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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Modelling vertical error in LiDAR-derived digital elevation models
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Modelling vertical error in LiDAR-derived digital elevation models

机译:在LiDAR衍生的数字高程模型中建模垂直误差

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摘要

A hybrid theoretical-empirical model has been developed for modelling the error in LiDAR-derived digital elevation models (DEMs) of non-open terrain. The theoretical component seeks to model the propagation of the sample data error (SDE), i.e. the error from light detection and ranging (LiDAR) data capture of ground sampled points in open terrain, towards interpolated points. The interpolation methods used for infilling gaps may produce a non-negligible error that is referred to as gridding error. In this case, interpolation is performed using an inverse distance weighting (IDW) method with the local support of the five closest neighbours, although it would be possible to utilize other interpolation methods. The empirical component refers to what is known as "information loss". This is the error purely due to modelling the continuous terrain surface from only a discrete number of points plus the error arising from the interpolation process. The SDE must be previously calculated from a suitable number of check points located in open terrain and assumes that the LiDAR point density was sufficiently high to neglect the gridding error. For model calibration, data for 29 study sites, 200 × 200 m in size, belonging to different areas around Almeria province, south-east Spain, were acquired by means of stereo photogrammetric methods. The developed methodology was validated against two different LiDAR datasets. The first dataset used was an Ordnance Survey (OS) LiDAR survey carried out over a region of Bristol in the UK. The second dataset was an area located at Gador mountain range, south of Almeria province, Spain. Both terrain slope and sampling density were incorporated in the empirical component through the calibration phase, resulting in a very good agreement between predicted and observed data (R~2 = 0.9856; p < 0.001). In validation, Bristol observed vertical errors, corresponding to different LiDAR point densities, offered a reasonably good fit to the predicted errors. Even better results were achieved in the more rugged morphology of the Gador mountain range dataset. The findings presented in this article could be used as a guide for the selection of appropriate operational parameters (essentially point density in order to optimize survey cost), in projects related to LiDAR survey in non-open terrain, for instance those projects dealing with forestry applications.
机译:已经开发了一种混合的理论-经验模型来对非开放地形的LiDAR衍生的数字高程模型(DEM)中的误差进行建模。该理论部分试图对样本数据误差(SDE)的传播进行建模,即从地面上的地面采样点向插值点的光检测和测距(LiDAR)数据捕获产生的误差。用于填充间隙的插值方法可能会产生不可忽略的误差,称为网格误差。在这种情况下,尽管可以使用其他内插方法,但可以使用逆距离加权(IDW)方法在五个最邻近邻域的本地支持下执行内插。经验成分是指所谓的“信息丢失”。这纯粹是由于仅从离散点开始对连续地形表面建模而产生的误差,再加上由插值过程引起的误差。 SDE必须事先根据位于开放地形中的适当数量的检查点计算得出,并假设LiDAR点密度足够高,可以忽略网格误差。为了进行模型校准,通过立体摄影测量法获得了29个研究场地的数据,该研究场地的大小为200×200 m,属于西班牙东南部阿尔梅里亚省的不同地区。针对两个不同的LiDAR数据集验证了开发的方法。使用的第一个数据集是在英国布里斯托尔地区进行的军械调查(OS)LiDAR调查。第二个数据集是位于西班牙阿尔梅里亚省南部的加多尔山脉地区。在校准阶段,将地形坡度和采样密度都纳入了经验成分,从而使预测数据与实测数据之间具有很好的一致性(R〜2 = 0.9856; p <0.001)。在验证中,Bristol观察到对应于不同LiDAR点密度的垂直误差,可以很好地拟合预测的误差。在Gador山脉数据集的更粗糙的形态上,甚至获得了更好的结果。在非开放地形中与LiDAR测量相关的项目(例如,涉及林业的项目)中,本文介绍的发现可作为选择合适的操作参数(基本点密度以优化测量成本)的指南。应用程序。

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