Multi-level self-adaptive individual tree detection for coniferous forest using airborne LiDAR

光栅图形 激光雷达 树(集合论) 点(几何) 计算机科学 点云 牙冠(牙科) 激光扫描 遥感 地理 人工智能 数学 医学 光学 物理 数学分析 牙科 激光器 几何学
作者
Zhenyang Hui,Penggen Cheng,Bisheng Yang,Guoqing Zhou
出处
期刊:International journal of applied earth observation and geoinformation 卷期号:114: 103028-103028 被引量:24
标识
DOI:10.1016/j.jag.2022.103028
摘要

To obtain satisfying results of individual tree detection from LiDAR points, parameters using traditional methods usually need to be adjusted by trials and errors. When encountering complex forest environments, the detection accuracy cannot be satisfied. To resolve this, a multi-level self-adaptive individual tree detection method was presented in this paper. The proposed method can be seen as a hybrid model, which combined the strength of both raster-based and point-based methods. Raster-based strategy was first used for achieving initial trees detection results, while the point-based strategy was adopted for optimizing the clustered trees. In the proposed method, crown width scales were estimated automatically. Meanwhile, multi-scales segmented results were fused together to take advantage of segmented results of both larger and small scales. Six different coniferous forests were adopted for testing. Experimental result shows that this study achieved the lowest omission and commission errors comparing with other three classical approaches. Meanwhile, the average F1 score in this paper is 0.84, which is much highest out of other methods.

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