articleComputer Graphics ForumMay 21, 2007Closed access

Efficient RANSAC for Point‐Cloud Shape Detection

University of Bonn

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Abstract

Abstract In this paper we present an automatic algorithm to detect basic shapes in unorganized point clouds. The algorithm decomposes the point cloud into a concise, hybrid structure of inherent shapes and a set of remaining points. Each detected shape serves as a proxy for a set of corresponding points. Our method is based on random sampling and detects planes, spheres, cylinders, cones and tori. For models with surfaces composed of these basic shapes only, for example, CAD models, we automatically obtain a representation solely consisting of shape proxies. We demonstrate that the algorithm is robust even in the presence of many outliers and a high degree of noise. The proposed method scales well with respect…

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2,025
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FWCI
22.04
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100%
References
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Authors

3

Topics & keywords

Keywords
  • Point cloud
  • RANSAC
  • Computer science
  • Outlier
  • Algorithm
  • Rendering (computer graphics)
  • Artificial intelligence
  • Computer vision
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