Assessing vertical terrain displacement from TLS data by applying Msplit estimation – theoretical analysis

P. Wyszkowska, R. Duchnowski
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Abstract

Terrestrial laser scanning (TLS) is a measurement technique that has become popular in the last decades. Measurement results, usually as a point cloud, contain many points measured. When the TLS technique is used to determine terrain surface (e.g., by determining terrain profiles), one should realize that some points measured do not concern the terrain surface itself, but trees, shrubs, or generally the vegetation cover. Considering terrain surface determination, they should be regarded as outliers. Some other observations can also be outliers of different origins; for example, they might be disturbed by gross errors. We should consider such observation types when the data are processed. Two leading solutions in such a context are data cleaning and the application of robust estimation methods. Robust M-estimation is the most popular for the latter approach. As an alternative, one can also consider the application of Msplit estimation, in which the functional model is split into two competing ones. Hence, the paper aims to analyze how Msplit estimation can assess vertical terrain displacement based on terrain profile determination from TLS data. We consider processing data in separate sets (two measurement epochs) or one combined set, a natural approach in Msplit estimation. The analyses based on simulated TLS data proved that the first solution seems better. Furthermore, the application of Msplit estimation can also provide more satisfactory results than the classical methods used in such a context.
应用Msplit估计方法估算TLS数据的垂直地形位移-理论分析
地面激光扫描(TLS)是近几十年来兴起的一种测量技术。测量结果通常作为一个点云,包含许多被测量的点。当使用TLS技术来确定地形表面时(例如,通过确定地形剖面),人们应该意识到一些测量点与地形表面本身无关,而是与树木、灌木或通常的植被覆盖有关。考虑到地形表面的确定,它们应该被视为离群值。其他一些观测结果也可能是不同来源的异常值;例如,它们可能会受到严重错误的干扰。在处理数据时,我们应该考虑这些观测类型。在这种情况下,两种主要的解决方案是数据清理和鲁棒估计方法的应用。对于后一种方法,稳健m估计是最流行的。作为替代方案,也可以考虑应用Msplit估计,其中功能模型被分成两个相互竞争的模型。因此,本文旨在分析基于TLS数据的地形轮廓确定的Msplit估计如何评估垂直地形位移。我们考虑在单独的集(两个测量时代)或一个组合集处理数据,这是Msplit估计中的一种自然方法。基于模拟TLS数据的分析证明了第一种方案似乎更好。此外,在这种情况下,应用Msplit估计也可以提供比经典方法更令人满意的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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