Song Wenbo, Keller James M, Haithcoat Timothy L, Davis Curt H
Department of Geography, University of Missouri-Columbia, MO 65211, USA.
IEEE Trans Image Process. 2009 Feb;18(2):388-400. doi: 10.1109/TIP.2008.2008044. Epub 2008 Dec 12.
As the availability of various geospatial data increases, there is an urgent need to integrate multiple datasets to improve spatial analysis. However, since these datasets often originate from different sources and vary in spatial accuracy, they often do not match well to each other. In addition, the spatial discrepancy is often nonsystematic such that a simple global transformation will not solve the problem. Manual correction is labor-intensive and time-consuming and often not practical. In this paper, we present an innovative solution for a vector-to-imagery conflation problem by integrating several vector-based and image-based algorithms. We only extract the different types of road intersections and terminations from imagery based on spatial contextual measures. We eliminate the process of line segment detection which is often troublesome. The vector road intersections are matched to these detected points by a relaxation labeling algorithm. The matched point pairs are then used as control points to perform a piecewise rubber-sheeting transformation. With the end points of each road segment in correct positions, a modified snake algorithm maneuvers intermediate vector road vertices toward a candidate road image. Finally a refinement algorithm moves the points to center each road and obtain better cartographic quality. To test the efficacy of the automated conflation algorithm, we used U.S. Census Bureau's TIGER vector road data and U.S. Department of Agriculture's 1-m multi-spectral near infrared aerial photography in our study. Experiments were conducted over a variety of rural, suburban, and urban environments. The results demonstrated excellent performance. The average correctness measure increased from 20.6% to 95.5% and the average root-mean-square error decreased from 51.2 to 3.4 m.
随着各种地理空间数据的可得性不断增加,迫切需要整合多个数据集以改进空间分析。然而,由于这些数据集通常源自不同来源且空间精度各异,它们往往彼此匹配不佳。此外,空间差异通常是非系统性的,以至于简单的全局变换无法解决问题。人工校正劳动强度大、耗时且往往不切实际。在本文中,我们通过整合几种基于矢量和基于图像的算法,提出了一种针对矢量与图像合并问题的创新解决方案。我们仅基于空间上下文度量从图像中提取不同类型的道路交叉点和终点。我们省去了通常麻烦的线段检测过程。通过松弛标记算法将矢量道路交叉点与这些检测到的点进行匹配。然后将匹配的点对用作控制点来执行分段橡皮片变换。在每个路段的端点处于正确位置后,一种改进的蛇形算法将中间矢量道路顶点朝着候选道路图像移动。最后,一种细化算法将这些点移动到每条道路的中心以获得更好的制图质量。为了测试自动合并算法的有效性,我们在研究中使用了美国人口普查局的TIGER矢量道路数据和美国农业部的1米多光谱近红外航空摄影。实验在各种农村、郊区和城市环境中进行。结果显示出优异的性能。平均正确性度量从20.6%提高到95.5%,平均均方根误差从51.2米降至3.4米。