Applied Sciences (Nov 2018)

A Graph Representation Composed of Geometrical Components for Household Furniture Detection by Autonomous Mobile Robots

  • Oscar Alonso-Ramirez,
  • Antonio Marin-Hernandez,
  • Homero V. Rios-Figueroa,
  • Michel Devy,
  • Saul E. Pomares-Hernandez,
  • Ericka J. Rechy-Ramirez

DOI
https://doi.org/10.3390/app8112234
Journal volume & issue
Vol. 8, no. 11
p. 2234

Abstract

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This study proposes a framework to detect and recognize household furniture using autonomous mobile robots. The proposed methodology is based on the analysis and integration of geometric features extracted over 3D point clouds. A relational graph is constructed using those features to model and recognize each piece of furniture. A set of sub-graphs corresponding to different partial views allows matching the robot’s perception with partial furniture models. A reduced set of geometric features is employed: horizontal and vertical planes and the legs of the furniture. These features are characterized through their properties, such as: height, planarity and area. A fast and linear method for the detection of some geometric features is proposed, which is based on histograms of 3D points acquired from an RGB-D camera onboard the robot. Similarity measures for geometric features and graphs are proposed, as well. Our proposal has been validated in home-like environments with two different mobile robotic platforms; and partially on some 3D samples of a database.

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