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Estimating Changes in Forest Attributes and Enhancing Growth Projections: a Review of Existing Approaches and Future Directions Using Airborne 3D Point Cloud Data

机译:估算森林属性的变化和增强增长预测:使用空机3D点云数据审查现有方法和未来方向

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摘要

Purpose of Review The increasing availability of three-dimensional point clouds, including both airborne laser scanning and digital aerial photogrammetry, allow for the derivation of forest inventory information with a high level of attribute accuracy and spatial detail. When available at two points in time, point cloud datasets offer a rich source of information for detailed analysis of change in forest structure. Recent Findings Existing research across a broad range of forest types has demonstrated that those analyses can be performed using different approaches, levels of detail, or source data. By reviewing the relevant findings, we highlight the potential that bi- and multi-temporal point clouds have for enhanced analysis of forest growth. We divide the existing approaches into two broad categories- - approaches that focus on estimating change based on predictions of two or more forest inventory attributes over time, and approaches for forecasting forest inventory attributes. We describe how point clouds acquired at two or more points in time can be used for both categories of analysis by comparing input airborne datasets, before discussing the methods that were used, and resulting accuracies. To conclude, we outline outstanding research gaps that require further investigation, including the need for an improved understanding of which three-dimensional datasets can be applied using certain methods. We also discuss the likely implications of these datasets on the expected outcomes, improvements in tree-to-tree matching and analysis, integration with growth simulators, and ultimately, the development of growth models driven entirely with point cloud data.
机译:None

著录项

  • 来源
    《Current Forestry Reports》 |2021年第1期|共24页
  • 作者单位

    Univ British Columbia Dept Forest Resources Management Integrated Remote Sensing Studio 2424 Main Mall Vancouver BC V6T 1Z4 Canada;

    Univ British Columbia Dept Forest Resources Management Integrated Remote Sensing Studio 2424 Main Mall Vancouver BC V6T 1Z4 Canada;

    Nat Resources Canada Canadian Forest Serv Pacificorestry Ctr 506 West Burnside Rd Victoria BC V8Z 1M5 Canada;

    Univ British Columbia Dept Forest Resources Management Integrated Remote Sensing Studio 2424 Main Mall Vancouver BC V6T 1Z4 Canada;

    New Brunswick Dept Nat Resources 1350 Regent St Fredericton NB E3C 2G6 Canada;

    Nat Resources Canada Canadian Forest Serv Pacificorestry Ctr 506 West Burnside Rd Victoria BC V8Z 1M5 Canada;

    Agr Univ Krakow Fac Forestry Dept Forest Resources Management Al 29 Listopada 46 PL-31425 Krakow Poland;

    Ontario Minist Nat Resources &

    Forestry 3301 Trout Lake Rd North Bay ON P1A 4L7 Canada;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 林业;
  • 关键词

    Lidar; ALS; DAP; Site index; Change detection;

    机译:LIDAR;ALS;DAP;网站指数;改变检测;

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