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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >A Two-Phase Classification of Urban Vegetation Using Airborne LiDAR Data and Aerial Photography
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A Two-Phase Classification of Urban Vegetation Using Airborne LiDAR Data and Aerial Photography

机译:利用机载LiDAR数据和航空摄影技术对城市植被进行两阶段分类

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摘要

The nDSM is commonly used in land cover classification with different heights. However, it is difficult to classify vegetation accurately from other land covers, such as buildings, with only the height information. Meanwhile, traditional remotely sensed imageries have difficulties discriminating different urban vegetation components such as trees and shrubs. Therefore, it is essential to combine both remote sensing imagery and height information obtained from Light Detection and Ranging (LiDAR) data for classification of detailed vegetation components. In this paper, a two-phase classification method is proposed to fuse the airborne LiDAR data and aerial photography imagery to obtain detailed urban vegetation classification map. The first step is to distinguish vegetation from buildings, bare ground, and shade. In this step, two different fusion approaches and two classification methods were used, and the result with the highest accuracy for vegetation classification was selected as the input of the second step. The second step is to output the classification map of vegetation class into vector polygons and utilizes them to separate the vegetation LiDAR points from the nonground points. Then tree, shrub, and lawn points can be easily classified from the vegetation points due to their different heights. The proposed method yielded a classification result with an overall accuracy of 83.39% and a kappa coefficient of 0.79. Moreover, the producer accuracies of vegetation class (tree, shrub, and lawn) are 95.20%, 61.66%, and 79.35%, respectively.
机译:nDSM通常用于不同高度的土地覆盖分类。但是,仅凭高度信息很难对其他土地覆盖物(例如建筑物)进行准确的植被分类。同时,传统的遥感图像很难区分树木和灌木等不同的城市植被。因此,必须结合遥感图像和从光探测与测距(LiDAR)数据获得的高度信息,以对详细的植被成分进行分类。本文提出了一种两阶段分类方法,将机载LiDAR数据与航拍图像融合,以获得详细的城市植被分类图。第一步是将植被与建筑物,裸露的地面和阴影区分开。在此步骤中,使用了两种不同的融合方法和两种分类方法,并且选择了植被分类精度最高的结果作为第二步的输入。第二步是将植被类别的分类图输出为矢量多边形,并利用它们将植被LiDAR点与非地面点分开。然后,由于它们的高度不同,可以很容易地从植被点中对树木,灌木和草坪点进行分类。所提出的方法产生的分类结果的总体准确度为83.39%,卡伯系数为0.79。此外,植被等级(树木,灌木和草坪)的生产者准确度分别为95.20%,61.66%和79.35%。

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