首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >Delineation of Tree Crowns and Tree Species Classification From Full-Waveform Airborne Laser Scanning Data Using 3-D Ellipsoidal Clustering
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Delineation of Tree Crowns and Tree Species Classification From Full-Waveform Airborne Laser Scanning Data Using 3-D Ellipsoidal Clustering

机译:使用3-D椭球聚类从全波形机载激光扫描数据中确定树冠和树种的分类

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Individual tree crowns can be delineated from dense airborne laser scanning (ALS) data and their species can be classified from the spatial distribution and other variables derived from the ALS data within each tree crown. This study reports a new clustering approach to delineate tree crowns in three dimensions (3-D) based on ellipsoidal tree crown models (i.e., ellipsoidal clustering). An important feature of this approach is the aim to derive information also about the understory vegetation. The tree crowns are delineated from echoes derived from full-waveform (fwf) ALS data as well as discrete return ALS data with first and last returns. The ellipsoidal clustering led to an improvement in the identification of tree crowns. Fwf ALS data offer the possibility to derive also the echo width and the amplitude in addition to the 3-D coordinates of each echo. In this study, tree species are classified from variables describing the fwf (i.e., the mean and standard deviation of the echo amplitude, echo width, and total number of echoes per pulse) and the spatial distribution of the clusters for pine, spruce, birch, oak, alder, and other species. Supervised classification is done for 68 field plots with leave-one-out cross-validation for one field plot at a time. The total accuracy was 71% when using both fwf and spatial variables, 60% when using only spatial variables, and 53% when using discrete return data. The improvement was greatest for discriminating pine and spruce as well as pine and birch.
机译:可以从密集的机载激光扫描(ALS)数据中描绘出单个树冠,并且可以根据空间分布以及从每个树冠中的ALS数据得出的其他变量对它们的种类进行分类。这项研究报告了一种新的聚类方法,该方法基于椭圆树冠模型(即椭圆聚类)在三个维度(3-D)中描绘树冠。这种方法的一个重要特征是旨在获得有关地下植被的信息。根据从全波形(fwf)ALS数据以及具有第一个和最后一个返回的离散返回ALS数据得出的回波来描绘树冠。椭球聚类导致树冠识别的改进。 Fwf ALS数据提供了除每个回波的3-D坐标外还可以得出回波宽度和幅度的可能性。在这项研究中,从描述fwf(即回波幅度,回波宽度和每个脉冲回波总数的均值和标准偏差)和松树,云杉,桦树丛的空间分布的变量对树种进行分类。 ,橡树,al木和其他树种。对68个田地进行了监督分类,一次对一个田地进行了留一法交叉验证。当同时使用fwf和空间变量时,总精度为71%,仅使用空间变量时为60%,而使用离散返回数据时为53%。对于区分松树和云杉以及松树和桦树,这种改进是最大的。

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