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PypeTree: A Tool for Reconstructing Tree Perennial Tissues from Point Clouds

机译:PypeTree:一种从点云重建树木多年生组织的工具

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摘要

The reconstruction of trees from point clouds that were acquired with terrestrial LiDAR scanning (TLS) may become a significant breakthrough in the study and modelling of tree development. Here, we develop an efficient method and a tool based on extensive modifications to the skeletal extraction method that was first introduced by Verroust and Lazarus in 2000. PypeTree, a user-friendly and open-source visual modelling environment, incorporates a number of improvements into the original skeletal extraction technique, making it better adapted to tackle the challenge of tree perennial tissue reconstruction. Within PypeTree, we also introduce the idea of using semi-supervised adjustment tools to address methodological challenges that are associated with imperfect point cloud datasets and which further improve reconstruction accuracy. The performance of these automatic and semi-supervised approaches was tested with the help of synthetic models and subsequently validated on real trees. Accuracy of automatic reconstruction greatly varied in terms of axis detection because small (length < 3.5 cm) branches were difficult to detect. However, as small branches account for little in terms of total skeleton length, mean reconstruction error for cumulated skeleton length only reached 5.1% and 1.8% with automatic or semi-supervised reconstruction, respectively. In some cases, using the supervised tools, a perfect reconstruction of the perennial tissue could be achieved.
机译:通过地面LiDAR扫描(TLS)采集的点云重构树木可能成为树木开发研究和建模的重大突破。在这里,我们基于Verroust和Lazarus于2000年首次引入的骨骼提取方法的广泛修改,开发了一种有效的方法和工具。PypeTree是一种用户友好的开放源代码可视化建模环境,在其中进行了许多改进。原始的骨骼提取技术,使其更适合应对树木多年生组织重建的挑战。在PypeTree中,我们还介绍了使用半监督调整工具来解决与不完善的点云数据集相关的方法论难题的想法,并进一步提高了重建精度。这些自动和半监督方法的性能在合成模型的帮助下进行了测试,随后在真实树上进行了验证。由于很难检测到小的(长度<3.5 cm)分支,因此自动重建的精度在轴检测方面大不相同。但是,由于小分支在骨架总长度中所占的比例很小,因此在自动或半监督重建下,累计骨架长度的平均重构误差分别仅为5.1%和1.8%。在某些情况下,使用监督工具,可以实现多年生组织的完美重建。

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