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An Automatic Building Extraction and Regularisation Technique Using LiDAR Point Cloud Data and Orthoimage ?

机译:利用LiDAR点云数据和Orthoimage?自动建筑物提取和正则化技术?

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The development of robust and accurate methods for automatic building detection and regularisation using multisource data continues to be a challenge due to point cloud sparsity, high spectral variability, urban objects differences, surrounding complexity, and data misalignment. To address these challenges, constraints on object’s size, height, area, and orientation are generally benefited which adversely affect the detection performance. Often the buildings either small in size, under shadows or partly occluded are ousted during elimination of superfluous objects. To overcome the limitations, a methodology is developed to extract and regularise the buildings using features from point cloud and orthoimagery. The building delineation process is carried out by identifying the candidate building regions and segmenting them into grids. Vegetation elimination, building detection and extraction of their partially occluded parts are achieved by synthesising the point cloud and image data. Finally, the detected buildings are regularised by exploiting the image lines in the building regularisation process. Detection and regularisation processes have been evaluated using the ISPRS benchmark and four Australian data sets which differ in point density (1 to 29 points/m 2 ), building sizes, shadows, terrain, and vegetation. Results indicate that there is 83% to 93% per-area completeness with the correctness of above 95%, demonstrating the robustness of the approach. The absence of over- and many-to-many segmentation errors in the ISPRS data set indicate that the technique has higher per-object accuracy. While compared with six existing similar methods, the proposed detection and regularisation approach performs significantly better on more complex data sets (Australian) in contrast to the ISPRS benchmark, where it does better or equal to the counterparts.
机译:由于点云稀疏性,高光谱可变性,城市物体差异,周围的复杂性和数据未对准,使用多源数据的可靠,准确的方法的开发对于自动建筑物检测和规范化仍然是一个挑战。为了应对这些挑战,通常有利于限制对象的大小,高度,面积和方向,这会对检测性能产生不利影响。在清除多余的物体时,通常会把规模较小,在阴影下或部分遮挡的建筑物赶下台。为了克服这些限制,开发了一种使用点云和正射影像的特征提取和规范化建筑物的方法。通过确定候选建筑区域并将其划分为网格来执行建筑轮廓描述过程。通过合成点云和图像数据,可以消除植被,建筑物检测和部分遮挡部分的提取。最后,通过在建筑物正则化过程中利用图像线对检测到的建筑物进行正则化。使用ISPRS基准和四个澳大利亚数据集(点密度(1到29个点/ m 2),建筑物大小,阴影,地形和植被不同)评估了检测和规范化过程。结果表明,每个区域的完整性为83%到93%,正确性在95%以上,证明了该方法的鲁棒性。 ISPRS数据集中不存在过多和多对多的分割错误,这表明该技术具有更高的逐对象准确性。与现有的六种类似方法相比,与ISPRS基准相比,建议的检测和正则化方法在更复杂的数据集(澳大利亚)上的性能要好得多,后者要好于或等于同类方法。

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