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首页> 外文期刊>Remote Sensing >Synthesis of Leaf-on and Leaf-off Unmanned Aerial Vehicle (UAV) Stereo Imagery for the Inventory of Aboveground Biomass of Deciduous Forests
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Synthesis of Leaf-on and Leaf-off Unmanned Aerial Vehicle (UAV) Stereo Imagery for the Inventory of Aboveground Biomass of Deciduous Forests

机译:落叶森林地上生物量清单的叶上和叶下无人机(UAV)立体图像的合成

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Applications of stereo imagery acquired by cameras onboard unmanned aerial vehicles (UAVs) as practical forest inventory tools are hindered by the unavailability of ground surface elevation. It is still a challenging issue to remove the elevation of ground surface in leaf-on stereo imagery to extract forest canopy height without the help of lidar data. This study proposed a method for the extraction of forest canopy height through the synthesis of UAV stereo imagery of leaf-on and leaf-off, and further demonstrated that the extracted forest canopy height could be used for the inventory of deciduous forest aboveground biomass (AGB). The points cloud of the leaf-on and leaf-off stereo imagery was firstly extracted by an algorithm of structure from motion (SFM) using the same ground control points (GCP). The digital surface model (DSM) was produced by rasterizing the point cloud of UAV leaf-on. The point cloud of UAV leaf-off was processed by iterative median filtering to remove vegetation points, and the digital terrain model (DTM) was generated by the rasterization of the filtered point cloud. The mean canopy height model (MCHM) was derived from the DSM subtracted by the DTM (i.e., DSM-DTM). Forest AGB maps were generated using models developed based on the MCHM and sampling plots of forest AGB and were evaluated by those of lidar. Results showed that forest AGB maps from UAV stereo imagery were highly correlated with those from lidar data with R 2 higher than 0.94 and RMSE lower than 10.0 Mg/ha (i.e., relative RMSE 18.8%). These results demonstrated that UAV stereo imagery could be used as a practical inventory tool for deciduous forest AGB.
机译:由于无法获得地面标高,阻碍了无人机摄像头获得的立体图像作为实用的森林清查工具的应用。在不借助激光雷达数据的情况下,删除叶上立体图像中的地面高程以提取森林冠层高度仍然是一个具有挑战性的问题。这项研究提出了一种通过合成无叶和无叶的无人机立体图像来提取森林冠层高度的方法,并进一步证明了提取的森林冠层高度可用于清查落叶林地上生物量(AGB)。 )。首先,使用相同的地面控制点(GCP),通过结构算法从运动(SFM)中提取了上,下车立体图像的点云。数字表面模型(DSM)是通过光栅化无人机上的点云生成的。通过迭代中值滤波处理UAV离开的点云以去除植被点,并通过对滤波后的点云进行栅格化生成数字地形模型(DTM)。平均树冠高度模型(MCHM)由DTM减去DSM(即DSM-DTM)得出。森林AGB地图是使用基于MCHM开发的模型和森林AGB的采样图生成的,并由激光雷达进行了评估。结果表明,无人机立体图像的森林AGB地图与激光雷达数据的地图高度相关,R 2高于0.94,RMSE低于10.0 Mg / ha(即相对RMSE 18.8%)。这些结果表明,无人机立体图像可以用作落叶林AGB的实用清单工具。

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