首页> 外文会议>Asian conference on remote sensingACRS >A PIPELINE ALGORITHM FOR BUILDING AND STRUCTURE SHAPES GENERATION USING DERIVED LAS DATASET: AN EFFICIENT ALTERNATIVE TO MANUAL DIGITIZATION FROM ORTHOPHOTOS IN FLOOD HAZARD FEATURE EXTRACTION
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A PIPELINE ALGORITHM FOR BUILDING AND STRUCTURE SHAPES GENERATION USING DERIVED LAS DATASET: AN EFFICIENT ALTERNATIVE TO MANUAL DIGITIZATION FROM ORTHOPHOTOS IN FLOOD HAZARD FEATURE EXTRACTION

机译:使用衍生LAS数据集的建筑物和结构形状的管道算法:从洪水危险特征提取中的矫正器中的高效替代方案

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In this paper we propose and describe an implementation of a computationally efficient generation of building and structure shapes which dramatically improves the manual process in flood hazard feature extraction workflow without orthophotos. The impact cuts through not only on the cost in procuring very high-resolution true color RGB images but also ultimately to the reduction of average processing time from manual editing of 4.5 hours down to just over 40 minutes using the computational approach. This time saving scheme is the result from carrying out a prescribed pipeline operation on the LIDAR LAS dataset. The principle from which the generation of our wanted shapes rely uses the convex hull set that forms an outline from the LAS data points during program execution. To contrast when orthophotos with LAS point data they represent a 2-dimensional data matrix whose elements are light intensity RGB values in their horizontal and vertical pixels alone without any depth information and do not have elevation values of the spatial surfaces. In this paper we exploit the zth value representing the relative heights and elevation from ground in the LAS cloud point data that comprise of millions of laser point returns from its coordinates in 3D space. By incremental stepping through a number of height breaks, we are able to select structures in the floodplain areas that is otherwise could be difficult by visual acuity and experience in the polygon outlining by hand alone in 2D image. A test to quantify the difference between the manually derived polygons and those by machine, we used a 2-dimensional cross correlation to yield a number for goodness of alignment. Our experience indicated that an optimum for our test case was reached after a height break of 30m from an iteration of 3-30 meters and step size of 0.5-5.0 sq. meter. The new method prototype achieved practically a one to one alignment and an improved granularity in height discrimination.
机译:在本文中,我们提出并描述了计算有效的建筑物和结构形状的实施,这大大提高了洪水危险中的手动过程的特征提取工作流程,没有正式镜头。不仅通过采购非常高分辨率的真彩RGB图像的成本,而且最终通过手动编辑减少4.5小时的平均处理时间来使用计算方法来降低4.5小时。该时间为节省的方案是在LIDAR LAS数据集上执行规定的流水线操作的结果。我们想要的形状生成的原理依赖于在程序执行期间从LAS数据点中形成轮廓的凸船体集。为了对比时与LAS点数据的正极电极计,它们表示二维数据矩阵,其元素在其水平和垂直像素中单独的光强度RGB值而没有任何深度信息,并且没有空间表面的仰角值。在本文中,我们利用表示与LAS云点数据中的相对高度和高程的Zth值,该数据包括数百万激光点从其3D空间中的坐标返回。通过逐步逐步逐步逐步逐步,我们能够选择洪泛区区域中的结构,否则可能是难以通过单独的手工概述的视师和多边形概述的体验。用于量化手动衍生的多边形与机器之间的差异的测试,我们使用了二维交叉相关性,从而产生最佳对准的数量。我们的经验表明,在3-30米的迭代高度突破30米的高度突破和0.5-5.0平方米的迭代后,我们的测试案例达到了最佳。新方法原型实际上实现了一个到一个对准和改进的高度辨别粒度。

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