| Literature DB >> 19665561 |
Jürgen Sturm1, Christian Plagemann, Wolfram Burgard.
Abstract
We present an approach to learning the kinematic model of a robotic manipulator arm from scratch using self-observation via a single monocular camera. We introduce a flexible model based on Bayesian networks that allows a robot to simultaneously identify its kinematic structure and to learn the geometrical relationships between its body parts as a function of the joint angles. Further, we show how the robot can monitor the prediction quality of its internal kinematic model and how to adapt it when its body changes-for example due to failure, repair, or material fatigue. In experiments carried out both on real and simulated robotic manipulators, we verified the validity of our approach for real-world problems such as end-effector pose prediction and end-effector pose control.Entities:
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Year: 2009 PMID: 19665561 DOI: 10.1016/j.jphysparis.2009.08.005
Source DB: PubMed Journal: J Physiol Paris ISSN: 0928-4257