首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Scale invariant line-based co-registration of multimodal aerial data using L1 minimization of spatial and angular deviations
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Scale invariant line-based co-registration of multimodal aerial data using L1 minimization of spatial and angular deviations

机译:使用L1最小化空间和角度偏差的L1最小化基于不变线的基于不变线的共同登记

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In this work, we investigate the coregistration of multimodal data, such as photogrammetric/LiDAR point clouds, digital surface models, orthoimages, or 3D CAD city models, using corresponding line segments. The lines are analytically derived as intersections of adjacent planar surfaces, which can be determined more robustly and are deemed more accurate compared to single point based features. We propose a two-stage approach, which first focuses on finding optimal line correspondences between the datasets using a scale-invariant graph matching method, and then utilizes the found matching as a basis for calculating the optimal coregistration transform. By decoupling the correspondence search from the transform calculation, our approach can use more line pairs for determining the optimal transform than would be practicable with a combined, sampling-style approach. As opposed to competing methods, our transform computation is based on explicitly minimizing the average L1 distance on the matched line set. The assumed model accounts for an isotropic scaling factor, three translations and three rotation angles. We conducted experiments on two publicly available ISPRS datasets: Vaihingen and Dortmund, and compared the performance of several variations of our approach with three competing methods. The results indicate that the L1 methods decreased the median matched line distance by up to one third in case of pre-aligned Z axes. Moreover, when coregistering two photogrammetric datasets acquired from distinct viewing perspectives, our method was able to triple the number of matched lines (under a strict proximity-based criterion) compared to its competitor. Our results show that it is worthwhile to base the transform calculation on significantly more line pairs than is customary for sample consensus-based approaches. Our established validation dataset for line-based coregistration has been published and made available online (https://doi.org/10.7632/dmp7tkn8kc.2).
机译:在这项工作中,我们使用相应的线段调查多模式数据的核心标准,例如摄影测量/ LIDAR点云,数字表面模型,OrthoImages或3D CAD城市模型。这些线被分析为相邻平面表面的交叉点,其可以更加稳健地确定并且与基于单点的特征相比,被认为更准确。我们提出了一种两级方法,首先使用比例不变图形匹配方法在数据集之间找到最佳线对应关系,然后利用所发现的匹配作为计算最佳核心转化变换的基础。通过将对应搜索从变换计算解耦,我们的方法可以使用更多的线对来确定最佳变换,而不是具有组合的采样方式的可行性。与竞争方法相反,我们的转换计算基于明确地最小化匹配线集上的平均L1距离。假定的模型占各向同性缩放因子,三个翻译和三个旋转角度。我们对两种公开的ISPRS数据集进行了实验:Vaihingen和Dortmund,并与三种竞争方法进行了多种方法的性能。结果表明,在预先排列的Z轴的情况下,L1方法在预先排列的Z轴的情况下将中值匹配的线距下降三分之一。此外,当重塑从不同观察视角获取的两个摄影测量数据集时,与其竞争对手相比,我们的方法能够将匹配线数(根据严格的基于近距离的标准)三倍。我们的研究结果表明,基于基于样本共识的方法的常规,将变换计算基础上的转换计算值得基础。我们已熟悉基于线路的核心标记的数据集已发布并在线提供(https://doi.org/10.7632/dmp7tkn8kc.2)。

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