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机载LIDAR数据的树高识别算法与应用分析
引用本文:王轶夫,岳天祥,赵明伟,杜正平,刘向锋,刘爽,宋二非,孙文正,张彦丽.机载LIDAR数据的树高识别算法与应用分析[J].地球信息科学,2014(6):958-964.
作者姓名:王轶夫  岳天祥  赵明伟  杜正平  刘向锋  刘爽  宋二非  孙文正  张彦丽
作者单位:1. 中国科学院地理科学与资源研究所资源与环境信息系统国家重点实验室,北京100101; 中国科学院大学,北京100049
2. 中国科学院地理科学与资源研究所资源与环境信息系统国家重点实验室,北京,100101
3. 同济大学测绘与地理信息学院,上海,200092
4. 西北师范大学地理与环境科学学院,兰州,730070
基金项目:国家自然科学基金重点项目(91325204);国家高技术研究发展计划项目(2013AA122003);科技基础性工作专项(2013FY111600-4)。
摘    要:利用机载激光雷达数据提取天然次生林的树高,旨在探索影响树高提取精度的主要因素。首先,采用高精度曲面建模平差算法(Adjustment Computation of High-accuracy Surface Modeling,HASM-AD)生成研究区不同空间分辨率的数字高程模型(Digital Elevation Model,DEM)、数字地表模型(Digital Surface Model,DSM)和冠层高度模型(Canopy Height Model,CHM);其次,用树顶点识别算法提取林木树高,设置不同树高识别范围,对比分析不同CHM分辨率和不同树高识别范围对树高提取精度的影响;最后,以天涝池流域30个实测样地数据为样本,对提取精度进行检验。结果显示:提取的样地平均树高与实测值具有明显线性相关关系,线性回归系数为0.694;树高识别范围是影响树高提取精度的重要因素,CHM分辨率对其影响较小。研究表明,采用高采样密度的雷达点云数据、正确选择CHM生成方法和改进树顶点识别算法是提高天然次生林树高提取精度的有效途径。

关 键 词:机载激光雷达  树高  天涝池  天然次生林

Study of Factors Impacting the Tree Height Extraction Based on Airborne LIDAR Data
WANG Yifu,YUE Tianxiang,ZHAO Mingwei,DU Zhengping,LIU Xiangfeng,LIU Shuang,SONG Erfei,SUN Wenzheng,ZHANG Yanli.Study of Factors Impacting the Tree Height Extraction Based on Airborne LIDAR Data[J].Geo-information Science,2014(6):958-964.
Authors:WANG Yifu  YUE Tianxiang  ZHAO Mingwei  DU Zhengping  LIU Xiangfeng  LIU Shuang  SONG Erfei  SUN Wenzheng  ZHANG Yanli
Institution:WANG Yifu, YUE Tianxiang, ZHAO Mingwei, DU Zhengping, LIU Xiangfeng, LIU Shuang, SONG Erfei, SUN Wenzheng, ZHANG Yanli (1. State Key Laboratory of Resources and Environment Information System, Institute of Geographic Sciences and Natural Resources Research, CAS, Beijing 100101, China; 2. University of Chinese Academy of Sciences, Beijing 100049, China; 3. College of Surveying and Geo-Informatics, Tongji University, Shanghai 200092, China; 4. College of Geography and Environment Science, Northwest Normal University, Lanzhou 730070, China)
Abstract:The purpose of this study is to evaluate the accuracy of extracting average height of natural secondary forest using airborne LIDAR data and to explore the problems that accompany. The DSMs and DEMs with differ-entspatial resolutions were simulated, by applying HASM-AD algorithm. DSM minus DEM gives CHM, and the tree heights were extracted from CHM. We applied tree vertex recognition algorithm with different recognition scopes. Using 30 measured plot data for verification, we tried to express how CHM spatial revolutionand recog-nition scope could affect tree height extraction accuracy. Firstly, we produced the 0.5 m resolution of CHM and gave 3 trials with setting the recognition scope radius as 0.5 m, 1.0 m and 1.5 m consecutively. The contrast be-tween the results showed that the number of tree vertices extracted was the largest when the recognition scope ra-dius was set as 0.5 m. The algorithm??s ability to recognize tree vertex decreases as recognition scope radius in-creases. Then, we set the recognition scope radius as 0.5 m unchanged and gave 3 trials in which we extracted tree vertex from different CHM with 3 different resolutions (0.1 m, 0.25 m, 0.5 m). The results showed that the number of tree vertices extracted in 3 trials were close. In other words, the recognition scope radius could hardly influence tree vertex extraction. Finally, we compared the average value of the extracted tree heights in each plot to the average of the measured values. The result showed that they were highly correlated with each other, and the regression coefficient between them was 0.694. In conclusion, the recognition scope radius has great influ-ence on tree vertex extraction, while resolution of CHM has little influence on tree vertex extraction. Increasing the sampling density of LIDAR data, choosing an appropriate CHM simulation method and improving the tree vertex recognition algorithm can increase the accuracy of tree height extraction.
Keywords:airborne LIDAR  HASM  tree height  Tianlaochi  natural secondary forest
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