Photogrammetric surveying forests and woodlands with UAVs: techniques for automatic removal of vegetation and digital terrain model production for hydrological applications

IF 1.3 Q3 REMOTE SENSING Journal of Unmanned Vehicle Systems Pub Date : 2019-03-01 DOI:10.1139/JUVS-2016-0023
Fotis Giagkas, P. Patias, C. Georgiadis
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Abstract

The purpose of this study is the photogrammetric survey of a forested area using unmanned aerial vehicles (UAV), and the estimation of the digital terrain model (DTM) of the area, based on the photogrammetrically produced digital surface model (DSM). Furthermore, through the classification of the height difference between a DSM and a DTM, a vegetation height model is estimated, and a vegetation type map is produced. Finally, the generated DTM was used in a hydrological analysis study to determine its suitability compared to the usage of the DSM. The selected study area was the forest of Seih-Sou (Thessaloniki). The DTM extraction methodology applies classification and filtering of point clouds, and aims to produce a surface model including only terrain points (DTM). The method yielded a DTM that functioned satisfactorily as a basis for the hydrological analysis. Also, by classifying the DSM–DTM difference, a vegetation height model was generated. For the photogrammetric survey, 495 aerial images were used, taken by a UAV from a height of ∼200 m. A total of 44 ground control points were measured with an accuracy of 5 cm. The accuracy of the aerial triangulation was approximately 13 cm. The produced dense point cloud, counted 146 593 725 points.
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用无人机测量森林和林地的摄影测量:用于水文应用的植被自动去除和数字地形模型生产技术
本研究的目的是利用无人机(UAV)对森林地区进行摄影测量调查,并基于摄影测量产生的数字地表模型(DSM)估算该地区的数字地形模型(DTM)。在此基础上,通过对DSM和DTM的高差进行分类,估算出植被高度模型,生成植被类型图。最后,将生成的DTM用于水文分析研究,以确定其与DSM的使用相比的适用性。选定的研究区域为Seih-Sou (Thessaloniki)森林。DTM提取方法对点云进行分类和过滤,目的是产生只包含地形点的表面模型(DTM)。该方法产生了一个DTM,作为水文分析的基础,效果令人满意。通过对DSM-DTM差异进行分类,生成植被高度模型。在摄影测量调查中,使用了495张航空图像,由一架无人机从~ 200米的高度拍摄。总共测量了44个地面控制点,精度为5厘米。空中三角测量的精度约为13厘米。产生了密集的点云,共计146 593 725个点。
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CiteScore
5.30
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0.00%
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2
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