首页> 外文会议>Annual Conference of the Remote Sensing and Photogrammetry Society >DELINEATION OF INDIVIDUAL TREE CROWNS FOR LiDAR TREE AND STAND PARAMETER ESTIMATION IN SCOTTISH WOODLANDS
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DELINEATION OF INDIVIDUAL TREE CROWNS FOR LiDAR TREE AND STAND PARAMETER ESTIMATION IN SCOTTISH WOODLANDS

机译:描绘苏格兰林地的LIDAR树的单个树冠和立场参数估计

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There is an increasing need for accurate forest inventories to assist forest managers and decision makers in the planning of the forest resources. Airborne LiDAR methods enable the construction of Tree Canopy Models (TCM) at a fine resolution, which allow the delineation of individual tree crowns. This information can be useful for the prediction of forest parameters such as top height, basal area, standing volume and biomass. In this paper, we present a comparative analysis of the algorithms developed independently by Gougeon (1995), Popescu (2003) and Weinacker (2004a) for delineating individual tree crowns and as a means to extract forest parameters. The comparison was achieved as follow. Firstly, the algorithms were tested in their efficiency for delineating tree crowns. Secondly, single tree parameters were estimated using the crown delineation and finally, stand parameters were estimated by averaging single tree parameters. Results of the three algorithms were compared to each other and to field measurement for validation. The results show that the algorithm by Popescu was the most suitable method to delineate crown with 89% of crown delineated. However only 72% were linked with field measured trees. The algorithm by Popescu was the most suitable to estimate individual tree height with s RMSE (%) of 1.93 m (8.1%). The algorithm by Gougeon was the most suitable to estimate individual crown diameter and stem diameter with a RMSE (%) of 1.81 m (31.7%) and 7.05 cm (21.8%) respectively. The algorithm by Popescu was the most suitable to estimate top height with a RMSE (%) of 0.94 m (3.8%). Finally, the algorithm by Weinacker was the most suitable to estimate stand basal area and volume with a RMSE (%) of 9.10 m~2/ha (24.3%) and 119.7 m~3/ha (29.4%) respectively. All the methods underestimate the tree and stand parameters. However, it is shown that individual tree heights and stand top heights can be estimated as accurately as from field based approaches.
机译:对于准确的森林库存需要增加,以协助森林经理和决策者在森林资源的规划中。空气传播的激光雷达方法可以以精细的分辨率构建树冠型号(TCM),允许单独的树冠划清。该信息对于预测森林参数(例如顶部高度,基面积,常设体积和生物质)也很有用。在本文中,我们展示了由Gougeon(1995),Popescu(2003)和Weinacker(2004A)独立开发的算法的比较分析,用于描绘单个树冠和提取森林参数的手段。比较达到如下。首先,算法以划清树冠的效率进行测试。其次,使用皇冠描绘估计单树参数,最后,通过平均单树参数估计支架参数。三种算法的结果彼此进行比较并进行验证的现场测量。结果表明,Popescu算法是最适合描绘皇冠的最合适的方法,其中89%的皇冠划定。然而,只有72%的人与现场测量的树木有关。 Popescu的算法最适合估计单个树高度,S RMSE(%)为1.93米(8.1%)。 Gougeon的算法最适合于估计单个冠直径和茎直径,分别具有1.81m(31.7%)和7.05cm(21.8%)的RMSE(%)。 Popescu的算法最适合估计顶部高度,RMSE(%)为0.94米(3.8%)。最后,Weinacker的算法是最适合估算架子基面积和体积,分别为9.10m〜2 / ha(24.3%)和119.7m〜3 / ha(29.4%)的RMSE(%)。所有方法都低估了树和站点参数。然而,示出了从基于场的方法可以准确地估计各个树高度和支架顶部高度。

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