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Object-Based Point Cloud Analysis of Full-Waveform Airborne Laser Scanning Data for Urban Vegetation Classification

机译:城市植被分类的全波形机载激光扫描数据基于对象的点云分析

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摘要

Airborne laser scanning (ALS) is a remote sensing technique well-suited for 3D vegetation mapping and structure characterization because the emitted laser pulses are able to penetrate small gaps in the vegetation canopy. The backscattered echoes from the foliage, woody vegetation, the terrain, and other objects are detected, leading to a cloud of points. Higher echo densities (>20 echoes/m2) and additional classification variables from full-waveform (FWF) ALS data, namely echo amplitude, echo width and information on multiple echoes from one shot, offer new possibilities in classifying the ALS point cloud. Currently FWF sensor information is hardly used for classification purposes. This contribution presents an object-based point cloud analysis (OBPA) approach, combining segmentation and classification of the 3D FWF ALS points designed to detect tall vegetation in urban environments. The definition tall vegetation includes trees and shrubs, but excludes grassland and herbage. In the applied procedure FWF ALS echoes are segmented by a seeded region growing procedure. All echoes sorted descending by their surface roughness are used as seed points. Segments are grown based on echo width homogeneity. Next, segment statistics (mean, standard deviation, and coefficient of variation) are calculated by aggregating echo features such as amplitude and surface roughness. For classification a rule base is derived automatically from a training area using a statistical classification tree. To demonstrate our method we present data of three sites with around 500,000 echoes each. The accuracy of the classified vegetation segments is evaluated for two independent validation sites. In a point-wise error assessment, where the classification is compared with manually classified 3D points, completeness and correctness better than 90% are reached for the validation sites. In comparison to many other algorithms the proposed 3D point classification works on the original measurements directly, i.e. the acquired points. Gridding of the data is not necessary, a process which is inherently coupled to loss of data and precision. The 3D properties provide especially a good separability of buildings and terrain points respectively, if they are occluded by vegetation.
机译:机载激光扫描(ALS)是一种非常适合3D植被映射和结构表征的遥感技术,因为发出的激光脉冲能够穿透植被冠层的小间隙。从树叶,木本植被,地形和其他物体检测到的反向散射回波,导致了点云。更高的回声密度(> 20个回声/ m 2 )以及来自全波形(FWF)ALS数据的其他分类变量,即回声幅度,回声宽度和一次发射的多次回声信息,提供了新的可能性在对ALS点云进行分类中。当前,FFF传感器信息几乎不用于分类目的。此文稿提出了一种基于对象的点云分析(OBPA)方法,将3D FWF ALS点的分段和分类相结合,旨在检测城市环境中的高大植被。高大植被的定义包括树木和灌木,但不包括草原和牧草。在应用程序中,通过种子区域生长程序将FWF ALS回波分割。将按其表面粗糙度降序排序的所有回波用作种子点。根据回波宽度均匀性来增长段。接下来,通过汇总回波特征(例如振幅和表面粗糙度)来计算分段统计信息(均值,标准偏差和变异系数)。为了分类,使用统计分类树从训练区域自动导出规则库。为了演示我们的方法,我们提供了三个站点的数据,每个站点大约有500,000个回波。对两个独立的验证点评估了分类植被段的准确性。在逐点错误评估中,将分类与手动分类的3D点进行比较,对于验证站点,其完整性和正确性均优于90%。与许多其他算法相比,建议的3D点分类直接对原始测量(即获取的点)进行处理。数据网格化不是必需的,这一过程固有地与数据丢失和精度有关。如果3D属性被植被遮挡,则它们分别提供了建筑物和地形点的良好可分离性。

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