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A New Mask for Automatic Building Detection from High Density Point Cloud Data and Multispectral Imagery

机译:从高密度点云数据和多光谱图像自动检测建筑物的新遮罩

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摘要

In complex urban and residential areas, there are buildings which are not only connected with and/or close to one another but also partially occluded by their surrounding vegetation. Moreover, there may be buildings whose roofs are made of transparent materials. In transparent buildings, there are point returns from both the ground (or materials inside the buildings) and the rooftop. These issues confuse the previously proposed building masks which are generated from either ground points or non-ground points. The normalised digital surface model (nDSM) is generated from the non-ground points and usually it is hard to find individual buildings and trees using the nDSM. In contrast, the primary building mask is produced using the ground points, thereby it misses the transparent rooftops. This paper proposes a new building mask based on the non-ground points. The dominant directions of non-ground lines extracted from the multispectral imagery are estimated. A dummy grid with the target mask resolution is rotated at each dominant direction to obtain the corresponding height values from the non-ground points. Three sub-masks are then generated from the height grid by estimating the gradient function. Two of these sub-masks capture planar surfaces whose height remain constant in along and across the dominant direction, respectively. The third sub-mask contains only the flat surfaces where the height (ideally) remains constant in all directions. All the sub-masks generated in all estimated dominant directions are combined to produce the candidate building mask. Although the application of the gradient function helps in removal of most of the vegetation, the final building mask is obtained through removal of planar vegetation, if any, and tiny isolated false candidates. Experimental results on three Australian data sets show that the proposed method can successfully remove vegetation, thereby separate buildings from occluding vegetation and detect buildings with transparent roof materials. While compared to existing building detection techniques, the proposed technique offers higher objectbased completeness, correctness and quality, specially in complex scenes with aforementioned issues. It is not only capable of detecting transparent buildings, but also small garden sheds which are sometimes as small as 5 m2 in area.
机译:在复杂的城市和住宅区,有些建筑物不仅相互连接和/或接近,而且部分被周围的植被所遮挡。此外,可能有一些建筑物的屋顶由透明材料制成。在透明建筑物中,地面(或建筑物内部的材料)和屋顶都有点返回。这些问题使以前提出的从地面点或非地面点生成的建筑遮罩变得困惑。归一化数字表面模型(nDSM)是从非地面点生成的,通常很难使用nDSM查找单个建筑物和树木。相反,主要建筑面具是使用地面点生成的,因此它错过了透明的屋顶。本文提出了一种基于非地面点的新型建筑面具。估计从多光谱图像中提取的非地线的主导方向。在每个主要方向上旋转具有目标蒙版分辨率的虚拟栅格,以从非接地点获得相应的高度值。然后通过估计梯度函数从高度网格生成三个子蒙板。这些子掩模中的两个捕获平面表面,这些平面的高度分别沿主方向和跨主方向保持恒定。第三子掩模仅包含平坦表面,在该平坦表面上,高度(理想情况下)在所有方向上均保持恒定。组合在所有估计的主导方向上生成的所有子蒙版,以生成候选建筑蒙版。尽管应用梯度函数有助于去除大部分植被,但最终的建筑遮罩是通过去除平面植被(如果有)和微小的孤立假候选物而获得的。在三个澳大利亚数据集上的实验结果表明,该方法可以成功去除植被,从而将建筑物与遮挡物分离,并检测具有透明屋顶材料的建筑物。与现有建筑物检测技术相比,所提出的技术提供了更高的基于对象的完整性,正确性和质量,特别是在存在上述问题的复杂场景中。它不仅可以检测透明的建筑物,还可以检测面积有时仅5平方米的小花园棚。

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