首页> 外文期刊>Journal of the Indian Society of Remote Sensing >Dense DSM and DTM Point Cloud Generation Using CARTOSAT-2E Satellite Images for High-Resolution Applications
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Dense DSM and DTM Point Cloud Generation Using CARTOSAT-2E Satellite Images for High-Resolution Applications

机译:使用Cartosat-2E卫星图像进行高分辨率应用的密集DSM和DTM点云生成

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摘要

The primary objective of this study is to provide a methodology to generate a dense point cloud of digital surface model (DSM) and digital terrain model (DTM) from 0.6 m GSD stereo images acquired by CARTOSAT-2E satellite of the Indian Space Research Organization. These products are required for many high-resolution applications such as mapping of watersheds and watercourses; river flood modeling; analysis of flood depth, landslide, forest structure, and individual trees; design of highway and canal alignment. The proposed method consists of several processes such as orienting the stereo images, DEM point cloud extraction using the semi-global matching, and DSM to DTM filtering. The stereo model is built by performing aero triangulation and block adjustment using the ground control points. The semi-global matching algorithm is used on the epipolar images to generate the DSM in the form of dense point cloud corresponding to one height point for each pixel. The planimetric and height accuracies are evaluated using orthoimages and DSM and found to be within 3-pixel (~ 2 m) range. A method for extracting DTM by ground point filtering, to discriminate the probable ground points and the non-ground points, is provided by using discrete cosine transformation interpolation. This robust method uses a weight function to differentiate the noise points from the ground points. The overall classification efficiency kappa (kappa) value averages at 0.92 for ground point classification/DTM extraction. The results of benchmarking of the GPS-aided GEO augmented navigation GPS receiver by operating it over IGS station, in static mode for collecting the checkpoints, also are presented.
机译:本研究的主要目的是提供一种方法来从印度空间研究组织的CartoSat-2E卫星获取的0.6米GSD立体声图像生成数字表面模型(DSM)和数字地形模型(DTM)的密集点云。许多高分辨率应用需要这些产品,例如流域和水道的映射;河洪水建模;分析洪水深度,滑坡,森林结构和个体树木;高速公路和运河对齐设计。所提出的方法包括若干过程,例如使用半全局匹配和DSM到DTM滤波的DEM点云提取。立体声模型是通过执行Aero三角测量和使用地面控制点的调整构建的。对于eBipolar图像,在eMipolar图像上使用半全局匹配算法以对应于每个像素的一个高度点的致密点云形式生成DSM。使用OrthoImages和DSM评估平面图和高度精度,发现在3像素(〜2米)范围内。通过使用离散余弦变换插值提供用于通过接地面滤波提取DTM的方法,以区分可能的接地点和非接地点。这种稳健的方法使用权重函数来区分与地点的噪声点。用于接地分类/ DTM提取的整体分类效率Kappa(Kappa)值平均值0.92。还提出了通过在IGS站上运行GPS辅助地Geo增强导航GPS接收器的基准测试,以收集检查点的静态模式。

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