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INTEGRATION OF HETEROGENOUS DIGITAL SURFACE MODELS

机译:非均质数字表面模型的集成

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The application of extended digital surface models often reveals, that despite an acceptable global accuracy for a given dataset, the local accuracy of the model can vary in a wide range. For high resolution applications which cover the spatial extent of a whole country, this can be a major drawback. Within the Swiss National Forest Inventory (NFI), two digital surface models are available, one derived from LiDAR point data and the other from aerial images. Automatic photogrammetric image matching with ADS80 aerial infrared images with 25cm and 50cm resolution is used to generate a surface model (ADS-DSM) with 1m resolution covering whole switzerland (approx. 41000 km2). The spatially corresponding LiDAR dataset has a global point density of 0.5 points per m2 and is mainly used in applications as interpolated grid with 2m resolution (LiDAR-DSM). Although both surface models seem to offer a comparable accuracy from a global view, local analysis shows significant differences. Both datasets have been acquired over several years. Concerning LiDAR-DSM, different flight patterns and inconsistent quality control result in a significantly varying point density. The image acquisition of the ADS-DSM is also stretched over several years and the model generation is hampered by clouds, varying illumination and shadow effects. Nevertheless many classification and feature extraction applications requiring high resolution data depend on the local accuracy of the used surface model, therefore precise knowledge of the local data quality is essential. The commercial photogrammetric software NGATE (part of SOCET SET) generates the image based surface model (ADS-DSM) and delivers also a map with figures of merit (FOM) of the matching process for each calculated height pixel. The FOM-map contains matching codes like high slope, excessive shift or low correlation. For the generation of the LiDAR-DSM only first- and last-pulse data was available. Therefore only the point distribution can be used to derive a local accuracy measure. For the calculation of a robust point distribution measure, a constrained triangulation of local points (within an area of 100m2) has been implemented using the Open Source project CGAL. The area of each triangle is a measure for the spatial distribution of raw points in this local area. Combining the FOM-map with the local evaluation of LiDAR points allows an appropriate local accuracy evaluation of both surface models. The currently implemented strategy ("partial replacement") uses the hypothesis, that the ADS-DSM is superior due to its better global accuracy of 1m. If the local analysis of the FOM-map within the 100m2 area shows significant matching errors, the corresponding area of the triangulated LiDAR points is analyzed. If the point density and distribution is sufficient, the LiDAR-DSM will be used in favor of the ADS-DSM at this location. If the local triangulation reflects low point density or the variance of triangle areas exceeds a threshold, the investigated location will be marked as NODATA area. In a future implementation ("anisotropic fusion") an anisotropic inverse distance weighting (IDW) will be used, which merges both surface models in the point data space by using FOM-map and local triangulation to derive a quality weight for each of the interpolation points. The "partial replacement" implementation and the "fusion" prototype for the anisotropic IDW make use of the Open Source projects CGAL (Computational Geometry Algorithms Library), GDAL (Geospatial Data Abstraction Library) and OpenCV (Open Source Computer Vision).
机译:扩展的数字表面模型的应用往往揭示,尽管对于给定的数据集的可接受的全球精度,该模型的局部精度可以在宽的范围内变化。用于覆盖整个国家的空间范围高分辨率应用,这可以是一个主要缺点。在瑞士国家森林资源清查(NFI),两个数字表面模型可供选择,一个从激光雷达点数据导出和航空影像其他。与25厘米和50厘米分辨率ADS80航拍红外图像自动摄影图像匹配来生成具有1米分辨率覆盖整个瑞士(约41000平方公里)的表面模型(ADS-DSM)。空间对应的激光雷达数据集具有每平方米0.5点全球点密度和主要用在应用中,用2M的分辨率(LIDAR-DSM)内插网格。虽然这两个表面模型似乎提供从全球视野相当的准确度,局部分析显示显著差异。这两个数据集已经收购了数年。关于在显著变化的点密度的LiDAR-DSM,不同飞行模式和不一致的质量控制结果。在ADS-DSM的图像采集也伸展在几年和模型生成被云的阻碍,变化的照明和阴影效果。不过需要高分辨率数据的许多分类和特征提取的应用取决于所使用的表面模型的局部准确性,本地数据质量的精确,因此知识是必不可少的。商业摄影软件NGATE(SOCET集的一部分)生成基于图像的表面模型(ADS-DSM)和还提供有用于每个计算出的高度的像素的匹配处理的优值(FOM)的数字地图。的FOM-地图包含像高斜率,过度移位或低相关性的匹配码。对于激光雷达,帝斯曼的产生是仅首次和最后脉冲的数据。因此,只有点分布可以用来导出本地准确性测量。对于稳健点分布度量的计算,本地点的约束三角(的百平方米的区域内)已经被使用开源项目CGAL实现。每个三角形的面积为原料点在该局部区域中的空间分布的量度。在FOM-地图的激光雷达点的本地评价的结合使地表模型的一个适当的本地精度评估。目前实现的战略(“部分替代”)使用的假设,即ADS-DSM是其更好的全球1米精度优良所致。如果100平方米区域显示显著匹配误差范围内的FOM-地图的局部分析,三角激光雷达点的相应区域进行了分析。如果点的密度和分布是足够的,激光雷达,帝斯曼将有利于ADS-DSM的在这个位置使用。如果本地三角测量反映低点密度或三角形区域的方差超过阈值,所研究的位置将被标记为NODATA区域。在未来的实现(“各向异性融合”)的各向异性反距离加权(IDW)将被使用,其通过使用FOM-地图和局部三角测量来导出质量权重为每一个所述插值的合并在点数据空间二者的表面模型点。对于各向异性IDW利用开源“部分替代”的实施和“融合”的原型项目CGAL(计算几何算法库),GDAL(地理空间数据抽象库)和OpenCV(开源计算机视觉)。

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