基于伪特征点的植物树点云配准

Nan Geng, Xu Jiang, Xuemei Feng, Shaojun Hu, Long Yang, Zhiyi Zhang
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引用次数: 0

摘要

由于树木结构复杂、自遮挡严重,对树点云的配准误差较大。提出了一种基于伪特征点的配准算法。该算法包括两个步骤。在初始配准中,我们首先使用伪特征点来快速粗略地调整两个原始点云的位置。然而,伪特征点有时由于噪声的影响不能完全代表原始点云的特征,导致初始配准时得到的配准误差较大,需要使用改进的稀疏迭代最近点算法对两个原始点云进行再次调整。实验表明,该算法既能对无叶树进行配准,也能对有叶树进行配准。与迭代最近邻点配准和稀疏迭代最近邻点配准相比,在相同迭代次数下,该方法的配准误差分别显著降低41.1%和16.8%。该方法还可以对非植物点云进行配准。
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Registration of Botanic Tree Point Cloud Based on Pseudo Feature Point
Registration for tree point cloud presents a high registration error due to the complex structure of trees and serious self-shielding. The paper proposes a registration algorithm based on pseudo feature point. This algorithm includes two steps. In initial registration, we use pseudo feature points to adjust the position of two original point clouds quickly and roughly at first. However, pseudo feature points sometimes can't fully represent the feature of original point cloud owing to the noise, it leads to a high registration error obtained in initial registration, and then need to use the improved sparse iterative closest point algorithm to adjust two original point clouds again. Experiments show that the proposed algorithm can register both non-leafy tree and leafy tree. Compared with iterative closest point registration and sparse iterative closest point registration, the method significantly reduces the registration error by 41.1% and 16.8% respectively under the same number of iterations. The method can also register nonplant point cloud.
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