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A Self-Adaptive Mean Shift Tree-Segmentation Method Using UAV LiDAR Data

机译:使用UAV LIDAR数据的自适应均自适应平均移位树分段方法

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摘要

Unmanned aerial vehicles using light detection and ranging (UAV LiDAR) with high spatial resolution have shown great potential in forest applications because they can capture vertical structures of forests. Individual tree segmentation is the foundation of many forest research works and applications. The tradition fixed bandwidth mean shift has been applied to individual tree segmentation and proved to be robust in tree segmentation. However, the fixed bandwidth-based segmentation methods are not suitable for various crown sizes, resulting in omission or commission errors. Therefore, to increase tree-segmentation accuracy, we propose a self-adaptive bandwidth estimation method to estimate the optimal kernel bandwidth automatically without any prior knowledge of crown size. First, from the global maximum point, we divide the three-dimensional (3D) space into a set of angular sectors, for each of which a canopy surface is simulated and the potential tree crown boundaries are identified to estimate average crown width as the kernel bandwidth. Afterwards, we use a mean shift with the automatically estimated kernel bandwidth to extract individual tree points. The method is iteratively implemented within a given area until all trees are segmented. The proposed method was tested on the 7 plots acquired by a Velodyne 16E LiDAR system, including 3 simple plots and 4 complex plots, and 95% and 80% of trees were correctly segmented, respectively. Comparative experiments show that our method contributes to the improvement of both segmentation accuracy and computational efficiency.
机译:使用光检测和高空间分辨率的测距(UAV LIDAR)的无人驾驶飞行器在森林应用中表现出巨大的潜力,因为它们可以捕获森林的垂直结构。单个树分割是许多森林研究工作和应用的基础。传统固定带宽平均转移已经应用于各个树分段,并被证明在树分段中是强大的。然而,固定带宽的分段方法不适合各种冠尺寸,从而导致遗漏或佣金误差。因此,为了提高树分割精度,我们提出了一种自适应带宽估计方法,以自动估计最佳内核带宽,而无需任何先验的冠尺寸知识。首先,从全局最大点,我们将三维(3D)空间划分为一组角度扇区,对于模拟冠层表面并识别潜在的树冠界以估计为内核的平均冠宽度带宽。之后,我们使用平均转换与自动估计的内核带宽提取单个树点。该方法在给定区域内迭代地实现,直到所有树都被分段。在由Velodyne 16E激光雷达系统获得的7个图中测试了所提出的方法,包括3个简单的图和4个复杂的图,分别是95%和80%的树木被正确分割。比较实验表明,我们的方法有助于提高分割精度和计算效率。

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