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3D Tree Dimensionality Assessment Using Photogrammetry and Small Unmanned Aerial Vehicles

机译:使用摄影测量技术和小型无人机进行3D树尺寸评估

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摘要

Detailed, precise, three-dimensional (3D) representations of individual trees are a prerequisite for an accurate assessment of tree competition, growth, and morphological plasticity. Until recently, our ability to measure the dimensionality, spatial arrangement, shape of trees, and shape of tree components with precision has been constrained by technological and logistical limitations and cost. Traditional methods of forest biometrics provide only partial measurements and are labor intensive. Active remote technologies such as LiDAR operated from airborne platforms provide only partial crown reconstructions. The use of terrestrial LiDAR is laborious, has portability limitations and high cost. In this work we capitalized on recent improvements in the capabilities and availability of small unmanned aerial vehicles (UAVs), light and inexpensive cameras, and developed an affordable method for obtaining precise and comprehensive 3D models of trees and small groups of trees. The method employs slow-moving UAVs that acquire images along predefined trajectories near and around targeted trees, and computer vision-based approaches that process the images to obtain detailed tree reconstructions. After we confirmed the potential of the methodology via simulation we evaluated several UAV platforms, strategies for image acquisition, and image processing algorithms. We present an original, step-by-step workflow which utilizes open source programs and original software. We anticipate that future development and applications of our method will improve our understanding of forest self-organization emerging from the competition among trees, and will lead to a refined generation of individual-tree-based forest models.
机译:单个树木的详细,精确的三维(3D)表示形式是准确评估树木竞争,生长和形态可塑性的先决条件。直到最近,我们测量尺寸,空间排列,树木形状和树木组件形状的能力仍然受到技术和物流限制以及成本的限制。传统的森林生物特征识别方法仅提供部分测量结果,且劳动强度大。从机载平台操作的有源远程技术(例如LiDAR)仅提供部分冠冠重建。地面激光雷达的使用费力,具有便携性限制和高成本。在这项工作中,我们利用了小型无人飞行器(UAV),轻型和廉价相机的功能和可用性方面的最新改进,并开发了一种经济实惠的方法来获取树木和少量树木的精确而全面的3D模型。该方法采用缓慢移动的无人机,该无人机沿目标树附近和周围的预定轨迹获取图像,并使用基于计算机视觉的方法来处理图像以获得详细的树重构。在通过仿真确认了该方法的潜力之后,我们评估了几种无人机平台,图像获取策略和图像处理算法。我们提出了一个原始的,循序渐进的工作流程,该流程利用了开源程序和原始软件。我们预计,该方法的未来发展和应用将增进我们对由于树木竞争而出现的森林自组织的理解,并将促成基于个体树木的森林模型的精细生成。

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