Trajectory Learning Based on Conditional Random Fields for Robot Programming by Demonstration

نویسندگان

  • Aleksandar Vakanski
  • Farrokh Janabi-Sharifi
  • Iraj Mantegh
  • Andrew Irish
چکیده

This work presents an approach for implementation of conditional random fields (CRF) in transferring motor skills to robots. As a discriminative probabilistic model, CRF models directly the conditional probability distribution over label sequences for given observation sequences. Hereby, CRF was employed for segmentation and labeling of a set of demonstrated trajectories observed by a tracking sensor. The key points obtained by CRF segmentation of the demonstrations were used for generating a generalized trajectory for the task reproduction. The approach was evaluated by simulations of two industrial manufacturing applications.

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تاریخ انتشار 2010