2020
DOI: 10.5194/isprs-archives-xliii-b2-2020-1049-2020
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Supervoxel-Based Multi-Scale Point Cloud Segmentation Using Fnea for Object-Oriented Rock Slope Classification Using TLS

Abstract: Abstract. Computer vision applications have been increasingly gaining space in the field of remote sensing and geosciences for automated terrain classification and semantic labelling purposes. The continuous and rapid development of monitoring techniques and enhancements in the spatial resolution of sensors have increased the demand for new remote sensing data analysis approaches. For semantic labelling of 2D (or 2.5D) image terrain representations for rock slopes, it has been shown that Object-Based Image Ana… Show more

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Cited by 9 publications
(1 citation statement)
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“…In general, the change detection approaches can be achieved based on the selected mapping unit. Pixel-based or object-based methods are widely applied in 2D space while lately 3D OBIA approaches have been introduced with the use of 3D point clouds from LiDAR and Photogrammetry (Farmakis, Bonneau, et al 2020). With their recent usage in landslide mapping, deep learning (DL) techniques have proven their efficiency in many studies.…”
Section: Landslide Monitoring With Rsmentioning
confidence: 99%
“…In general, the change detection approaches can be achieved based on the selected mapping unit. Pixel-based or object-based methods are widely applied in 2D space while lately 3D OBIA approaches have been introduced with the use of 3D point clouds from LiDAR and Photogrammetry (Farmakis, Bonneau, et al 2020). With their recent usage in landslide mapping, deep learning (DL) techniques have proven their efficiency in many studies.…”
Section: Landslide Monitoring With Rsmentioning
confidence: 99%