基于星爆模式的新型方法,用于在森林环境中配准无人机和地面激光雷达点云

Baokun Feng, Sheng Nie, Cheng Wang, Jinliang Wang, Xiaohuan Xi, Haoyu Wang, Jieying Lao, Xuebo Yang, Dachao Wang, Yiming Chen, Bo Yang
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摘要

无人机光探测与测距(UAV-lidar)和地面激光雷达(T-lidar)数据的准确、高效配准对于森林结构参数提取至关重要。本研究提出了一种基于星爆模式的新方法,用于无人机激光雷达和地面激光雷达数据在森林场景中的自动配准。该方法采用基于密度的带噪声应用空间聚类(DBSCAN)来识别单棵树木,从两个激光雷达源分别构建星芒图案,并利用极坐标旋转和匹配来实现粗配准。利用迭代最邻近点(ICP)算法实现精细配准。实验结果表明,基于星爆图案的方法达到了预期的配准精度(平均粗配准误差为 0.157 米)。值得注意的是,当超过 10 棵树时,所提出的方法对单棵树的检测数量并不敏感,树的位置误差对配准精度的影响也很小。此外,在森林环境下的 T-lidar 和 UAV-lidar 注册中,我们提出的方法优于现有的两种方法。
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A novel method based on a starburst pattern to register UAV and terrestrial lidar point clouds in forest environments
Accurate and efficient registration of unmanned aerial vehicle light detection and ranging (UAV‐lidar) and terrestrial lidar (T‐lidar) data is crucial for forest structure parameter extraction. This study proposes a novel method based on a starburst pattern for the automatic registration of UAV‐lidar and T‐lidar data in forest scenes. It employs density‐based spatial clustering of applications with noise (DBSCAN) for individual tree identification, constructs starburst patterns separately from both lidar sources, and utilises polar coordinate rotation and matching to achieve coarse registration. Fine registration is achieved using the iterative closest point (ICP) algorithm. Experimental results demonstrate that the starburst‐pattern‐based method achieves the desired registration accuracy (average coarse registration error of 0.157 m). Further optimisation with ICP yields slight improvements with an average fine registration error of 0.149 m. Remarkably, the proposed method is insensitive to the individual tree detection number when exceeding 10, and the tree position error has minimal impact on registration accuracy. Furthermore, our proposed method outperforms two existing methods in T‐lidar and UAV‐lidar registration over forest environments.
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