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UAV-BASED PHOTOGRAMMETRIC POINT CLOUDS - TREE STEM MAPPING IN OPEN STANDS IN COMPARISON TO TERRESTRIAL LASER SCANNER POINT CLOUDS

机译:基于UAV的摄影测量点云 - 与地面激光扫描仪点云相比,开放站的树干映射

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In both ecology and forestry, there is a high demand for structural information of forest stands. Forest structures, due to their heterogeneity and density, are often difficult to assess. Hence, a variety of technologies are being applied to account for this "difficult to come by" information. Common techniques are aerial images or ground- and airborne-Lidar. In the present study we evaluate the potential use of unmanned aerial vehicles (UAVs) as a platform for tree stem detection in open stands. A flight campaign over a test site near Freiburg, Germany covering a target area of 120 × 75[m~2] was conducted. The dominant tree species of the site is oak (quercus robur) with almost no understory growth. Over 1000 images with a tilt angle of 45°were shot. The flight pattern applied consisted of two antipodal staggered flight routes at a height of 55 [m] above the ground. We used a Panasonic G3 consumer camera equipped with a 14?42 [mm] standard lens and a 16.6 megapixel sensor. The data collection took place in leaf-off state in April 2013. The area was prepared with artificial ground control points for transformation of the structure-from-motion (SFM) point cloud into real world coordinates. After processing, the results were compared with a terrestrial laser scanner (TLS) point cloud of the same area. In the 0.9[ha] test area, 102 individual trees above 7[cm] diameter at breast height were located on in the TLS-cloud. We chose the software CMVS/PMVS-2 since its algorithms are developed with focus on dense reconstruction. The processing chain for the UAV-acquired images consists of six steps: a. cleaning the data: removing of blurry, under-or over exposed and off-site images; b. applying the SIFT operator [Lowe, 2004]; c. image matching; d. bundle adjustment; e. clustering; and f. dense reconstruction. In total, 73 stems were considered as reconstructed and located within one meter of the reference trees. In general stems were far less accurate and complete as in the TLS-point cloud. Only few stems were considered to be fully reconstructed. From the comparison of reconstruction achievement with respect to height above ground, we can state that reconstruction accuracy decreased in the crown layer of the stand. In addition we were cutting 50[cm] slices in z-direction and applied a robust cylinder fit to the stem slices. Radii of the TLS-cloud and the SFM-cloud surprisingly correlated well with a Pearson's correlation coefficient of r=0.696. This first study showed promising results for UAV-based forest structure modelling. Yet, there is a demand for additional research with regard to vegetation stages, flight pattern, processing setup and the utilisation of spectral information.
机译:在生态和林业中,对森林的结构信息有很高的需求。由于它们的异质性和密度,森林结构通常难以评估。因此,正在应用各种技术来解释这种“难以通过”信息。常用技术是航空图像或地面和空中激光器。在本研究中,我们评估了无人机(无人机)作为开放台中树干检测平台的潜在使用。在弗赖堡附近的测试网站上进行飞行活动,德国覆盖目标面积为120×75 [M〜2]。该网站的主导树种是橡树(栎雄抢劫),几乎没有较大的增长。超过1000张图像,倾斜角度为45°。施加的飞行模式包括两个抗双向交错的飞行路线,在地面上方的55℃的高度。我们使用了配备14架42 [MM]标准镜头和16.6万像素传感器的松下G3消费者摄像头。数据收集于2013年4月在叶子脱落状态下进行。该地区由人工地面控制点制备,用于将结构 - 从运动(SFM)点云转换为现实世界坐标。处理后,将结果与同一区域的地面激光扫描仪(TLS)点云进行比较。在0.9 [HA]测试区域中,在TLS云中位于7℃以上的102次以上直径。我们选择了软件CMVS / PMVS-2,因为它的算法是通过专注于密集的重建而开发的。 UAV获取图像的处理链包括六个步骤:a。清洁数据:删除模糊,下面或暴露和非现场图像;湾应用SIFT运营商[Lowe,2004]; C。图像匹配;天。捆绑调整; e。聚类;和f。密集重建。总共将73个茎被认为是重建的,并且位于参考树的一米内。通常,在TLS点云中,茎的总体较小,完整。仅考虑少量茎被完全重建。从重建成果相对于高度的地面的比较来看,我们可以说明在支架的冠部层中的重建精度降低。另外,我们在z方向上切割50 [cm]切片,并将稳健的圆柱体施加到阀杆切片上。 TLS云的半径和SFM云令人惊讶地与Pearson的r = 0.696的相关系数相关。第一次研究表明,基于UAV的森林结构建模表现出有希望的结果。然而,关于植被阶段,飞行模式,处理设置和光谱信息的利用,需要进行额外的研究。

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