Využitie UAV technológie pre klasifikáciu a mapovanie krajiny vo fluviálnej geomorfológii

Miloš Rusnák, Ján Sládek, Anna Kidová
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引用次数: 1

Abstract

The aim of this paper is to present the possibilities of UAVs (Unmanned Aerial Vehicles) as photogrammetry payload carriers for data acquisition and fluvial landform identification and mapping. The manual and automatic classification of the Belá River riparian zone for landscape object identification and the analyses of the point cloud density after vegetation filtration was performed. The HEXAKOPTER XL including the Sony NEX 6 camera with 16 – 50 mm lens for landscape monitoring features was used. Data was processed in Agisoft PhotoScan software. The RMSE (root mean square error) of aligned images was 60.121 mm (x coordinate), 43.7584 mm (y coordinate) and 29.46 mm (z coordinate). The resulting point cloud was semiautomatic classified in the software Terrasolid – Terrascan (Microstation), in the following six classes: high vegetation (over 5 m), medium vegetation (from 1.5 m to 5 m), small vegetation (from 0.2 m to 1.5 m), topographic surface and water surface. Orthophotomosaic was classified in ArcGIS software by supervised Maximum Likelihood Classification (MLC). Here training site signatures identified the five land cover categories (water area, bar surface, vegetation, Large Woody Debris – LWD and bare surface). The classification of photogrammetric derived point clouds increases the accuracy elevation model, but on the other hand, does not capture the real terrain and topography under the vegetation.
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无人机技术在河流地貌土地分类和制图中的应用
本文的目的是展示无人机作为摄影测量有效载荷载体的可能性,用于数据采集和河流地貌识别和测绘。对Belá河河岸带进行了手动和自动分类,用于景观对象识别和植被过滤后的点云密度分析。使用了包括索尼NEX 6相机在内的HEXAKOPTER XL,该相机具有16–50 mm的镜头,用于景观监控功能。数据在Agisoft PhotoScan软件中进行处理。对齐图像的均方根误差分别为60.121 mm(x坐标)、43.7584 mm(y坐标)和29.46 mm(z坐标)。生成的点云在Terrasolid–Terrascan(Microstation)软件中被半自动分类为以下六类:高植被(5米以上)、中等植被(1.5米至5米)、小植被(0.2米至1.5米)、地形表面和水面。在ArcGIS软件中采用监督最大似然分类法对正射影像镶嵌图进行分类。在这里,培训场地的特征确定了五种土地覆盖类别(水域、坝面、植被、大型Woody碎屑–LWD和裸露表面)。摄影测量衍生点云的分类提高了高程模型的精度,但另一方面,无法捕捉植被下的真实地形和地形。
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来源期刊
CiteScore
1.30
自引率
22.20%
发文量
14
期刊介绍: The journal publishes original and timely scientific articles that advance knowledge in all the fields of geography and significant contributions from the related disciplines. Papers devoted to geographical research of Slovakia and to theoretical and methodological questions of geography are especially welcome. In addition, the journal includes also short research notes, review articles, comments on published papers and reviews of selected publications. Papers are written in the Slovak language with English summary or in English and occasionally in some other world languages.
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