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首页> 外文期刊>International journal of remote sensing >Tree crown segmentation and species classification in a wet eucalypt forest from airborne hyperspectral and LiDAR data
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Tree crown segmentation and species classification in a wet eucalypt forest from airborne hyperspectral and LiDAR data

机译:从机载高光谱和激光雷达数据的湿桉树林中树冠分割和物种分类

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摘要

To sustainably manage forest biodiversity and monitor changes in species patterning, mapping the spatial distribution of tree species is indispensable. Remote sensing can provide powerful tools for mapping species, but this task is complex in areas with high plant diversity and multi-layered canopies. This paper addresses the issue of classifying wet eucalypt forest plants by examining tree crown segmentation and species classification using different combinations of remote sensing datasets against mapped tree locations. This study explores optimal segmentation parameters for tree crown delineation compared to manually digitized tree crowns. The best segmentation accuracy of 88.71%, resulted from segmenting a combined Minimum Noise Fraction (MNF) dataset derived from hyperspectral imagery (HSI) and a LiDAR-derived Canopy Height Model (CHM). Object-based classification of tree species was performed using a random forest classifier. The fused dataset of MNF and CHM produced the highest overall accuracy of 78.26% for four vegetation classes, while the fused HSI, indices, and CHM performed best (66.67%) with five vegetation classes. However, both approaches had a high overall performance. The CHM contributed to tree crown segmentation and species classification accuracy, and fused datasets were more robust to spatially discriminate wet eucalypt forest species compared to a single dataset. Eucalyptus obliqua was classified with the highest accuracy of 90.86% for four classes using the fused MNF and CHM dataset, and 86.11% for five classes using the fused HSI, indices, and CHM dataset. An important understorey species - the tree fern (Dicksonia antarctica) - was classified with the highest accuracy of 83.54% for four classes using HSI. Therefore, fusing hyperspectral and LiDAR data could classify both the overstorey and dominant understorey species, and thus play a crucial role in identifying forest biological diversity. This approach will be useful for forest managers and ecologists to plan sustainable management of eucalypt forest biodiversity and produce maps for monitoring species of interest.
机译:为了可持续地管理森林生物多样性和监测物种图案化的变化,绘制树种的空间分布是必不可少的。遥感可以为映射物种提供强大的工具,但此任务在具有高植物多样性和多层檐篷的地区是复杂的。本文通过对映射树位置的不同组合检查树冠分割和物种分类来解决湿桉树林工厂进行分类的问题。本研究探讨了与手动数字化树冠相比的树冠划分的最佳分割参数。最佳分割精度为88.71%,由分割从高光谱图像(HSI)和激光雷达衍生的冠层高度模型(CHM)导出的组合的最小噪声分数(MNF)数据集。使用随机林分类器进行基于对象的树种分类。 MNF和CHM的融合数据集为四个植被类的总体精度为78.26%,而融合的HSI,指数和CHM最佳(66.67%),具有五个植被课程。但是,两种方法都具有很高的整体性能。 CHM有助于树冠分割和物种分类准确性,与单个数据集相比,融合数据集比空间区分湿桉树林种更加强大。使用熔融MNF和CHM数据集的四个类别,桉树倾斜度的最高精度为90.86%,以及使用熔融的HSI,索引和CHM数据集的五类的86.11%。一个重要的虚拟物种 - 树蕨(Dicksonia Antarctica) - 使用HSI的四个类别的最高精度为83.54%。因此,融合高光谱和激光雷达数据可以分类过度和占优势和显着的人物,因此在识别森林生物多样性方面发挥着至关重要的作用。这种方法对于森林经理和生态学家来说将有助于规划桉树林生物多样性的可持续管理,并为监测兴趣物种进行地图。

著录项

  • 来源
    《International journal of remote sensing》 |2021年第20期|7952-7977|共26页
  • 作者单位

    Univ Tasmania Sch Geog Planning & Spatial Sci Private Bag 76 Hobart Tas 7001 Australia;

    Univ Tasmania Sch Geog Planning & Spatial Sci Private Bag 76 Hobart Tas 7001 Australia;

    Univ Tasmania Sch Nat Sci Biol Sci Hobart Tas Australia|Univ Tasmania ARC Ctr Forest Value Hobart Tas Australia;

    Univ Tasmania Sch Nat Sci Biol Sci Hobart Tas Australia;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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