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LiDAR waveform features for tree species classification and their sensitivity to tree- and acquisition related parameters

机译:用于树种分类的LiDAR波形特征及其对树木和采集相关参数的敏感性

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This study looked to investigate the basic properties and species classification performance of waveform (WF) features in LiDAR data for the main tree species in Finland. We conducted experimental research using four LiDAR datasets and individual Scots pine, Norway spruce, and silver/downy birch trees. The classification performance and the importance of features were evaluated for dominant/co-dominant trees (N = 9930), and compared to a subset of trees (N = 3630) that had well separable crowns. We used data obtained from two discrete-return (DR) Leica ALS60 sensors, in which the first echo triggers the recording of a WF sequence. Using experience with simulated WF data, we defined a set of informative and technically simple WF features. Quadratic discriminant analysis was applied to classify tree species and also to discover the most important WF features. The WF features outperformed the DR intensity data (0.57-0.75 vs. 0.74-0.86 in Cohen's kappa). The total backscattered energy (E) of single returning WF sequences was the most important feature. Early summer data outperformed late summer data, and we observed differences in the noise characteristics of individual sensors. We performed analyses of the best-performing mean WF features, using linear mixed-effects modeling. The non-quantified variation in tree structure explained 13-65% of within-species feature variance, while dataset-species interaction (i.e. the dependence of species effect on LiDAR dataset), tree height, age, site type, and scan zenith angle accounted for only 2-25%. The residual variance of each feature was 13-84% and depended on the number of pulses. This dependence was weakest for E, implying good performance at low pulse densities. Further analysis showed how intra-species variations in crown and branch morphology and vigor were logically linked with WF features. We conclude that improvements in species classification may be obtained by a stratification according to tree height and by acquiring data during early summer. The inherent between-tree and within-species variation in geometric-optical properties sets an upper limit for classification performance. (C) 2015 Elsevier Inc. All rights reserved.
机译:本研究旨在调查芬兰主要树木的LiDAR数据中波形(WF)特征的基本特性和物种分类性能。我们使用四个LiDAR数据集和单独的苏格兰松树,挪威云杉和白桦/霜降桦树进行了实验研究。评估了优势/共同优势树(N = 9930)的分类性能和特征的重要性,并将其与具有很好可分离树冠的树子集(N = 3630)进行了比较。我们使用了从两个离散回波(DR)Leica ALS60传感器获得的数据,其中第一回波触发了WF序列的记录。利用模拟的WF数据的经验,我们定义了一组信息丰富且技术上简单的WF功能。二次判别分析用于对树种进行分类,并发现最重要的WF特征。 WF功能胜过DR强度数据(在科恩kappa中为0.57-0.75对0.74-0.86)。最重要的特征是单个返回的WF序列的总反向散射能量(E)。夏初的数据优于夏末的数据,我们观察到了各个传感器的噪声特性差异。我们使用线性混合效应模型对性能最佳的平均WF特征进行了分析。树结构的非量化变化解释了物种内特征变异的13-65%,而数据集与物种之间的相互作用(即物种对LiDAR数据集的依赖性),树高,年龄,站点类型和扫描天顶角占了仅占2-25%。每个特征的剩余方差为13-84%,并取决于脉冲数。对于E,这种依赖性最弱,这意味着在低脉冲密度下性能良好。进一步的分析表明,树冠和分支形态和活力的种内变化如何与WF特征在逻辑上联系在一起。我们得出结论,可以通过根据树的高度进行分层并在初夏期间获取数据来获得物种分类的改进。固有的树间和种内几何光学特性变化为分类性能设定了上限。 (C)2015 Elsevier Inc.保留所有权利。

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