Litcius/Paper detail

Dense 3D displacement vector fields for point cloud-based landslide monitoring

Žan Gojčič, Lorenz Schmid, Andreas Wieser

2021Landslides54 citationsDOIOpen Access PDF

Abstract

Abstract We propose a novel fully automated deformation analysis pipeline capable of estimating real 3D displacement vectors from point cloud data. Different from the traditional methods that establish displacements based on the proximity in the Euclidean space, our approach estimates dense 3D displacement vector fields by searching for corresponding points across the epochs in the space of 3D local feature descriptors. Due to this formulation, our method is also sensitive to motion and deformations that occur parallel to the underlying surface. By enabling efficient parallel processing, the proposed method can be applied to point clouds of arbitrary size. We compare our approach to the traditional methods on point cloud data of two landslides and show that while the traditional methods often underestimate the displacements, our method correctly estimates full 3D displacement vectors.

Topics & Concepts

Point cloudDisplacement (psychology)LandslideEuclidean vectorComputer sciencePoint (geometry)Euclidean spaceDeformation (meteorology)Feature vectorPipeline (software)AlgorithmComputer visionGeodesyArtificial intelligenceGeologyGeometryMathematicsMathematical analysisSeismologyPsychologyPsychotherapistProgramming languageOceanographyRemote Sensing and LiDAR Applications3D Surveying and Cultural HeritageLandslides and related hazards