Publication | Open Access
RAPter
173
Citations
40
References
2015
Year
Geometric Modeling3D Computer VisionPoint CloudMassive VolumesMachine VisionImage AnalysisData ScienceEngineeringNatural SciencesInternal RegularityPoint Cloud ProcessingComputer-aided DesignMulti-view Geometry3D ReconstructionMedical Image ComputingComputational GeometryComputer VisionDominant Scene Orientations
With the proliferation of acquisition devices, gathering massive volumes of 3D data is now easy. Processing such large masses of pointclouds, however, remains a challenge. This is particularly a problem for raw scans with missing data, noise, and varying sampling density. In this work, we present a simple, scalable, yet powerful data reconstruction algorithm. We focus on reconstruction of man-made scenes as regular arrangements of planes (RAP), thereby selecting both local plane-based approximations along with their global inter-plane relations. We propose a novel selection formulation to directly balance between data fitting and the simplicity of the resulting arrangement of extracted planes. The main technical contribution is a formulation that allows less-dominant orientations to still retain their internal regularity, and not become overwhelmed and regularized by the dominant scene orientations. We evaluate our approach on a variety of complex 2D and 3D pointclouds, and demonstrate the advantages over existing alternative methods.
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