从点云描述树枝特征:全面回顾

IF 9 1区 农林科学 Q1 FORESTRY
Robin J. L. Hartley, Sadeepa Jayathunga, Justin Morgenroth, Grant D. Pearse
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引用次数: 0

摘要

综述目的自 20 世纪 90 年代末以来,研究人员越来越多地利用数字化方法来评估树木的枝干结构。在此期间,商用地面激光扫描仪的出现催生了一个以点云研究为重点的全新领域。多年来,该领域已从一门复杂的计算学科转变为一种有效支持研究工作的实用工具。虽然地面激光扫描一直是该研究领域的主流方法,但移动激光扫描仪和无人机的使用日益增多,表明该领域正在向移动平台过渡。定量结构建模(QSM)在推动这一领域的发展方面发挥了关键作用,增强了不同领域的分支表征能力。在过去的五年中,二维和三维深度学习技术作为替代技术的应用日益广泛。 摘要 本文全面综述了数字树枝特征描述领域约 25 年的研究成果,回顾了数据采集技术和分析方法,以及这些技术所应用的森林类型和树种。报告探讨了这一充满活力的研究领域的当前趋势、研究差距以及该领域仍然存在的一些关键挑战。在本综述中,我们特别强调了通过利用移动技术(如移动激光扫描仪和无人驾驶飞行器)解决与遮挡相关的重大挑战的可能性。我们强调需要一种更具凝聚力的方法来评估点云质量和衍生结构模型的准确性,以及可用于测试新算法和现有算法的基准数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Tree Branch Characterisation from Point Clouds: a Comprehensive Review

Tree Branch Characterisation from Point Clouds: a Comprehensive Review

Purpose of Review

Since the late 1990s, researchers have been increasingly utilising digital methodologies to assess the branch structure of trees. The emergence of commercial terrestrial laser scanners during this period catalysed an entirely new domain focused on point cloud-based research. Over the years, this field has transformed from a complex computational discipline into a practical tool that effectively supports research endeavours. Through the combined use of non-destructive remote sensing techniques and advanced analytical methods, branch characterisation can now be carried out at an unprecedented level.

Recent Findings

While terrestrial laser scanning has traditionally been the dominant methodology for this research domain, the increased use of mobile laser scanners and unmanned aerial vehicles indicates a transition towards more mobile platforms. Quantitative structural modelling (QSM) has been pivotal in advancing this field, enhancing branch characterisation capabilities across diverse fields. The past five years have seen increased uptake of 2D and 3D deep learning techniques as alternatives.

Summary

This article presents a comprehensive synthesis of approximately 25 years of research in the field of digital branch characterisation, reviewing the data capture technologies and analytical methods, along with the forest types and tree species to which these technologies have been applied. It explores the current trends in this dynamic field of research, research gaps and some of the key challenges that remain within this field. In this review, we placed particular emphasis on the potential resolution of the significant challenge associated with occlusion through the utilisation of mobile technologies, such as mobile laser scanners and unmanned aerial vehicles. We highlight the need for a more cohesive method for assessing point cloud quality and derived structural model accuracy, and benchmarking data sets that can be used to test new and existing algorithms.

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来源期刊
Current Forestry Reports
Current Forestry Reports Agricultural and Biological Sciences-Ecology, Evolution, Behavior and Systematics
CiteScore
15.90
自引率
2.10%
发文量
22
期刊介绍: Current Forestry Reports features in-depth review articles written by global experts on significant advancements in forestry. Its goal is to provide clear, insightful, and balanced contributions that highlight and summarize important topics for forestry researchers and managers. To achieve this, the journal appoints international authorities as Section Editors in various key subject areas like physiological processes, tree genetics, forest management, remote sensing, and wood structure and function. These Section Editors select topics for which leading experts contribute comprehensive review articles that focus on new developments and recently published papers of great importance. Moreover, an international Editorial Board evaluates the yearly table of contents, suggests articles of special interest to their specific country or region, and ensures that the topics are up-to-date and include emerging research.
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