature matching, which identifies the features from different datasets as presentations of the same real-world geographic entity. In this article we present a new relaxation-based point feature matching approach to match the road intersections from two GIS vector road datasets. The relaxation labeling algorithm utilizes iterated local context updates to achieve a globally consistent result. The contextual constraints (relative distances between points) are incorporated into the compatibility function employed in each iteration's updates. The point-to-point matching confidence matrix is initialized using the road connectivity information at each point. Both the traditional proximity-based approach and our relaxation-based point matching approach are implemented and experiments are conducted over 18 test sites in rural and suburban areas of Columbia, MO. The test results show that our relaxation labeling approach has much better performance than the proximity matching approach in both simple and complex situations.
机译:随着地理空间技术的飞速发展,来自各种来源的地理空间数据的可用性急剧增加。集成/合并这些多源地理空间数据集是有益的,因为多源地理空间数据的集成可以提供单个数据集无法提供的见解和功能。但是,同一地理区域上的多源数据集通常是不同的。准确地集成来自不同来源的地理空间数据是一项艰巨的任务。在集成/合并的子任务中,最关键的一项是特征匹配,该任务将来自不同数据集的特征标识为同一真实世界地理实体的表示形式。在本文中,我们提出了一种新的基于松弛的点特征匹配方法,以匹配来自两个GIS矢量道路数据集的道路交叉点。松弛标记算法利用迭代的局部上下文更新来获得全局一致的结果。上下文约束(点之间的相对距离)被合并到每次迭代更新中使用的兼容性函数中。使用每个点的道路连通性信息初始化点对点匹配置信矩阵。传统的基于邻近度的方法和基于松弛的点匹配方法均得以实施,并且在密苏里州哥伦比亚的农村和郊区的18个测试站点进行了实验。测试结果表明,在简单和复杂情况下,我们的松弛标记方法都比邻近匹配方法具有更好的性能。

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