森林点云注册:综述。

Forestry research Pub Date : 2024-05-08 eCollection Date: 2024-01-01 DOI:10.48130/forres-0024-0015
Jincheng Liu, Yijun Guo, Juntao Yang, Ningning Zhu, Wenxia Dai, Qiang Yu
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引用次数: 0

摘要

点云登记是进行精确、大规模森林调查和管理的必要前提。本文重点对过去 20 年来森林点云注册方面的工作进行了系统的概述和总结。论文回顾了森林点云注册方法的发展过程,从早期依赖人工标记,到随后基于特征匹配的自动注册,再到基于深度学习的先进技术。此外,论文还详细讨论了不同点云平台之间的注册问题:地面平台之间、地面平台与航空平台之间以及航空平台之间。此外,论文还深入探讨了森林点云注册领域的主流数据集和评估指标。最后,论文总结了该领域的研究现状,强调了面临的挑战,并提供了未来的研究展望。本综述旨在为研究人员提供对森林点云注册的全面了解,并促进点云技术的发展,希望能对该领域的进一步应用有所启发。
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Forest point cloud registration: a review.

Point cloud registration is a necessary prerequisite for conducting precise, large-scale forest surveys and management. This paper focuses on providing a systematic overview and summary of the work on forest point cloud registration over the past 20 years. The developmental process of forest point cloud registration methods, spanning from the early reliance on manual markers to the subsequent evolution towards automatic registration based on feature matching, and then to the advanced technology based on deep learning were reviewed. Furthermore, the paper offered detailed discussions on the registration between different point cloud platforms: ground platforms, between ground platforms and aerial platforms, and between aerial platforms. Additionally, the paper delved into mainstream datasets and evaluation metrics in the domain of forest point cloud registration. Finally, the paper summarized the current state of research in this area, highlighted challenges, and provided future research outlooks. This review aims to provide researchers with a comprehensive understanding of forest point cloud registration, and to promote the advancement of point cloud technology, hopefully inspiring further applications in the field.

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