使用近距离机载激光扫描评估自主移动系统的森林可穿越性

IF 2.7 2区 农林科学 Q1 FORESTRY Croatian Journal of Forest Engineering Pub Date : 2023-11-10 DOI:10.5552/crojfe.2024.2229
Tuomas Yrttimaa, Shigemichi Matsuzaki, Ville Kankare, Samuli Junttila, Ninni Saarinen, Antero Kukko, Juha Hyyppä, Jun Miura, Mikko Vastaranta
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引用次数: 0

摘要

传感器技术和计算性能的进步将我们带入了一个数字森林时代,森林环境可以被数字复制。与此同时,在森林测绘和作业中使用无人驾驶车辆和其他自主移动系统(ams)的兴趣日益增加。然而,对于ams来说,森林是一个非结构化且相当复杂的环境,通常需要某种关于可遍历性的先验信息。本研究的目的是利用高密度机载激光扫描(ALS)点云来评估ams的森林穿越能力。假设这样的点云从一架直升机在低空飞行获得可用于描述植被影响森林traversability障碍。基于体素的植被占用分析,检测开放空间,定义可穿越的三维空间。实验设置包括七个样地(32×32 m),代表不同的北方森林结构。利用地面激光扫描(TLS)获取植被占用参考资料。ALS与TLS的比较表明,基于ALS的基于森林结构的植被占用体素分类的总体准确率为0.85-0.94,召回率为0.78-0.91,精度为0.62-0.74。这意味着基于TLS分配的分类“占用”体素中有91%可以使用ALS正确分类,而使用ALS分配的分类“占用”体素中有74%是基于TLS被占用的。低植被密度占准确度和精度变化的83%。并论证了利用植被占用信息进行导航的可行性。假定ALS数据与TLS数据一样,都是AMS路径规划的充分信息。实验表明,在基于ALS检测到的空白空间随机生成的1393条路径中,使用TLS数据验证后,72%的路径被认为是可行的。不同样地的路径规划成功率在0.54 ~ 0.92之间,植被密度对路径规划成功率的影响较大,占路径规划成功率变异的53%。总之,利用遥感预先确定森林可穿越性的可能性将支持在林业中使用自动监测系统。
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Assessing Forest Traversability for Autonomous Mobile Systems Using Close-Range Airborne Laser Scanning
Advances in sensor technology and computing performance has brought us into an era of digital forestry where a forest environment can be digitally replicated. At the same time, an increasing interest in the use of unmanned vehicles and other autonomous mobile systems (AMSs) in forest mapping and operations has emerged. However, a forest is an unstructured and rather complex environment for AMSs to operate in, and usually some kind of a priori information of traversability is required. The aim of this study was to assess forest traversability for AMSs using high-density airborne laser scanning (ALS) point clouds. It was assumed that such point clouds acquired from a helicopter flying at a low altitude can be used to characterise vegetation obstacles affecting forest traversability. A voxel-based vegetation occupancy analysis was carried out with the aim to detect open space to define traversable three-dimensional space. The experimental setup included seven sample plots (32×32 m) representing diverse boreal forest structures. Terrestrial laser scanning (TLS) was used for obtaining reference for vegetation occupancy. Comparison between ALS and TLS revealed an overall accuracy of 0.85–0.94 with a recall of 0.78–0.91 and a precision of 0.62–0.74 for ALS-based voxel classification for vegetation occupancy depending on forest structure. This implies that up to 91% of voxels assigned a classification »occupied« based on the TLS could be correctly classified using the ALS, while up to 74% of voxels assigned a classification »occupied« using the ALS were occupied based on the TLS. Density of low vegetation accounted for 83% of the variation in accuracy and precision. The feasibility of vegetation occupancy information to be used by an AMS for navigation was also demonstrated. It was assumed that the ALS data convey as sufficient information of AMS path planning as does the TLS data. The experiments showed that out of 1393 randomly generated paths based on empty space detected by the ALS, 72% were considered feasible when validated with the TLS data. The success rate in path planning varied from 0.54 to 0.92 between the sample plots and was seemingly affected by vegetation density that accounted for 53% of variation in success rate. Altogether, the demonstrated possibility to predefine forest traversability using remote sensing will support the use of AMSs in forestry.
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来源期刊
CiteScore
5.20
自引率
12.50%
发文量
23
审稿时长
>12 weeks
期刊介绍: Croatian Journal of Forest Engineering (CROJFE) is a refereed journal distributed internationally, publishing original research articles concerning forest engineering, both theoretical and empirical. The journal covers all aspects of forest engineering research, ranging from basic to applied subjects. In addition to research articles, preliminary research notes and subject reviews are published. Journal Subjects and Fields: -Harvesting systems and technologies- Forest biomass and carbon sequestration- Forest road network planning, management and construction- System organization and forest operations- IT technologies and remote sensing- Engineering in urban forestry- Vehicle/machine design and evaluation- Modelling and sustainable management- Eco-efficient technologies in forestry- Ergonomics and work safety
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