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Strip Adjustment of Airborne LiDAR Data in Urban Scenes Using Planar Features by the Minimum Hausdorff Distance

机译:使用平面特征按最小Hausdorff距离对城市场景中的机载LiDAR数据进行条带调整

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摘要

In Airborne Light Detection and Ranging (LiDAR) data acquisition practice, discrepancies exist between adjacent strips even though careful system calibrations have been performed. A strip adjustment method using planar features acquired by the Minimum Hausdorff Distance (MHD) is proposed to eliminate these discrepancies. First, semi-suppressed fuzzy C-means and restricted region growing algorithms are used to extract buildings. Second, a binary image is generated from the minimum bounding rectangle that covers overlapping regions. Then, connected components labeling algorithm is applied to process the binary image to extract individual buildings. After that, building matching is performed based on MHD. Third, a coarse-to-fine approach is used to segment building roof planes. Then, plane matching is conducted under the constraints of MHD and normal vectors similarity. The last step is the calculation of the parameters based on Euclidean distance minimization between matched planes. Two different types of datasets, one of which was acquired by a dual-channel LiDAR system Trimble AX80, were selected to verify the proposed method. Experimental results show that the corresponding planar features that meet adjustment requirements can be successfully detected without any manual operations or auxiliary data or transformation of raw data, while the discrepancies between strips can be effectively eliminated. Although adjustment results of the proposed method slightly outperform the comparison alternative, the proposed method also has the advantage of processing the adjustment in a more automatic manner than the comparison method.
机译:在机载光检测和测距(LiDAR)数据采集实践中,即使已经执行了仔细的系统校准,相邻条带之间也存在差异。为了消除这些差异,提出了一种使用通过最小Hausdorff距离(MHD)获取的平面特征的带钢调整方法。首先,使用半抑制的模糊C均值和限制区域增长算法来提取建筑物。其次,从覆盖重叠区域的最小边界矩形生成二进制图像。然后,使用连接组件标记算法对二进制图像进行处理,以提取各个建筑物。之后,基于MHD执行建筑匹配。第三,从粗到精的方法用于分割建筑物的屋顶平面。然后,在MHD和法向矢量相似性的约束下进行平面匹配。最后一步是基于匹配平面之间的欧式距离最小化来计算参数。选择了两种不同类型的数据集,其中一种是通过双通道LiDAR系统Trimble AX80采集的,以验证所提出的方法。实验结果表明,无需任何人工操作或辅助数据或原始数据的转换,就可以成功地检测出满足调整要求的相应平面特征,同时可以有效地消除条带之间的差异。尽管所提出的方法的调整结果略胜于比较替代方案,但是所提出的方法还具有与比较方法相比以更自动的方式处理调整的优点。

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