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LiDAR Individual Tree Detection for Assessing Structurally Diverse Forest Landscapes.

机译:LiDAR个体树木检测,用于评估结构多样的森林景观。

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摘要

Contemporary forest management on public land incorporates a focus on restoration and maintenance of ecological functions through silvicultural manipulation of forest structure on a landscape scale. Incorporating reference conditions into restoration treatment planning and monitoring can improve treatment efficacy, but the typical ground-based methods of quantifying reference condition data---and comparing it to pre- and post-treatment stands---are expensive, time-consuming, and limited in scale. Airborne LiDAR may be part of the solution to this problem, since LiDAR acquisitions have both broad coverage and high resolution. I evaluated the ability of LiDAR Individual Tree Detection (ITD) to describe forest structure across a structurally variable landscape in support of large-scale forest restoration. I installed nineteen 0.25 ha stem map plots across a range of structural conditions in potential reference areas (Yosemite National Park) and potential restoration treatment areas (Sierra National Forest) in the Sierra Nevada of California. I used the plots to evaluate a common ITD algorithm, the watershed transform, compare it to past uses of ITD, and determine which aspects of forest structure contributed to errors in ITD. I found that ITD across this structurally diverse landscape was generally less accurate than across the smaller and less diverse areas over which it has previously been studied. However, the pattern of tree recognition is consistent: regardless of forest structure, canopy dominants are almost always detected and relatively shorter trees are almost never detected. Correspondingly, metrics dominated by large trees, such as biomass, basal area, and spatial heterogeneity, can be measured using ITD, while metrics dominated by smaller trees, such as stand density, cannot. Bearing these limitations in mind, ITD can be a powerful tool for describing forest structure across heterogeneous landscape restoration project areas.
机译:当代在公共土地上的森林管理着重于通过森林造林对景观规模的森林结构的操纵来恢复和维持生态功能。将参考条件纳入恢复治疗计划和监测可以提高治疗效果,但是量化参考条件数据(并将其与治疗前和治疗后支架进行比较)的典型的基于地面的方法昂贵,耗时,并且规模有限。机载LiDAR可能是解决此问题的一部分,因为LiDAR的采购具有广泛的覆盖范围和高分辨率。我评估了LiDAR个体树检测(ITD)在整个结构可变景观中描述森林结构以支持大规模森林恢复的能力。我在加利福尼亚内华达州的潜在参考区域(优胜美地国家公园)和潜在的恢复治疗区域(塞拉利昂国家森林)中安装了19个0.25公顷的茎图,这些图跨越了各种结构条件。我使用这些图来评估通用的ITD算法,分水岭变换,将其与ITD的过去使用进行比较,并确定森林结构的哪些方面导致了ITD中的错误。我发现,在这种结构多样的环境中,ITD的准确性通常不如以前研究过的较小且差异性较小的领域。但是,树木识别的模式是一致的:无论森林结构如何,几乎总是检测到树冠优势,而几乎从未检测到较短的树木。相应地,可以使用ITD来测量以大树为主的指标,例如生物量,基础面积和空间异质性,而以小树为主的指标(例如林分密度)则不能。考虑到这些限制,ITD可以成为描述异构景观恢复项目区域森林结构的强大工具。

著录项

  • 作者

    Jeronimo, Sean.;

  • 作者单位

    University of Washington.;

  • 授予单位 University of Washington.;
  • 学科 Natural resource management.;Forestry.;Remote sensing.
  • 学位 Masters
  • 年度 2015
  • 页码 74 p.
  • 总页数 74
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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