Kinect Enabled Monte Carlo Localisation for a Robotic Wheelchair

نویسندگان

  • Theodoros Theodoridis
  • Huosheng Hu
  • Klaus D. McDonald-Maier
  • Dongbing Gu
چکیده

Proximity sensors and 2D vision methods have shown to work robustly in particle filter-based Monte Carlo Locali-sation (MCL). It would be interesting however to examine whether modern 3D vision sensors would be equally efficient for localising a robotic wheelchair with MCL. In this work, we introduce a visual Region Locator Descriptor, acquired from a 3D map using the Kinect sensor to conduct localisation. The descriptor segments the Kinect’s depth map into a grid of 36 regions, where the depth of each column-cell is being used as a distance range for the measurement model of a particle filter. The experimental work concentrated on a comparison of three different localization cases. (a) an odometry model without MCL, (b) with MCL and sonar sensors only, (c) with MCL and the Kinect sensor only. The comparative study demonstrated the efficiency of a modern 3D depth sensor, such as the Kinect, which can be used reliably for wheelchair localisation.

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تاریخ انتشار 2012