Home /Research /A generic methodology for partitioning unorganised 3D point clouds for robotic vision
PERCEPTION

A generic methodology for partitioning unorganised 3D point clouds for robotic vision

Nicolas Loménie

Year
2004
Citations
15

Abstract

Range image segmentation has many applications in computer vision areas such as computer graphics and robotic vision. A generic methodology for 3D point set analysis in which planar structures play an important role is defined. It consists mainly of a specific K-means algorithm which is able to process different shapes in cluster. At the same time, within geometric and topologic considerations, a set of application-driven heuristics is designed. This helps to find out the right number of structures in point sets in order to give a good visualization and representation of a large scale environment without a priori models. Our aim is to propose a simple and generic frame for 3D scene understanding. Tests were realised on different types of environment data: natural and man-made. This research project has been realized with EADS (French Air Space Society).

Keywords

Computer scienceHeuristicsPoint cloudA priori and a posterioriComputer graphicsRepresentation (politics)Computer visionArtificial intelligenceSet (abstract data type)Point (geometry)

Related papers

Browse all PERCEPTION papers