Download PDFOpen PDF in browser3D UAS-SfM Point Cloud Classification in Urban Terrestrial EnvironmentEasyChair Preprint 106552 pages•Date: August 2, 2023AbstractThe use of lidar technologies for point cloud acquisition is financially costly. However, photogrammetry using unmanned aerial systems (UAS) imagery and structure-from-motion (SfM) techniques have proven a practical and costeffective way to collect point cloud data (Liu and Boehm, 2015). SfM uses two-dimensional (2D) images to produce high-quality three-dimensional (3D) point clouds. Classified point cloud data is useful in environmental modelling, cultural heritage preservation and navigation applications (Grilli et al., 2017; Roynard et al., 2018; Croce et al., 2021). This study focuses on classifying a 3D UAS-SfM point cloud of a heterogeneous urban environment into three land cover categories: ground, high vegetation and buildings. Keyphrases: Classification, Mapping, Structure from Motion, Unmanned Aerial Systems, point cloud
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