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首页> 外文期刊>GIScience & remote sensing >Forest structural diversity characterization in Mediterranean landscapes affected by fires using Airborne Laser Scanning data
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Forest structural diversity characterization in Mediterranean landscapes affected by fires using Airborne Laser Scanning data

机译:森林结构多样性表征地中海景观,受飞机激光扫描数据影响的火灾影响

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摘要

Forest fires can change forest structure and composition, and low-density Airborne Laser Scanning (ALS) can be a valuable tool for evaluating post-fire vegetation response. The aim of this study is to analyze the structural diversity differences in Mediterranean Pinus halepensis Mill. forests affected by wildfires on different dates from 1986 to 2009. Several types of ALS metrics, such as the Light Detection and Ranging (LiDAR) Height Diversity Index (LHDI), the LiDAR Height Evenness Index (LHEI), and vertical and horizontal continuity of vegetation, as well as topographic metrics, were obtained in raster format from low point density data. In order to map burned and unburned areas, differentiate fire occurrence dates, and distinguish between old and more recent fires, a sample of pixels was previously selected to assess the existence of differences in forest structure using the Kruskal-Wallis test. Then, k-nearest neighbors algorithm (k-NN), support vector machine (SVM) and random forest (RF) classifiers were compared to select the most accurate technique. The results showed that, in more recent fires, around 70% of the laser returns came from grass and shrub layers, yielding low LHDI and LHEI values (0.37-0.65 and 0.28-0.46, respectively). In contrast, the areas burned more than 20 years ago had higher LHDI and LHEI values due to the growth of the shrub and tree strata. The classification of burned and unburned areas yielded an overall accuracy of 89.64% using the RF method. SVM was the best classifier for identifying the structural differences between fires occurring on different dates, with an overall accuracy of 68.79%. Furthermore, SVM yielded an overall accuracy of 75.49% for the classification between old and more recent fires.
机译:森林火灾可以改变森林结构和组成,低密度空气扫描(ALS)可以是评估火灾后植被反应的有价值的工具。本研究的目的是分析地中海哈普萨斯斯厂的结构分集差异。由1986年至2009年不同日期受野火影响的森林。若干类型的ALS指标,例如光检测和测距(LIDAR)高度分集指数(LHDI),LIDAR高度均匀指数(LHEI)以及垂直和水平连续性从低点密度数据中以光栅格式获得植被以及地形指标。为了将烧毁和未燃烧的区域映射,区分火灾发生日期,并区分旧的和最近的火灾,先前选择了像素样本以评估使用Kruskal-Wallis测试的森林结构差异存在。然后,比较K-Collect邻居算法(K-NN),支持向量机(SVM)和随机林(RF)分类器,以选择最准确的技术。结果表明,在最近的火灾中,大约70%的激光返回来自草和灌木层,产生低LHDI和LHEI值(分别为0.37-0.65和0.28-0.46)。相比之下,20多年前的地区由于灌木和树木的生长而燃烧了20多年前的LHDI和LHEI值。使用RF方法,燃烧和未燃烧区域的分类总体准确性为89.64%。 SVM是用于识别不同日期发生的火灾之间的结构差异的最佳分级器,整体准确性为68.79%。此外,SVM在旧的近期火灾之间的分类,总体准确性为75.49%。

著录项

  • 来源
    《GIScience & remote sensing 》 |2020年第4期| 497-509| 共13页
  • 作者单位

    Univ Lleida Dept Agr & Forest Engn Lleida Catalonia Spain|Univ Lleida Interdept Res Grp Grp GAMES Lleida Catalonia Spain|Joint Res Unit AGROTECNIO CTFC Interdept Res Grp Lleida Catalonia Spain;

    Univ Zaragoza Dept Geog GEOFOREST IUCA Zaragoza Spain;

    Univ Zaragoza Dept Geog GEOFOREST IUCA Zaragoza Spain|Acad Gen Mil Ctr Univ Def Zaragoza Zaragoza Spain;

    Univ Zaragoza Dept Geog GEOFOREST IUCA Zaragoza Spain|Swiss Fed Inst Forest Snow & Landscape Res WSL Land Change Sci Res Unit Birmensdorf Switzerland;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Forest structure; LIDAR; machine learning; landscape;

    机译:森林结构;激光雷达;机器学习;景观;

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