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CANOPY DENSITY MAPPING ON ULTRACAM-D AERIAL IMAGERY IN ZAGROS WOODLANDS, IRAN

机译:伊朗Zagros Woodlands的Ultracam-D空中图像上的冠层密度映射

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Canopy density maps express different characteristics of forest stands, especially in woodlands. Obtaining such maps by field measurements is so expensive and time-consuming. It seems necessary to find suitable techniques to produce these maps to be used in sustainable management of woodland ecosystems. In this research, a robust procedure was suggested to obtain these maps by very high spatial resolution aerial imagery. It was aimed to produce canopy density maps by UltraCam-D aerial imagery, newly taken in Zagros woodlands by Iran National Geographic Organization (NGO), in this study. A 30 ha plot of Persian oak (Quercus persica) coppice trees was selected in Zagros woodlands, Iran. The very high spatial resolution aerial imagery of the plot purchased from NGO, was classified by kNN technique and the tree crowns were extracted precisely. The canopy density was determined in each cell of different meshes with different sizes overlaid on the study area map. The accuracy of the final maps was investigated by the ground truth obtained by complete field measurements. The results showed that the proposed method of obtaining canopy density maps was efficient enough in the study area. The final canopy density map obtained by a mesh with 30 Ar (3000 m~2) cell size had 80% overall accuracy and 0.61 KHAT coefficient of agreement which shows a great agreement with the observed samples. This method can also be tested in other case studies to reveal its capability in canopy density map production in woodlands.
机译:冠层密度图表达了森林立场的不同特征,特别是在林地。通过现场测量获得此类地图是如此昂贵且耗时。似乎有必要找到生产这些地图的合适技术,以便用于林地生态系统的可持续管理。在这项研究中,建议通过非常高空间分辨率的航拍图像获得这些地图的强大程序。它旨在通过伊朗国家地理组织(非政府组织)在Zagros Woodlands(非政府组织)中新拍摄的Ultracam-D空中图像产生ultacacam-d空中图像。在Zagros Woodlands,Iran中选择了30公顷的波斯橡木(栎属Persica)Coppice树。从非政府组织购买的情节的非常高的空间分辨率是由KNN技术分类的,并且精确提取树冠。在不同尺寸的不同网格的每个电池中测定冠层密度,其不同尺寸覆盖在研究区域图上。通过完整的现场测量获得的地面真理来研究最终地图的准确性。结果表明,在研究区内获得冠层密度图的提出方法足够有效。通过30AR(3000m〜2)细胞尺寸的网格获得的最终冠层密度图具有80%的总精度和0.61khat系数,显示出与观察到的样品非常一致。该方法也可以在其他案例研究中进行测试,以揭示其在林地的冠层密度图生产中的能力。

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