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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Wood and leaf separation from terrestrial LiDAR point clouds based on mode points evolution
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Wood and leaf separation from terrestrial LiDAR point clouds based on mode points evolution

机译:基于模式点进化的地面激光雷达云的木头和叶子分离

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摘要

To improve the accuracy of wood and leaf points classification for individual tree, this paper proposed a separation method based on mode points evolution from terrestrial LiDAR point clouds. In the proposed method, the Mean Shift method was used to first acquire the mode points, which were then adopted as nodes to build a network graph for the individual tree. By path retracing and calculating the visiting frequency of each node, the wood seed nodes were detected. To obtain more wood nodes, the wood seed nodes were evolved based on three constraints, namely the shortest path length of the evolved nodes to the base node should be smaller, the evolved nodes should not belong to the leaf nodes that have been detected by path retracing and the verticality of the evolved nodes should be similar as the wood seed nodes. After wood nodes evolution, the segments corresponding to each wood seed node were merged together to obtain the final wood points. The proposed method has been evaluated using nine tree samples with seven different tree species. Experimental results showed that the proposed method can achieve an average wood and leaf classification accuracy of 0.892. The average F1 score for wood was 0.871, while the average F1 score for leaf was 0.900. Compared to two other famous wood and leaf classification methods, the proposed method can achieve better classification results.
机译:为了提高个别树的木材和叶点分类的准确性,本文提出了一种基于模式点进化的分离方法,从地面激光雷达云覆盖。在所提出的方法中,使用平均移位方法首先获取模式点,然后采用它们作为节点以构建单个树的网络图。通过路径回向和计算每个节点的访问频率,检测到木种子节点。为了获得更多木节点,基于三个约束,木种子节点进化,即进化节点到基本节点的最短路径长度应该较小,所以进化的节点不应属于通过路径检测到的叶节点回撤和进化节点的垂直度应该与木种子节点相似。在木节点进化之后,将对应于每个木种子节点的区段合并在一起以获得最终的木点。已经使用九种树样本评估了所提出的方法,具有七种不同的树种。实验结果表明,该方法可以实现0.892的平均木材和叶片分类精度。木材平均F1分数为0.871,而叶片的平均F1分数为0.900。与另外两种着名的木材和叶片分类方法相比,所提出的方法可以实现更好的分类结果。

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