Artificial Intelligence and Terrestrial Point Clouds for Forest Monitoring

IF 9 1区 农林科学 Q1 FORESTRY Current Forestry Reports Pub Date : 2024-12-27 DOI:10.1007/s40725-024-00234-4
Maksymilian Kulicki, Carlos Cabo, Tomasz Trzciński, Janusz Będkowski, Krzysztof Stereńczak
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Abstract

Purpose of Review

This paper provides an overview of integrating artificial intelligence (AI), particularly deep learning (DL), with ground-based LiDAR point clouds for forest monitoring. It identifies trends, highlights advancements, and discusses future directions for AI-supported forest monitoring.

Recent Findings

Recent studies indicate that DL models significantly outperform traditional machine learning methods in forest inventory tasks using terrestrial LiDAR data. Key advancements have been made in areas such as semantic segmentation, which involves labeling points corresponding to different vegetation structures (e.g., leaves, branches, stems), individual tree segmentation, and species classification. Main challenges include a lack of standardized evaluation metrics, limited code and data sharing, and reproducibility issues. A critical issue is the need for extensive reference data, which hinders the development and evaluation of robust AI models. Solutions such as the creation of large-scale benchmark datasets and the use of synthetic data generation are proposed to address these challenges. Promising AI paradigms like Graph Neural Networks, semi-supervised learning, self-supervised learning, and generative modeling have shown potential but are not yet fully explored in forestry applications.

Summary

The review underscores the transformative role of AI, particularly DL, in enhancing the accuracy and efficiency of forest monitoring using ground-based 3D point clouds. To advance the field, there is a critical need for comprehensive benchmark datasets, open-access policies for data and code, and the exploration of novel DL architectures and learning paradigms. These steps are essential for improving research reproducibility, facilitating comparative studies, and unlocking new insights into forest management and conservation.

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用于森林监测的人工智能和地面点云
本文概述了将人工智能(AI),特别是深度学习(DL)与地面激光雷达点云集成用于森林监测的研究进展。它确定了趋势,突出了进展,并讨论了人工智能支持的森林监测的未来方向。最近的研究表明,在使用地面激光雷达数据的森林清查任务中,深度学习模型明显优于传统的机器学习方法。在语义分割方面取得了重要进展,语义分割涉及到与不同植被结构(如叶、枝、茎)相对应的标记点,单个树分割和物种分类。主要的挑战包括缺乏标准化的评估指标,有限的代码和数据共享,以及可再现性问题。一个关键的问题是需要广泛的参考数据,这阻碍了健壮的人工智能模型的开发和评估。提出了诸如创建大规模基准数据集和使用合成数据生成等解决方案来应对这些挑战。有前途的人工智能范式,如图神经网络、半监督学习、自监督学习和生成建模,在林业应用中已经显示出潜力,但尚未得到充分的探索。综述强调了人工智能,特别是深度学习在提高利用地面三维点云进行森林监测的准确性和效率方面的变革性作用。为了推进该领域的发展,迫切需要全面的基准数据集、数据和代码的开放访问政策,以及探索新的深度学习架构和学习范式。这些步骤对于提高研究的可重复性、促进比较研究以及发掘森林管理和保护的新见解至关重要。
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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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