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Fully Automatic DEM Deformation Detection Without Control Points Using Differential Model Based on LZD Algorithm

机译:基于LZD算法的差分模型,完全自动DEM变形检测无控制点

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An attractive, but very difficult research topic is automatic DEM deformation detection without control points. The technique is essential for multi-temporal remote sensing applied in, e.g., soil-erosion and debris flow disaster monitoring. This paper presents a differential model and a fully automatic method for multi-temporal DEMs deformation detection without control points based on Least Z-Difference (LZD) algorithm. Firstly, the corresponding points on both original DEM and ready matching DEM are paired using the criterion in the LZD algorithm, and then differential model can be constructed by arraying all Z-coordinate differences between corresponding points in line with their position. The weight of each observation (Z-difference) is set using the characteristics of differential model. The observation, whose weight is set to zero, is dropped from the matching process. Afterwards, all isolated observations are also removed. After processed through the above two steps, almost all of suspicious deformed observations, including some good observations, would be able be discarded from the objective function. Therefore, the DEM surface deformation can quantificationally be detected by the matched DEMs. A comparison study using multi-temporal DEMs on PUWAIGOU debris-flow valley shows that the presented method in this paper is more robust and has higher accuracy than ones of M-LZD and LMS-LZD algorithms. Moreover, the new method can detect that DEM data, whose deformation area is over 50%.
机译:有吸引力,但非常困难的研究主题是自动DEM变形检测,无需控制点。该技术对于适用于应用IN的多时间遥感,例如土壤侵蚀和碎片流动灾害监测是必不可少的。本文呈现了一种差分模型和基于最小Z差异(LZD)算法的无控制点的多时间DEMS变形检测的全自动模型。首先,使用LZD算法中的标准和准备匹配DEM的相应点使用LZD算法中的标准对,然后可以通过将相应点与其位置的相应点之间的所有Z坐标差差来组成差分模型。使用差分模型的特性设定每个观察(z差异)的重量。从匹配过程中删除重量为零的观察。之后,还将分离的观察结果除外。在通过上述两个步骤处理之后,几乎所有可疑的变形观察包括一些良好的观察,都可以从目标函数中丢弃。因此,DEM表面变形可以通过匹配的DEM定量检测。使用普瓦古沟泥石流谷谷多时间DEM的比较研究表明,本文的呈现方法更加坚固,并且比M-LZD和LMS-LZD算法更高。此外,新方法可以检测到其变形区域超过50%的DEM数据。

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