首页> 外文会议>ISPRS Congress >AIRBORNE LIGHT DETECTION AND RANGING (LIDAR) DERIVED DEFORMATION FROM THE MW 6.0 24 AUGUST, 2014 SOUTH NAPA EARTHQUAKE ESTIMATED BY TWO AND THREE DIMENSIONAL POINT CLOUD CHANGE DETECTION TECHNIQUES
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AIRBORNE LIGHT DETECTION AND RANGING (LIDAR) DERIVED DEFORMATION FROM THE MW 6.0 24 AUGUST, 2014 SOUTH NAPA EARTHQUAKE ESTIMATED BY TWO AND THREE DIMENSIONAL POINT CLOUD CHANGE DETECTION TECHNIQUES

机译:空中光探测和测距(LIDAR)MW 6.0 8月24日的MW 6.0南纳帕地震估计由二维和三维云变化检测技术估计

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Remote sensing via LiDAR (Light Detection And Ranging) has proven extremely useful in both Earth science and hazard related studies. Surveys taken before and after an earthquake for example, can provide decimeter-level, 3D near-field estimates of land deformation that offer better spatial coverage of the near field rupture zone than other geodetic methods (e.g., InSAR, GNSS, or alignment array). In this study, we compare and contrast estimates of deformation obtained from different pre and post-event airborne laser scanning (ALS) data sets of the 2014 South Napa Earthquake using two change detection algorithms, Iterative Control Point (ICP) and Particle Image Velocimetry (PIV). The ICP algorithm is a closest point based registration algorithm that can iteratively acquire three dimensional deformations from airborne LiDAR data sets. By employing a newly proposed partition scheme, "moving window," to handle the large spatial scale point cloud over the earthquake rupture area, the ICP process applies a rigid registration of data sets within an overlapped window to enhance the change detection results of the local, spatially varying surface deformation near-fault. The other algorithm, PIV, is a well-established, two dimensional image co-registration and correlation technique developed in fluid mechanics research and later applied to geotechnical studies. Adapted here for an earthquake with little vertical movement, the 3D point cloud is interpolated into a 2D DTM image and horizontal deformation is determined by assessing the cross-correlation of interrogation areas within the images to find the most likely deformation between two areas. Both the PIV process and the ICP algorithm are further benefited by a presented, novel use of urban geodetic markers. Analogous to the persistent scatterer technique employed with differential radar observations, this new LiDAR application exploits a classified point cloud dataset to assist the change detection algorithms. Ground deformation results and statistics from these techniques are presented and discussed here with supplementary analyses of the differences between techniques and the effects of temporal spacing between LiDAR datasets. Results show that both change detection methods provide consistent near field deformation comparable to field observed offsets. The deformation can vary in quality but estimated standard deviations are always below thirty one centimeters. This variation in quality differentiates the methods and proves that factors such as geodetic markers and temporal spacing play major roles in the outcomes of ALS change detection surveys.
机译:通过LIDAR(光检测和测距)遥感在地球科学和危险相关研究中非常有用。例如,在地震之前和之后采取的调查,可以提供比率级,3D近场估计的土地变形,提供比其他大地测量方法更好的近场破裂区域的空间覆盖率(例如,insar,gnss或对准阵列) 。在这项研究中,我们使用两个变化检测算法,迭代控制点(ICP)和粒子图像VELIMETRY来比较2014南纳帕地震的不同前和事后飞载激光扫描(ALS)数据集的变形的对比估计。 PIV)。 ICP算法是最接近的基于点的配准算法,其可以迭代地从机载激光器数据集中获取三维变形。通过采用新提出的分区方案,“移动窗口”,来处理在地震破裂区域中的大的空间尺度点云中,ICP过程施加重叠的窗口内的数据集的刚性配准,以提高局部的变化的检测结果,空间变化的表面变形附近故障。另一种算法PIV是一种良好的二维图像共同登记和相关技术,在流体力学研究中开发,后来应用于岩土学研究。这里适用于具有很少垂直运动的地震,3D点云通过评估图像内询问区域的互相关来确定水平变形,以找到两个区域之间的最可能变形。 PIV过程和ICP算法均通过呈现的城市大地测量标记的呈现新颖的使用进一步受益。类似于差分雷达观测使用的持久散射者技术,这种新的LIDAR应用程序利用分类点云数据集来帮助改变检测算法。这里介绍并讨论了这些技术的地面变形结果和统计数据,并讨论了LIDAR数据集之间的技术与时间间距之间的差异和效果的差异。结果表明,两种变化检测方法都提供了一致的近场变形,与现场观察的偏移相当。变形可以在质量上变化,但估计的标准偏差总是低于三十一厘米。这种质量的变化区分了方法,并证明了大理石标记和时间间距等因素在ALS变化检测调查的结果中发挥着重要作用。

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