2015 IEEE-RAS 15th International Conference on Humanoid Robots (Humanoids) 2015
DOI: 10.1109/humanoids.2015.7363559
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Learning of parametric coupling terms for robot-environment interaction

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Cited by 16 publications
(20 citation statements)
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“…More recently, Gams el al. expanded their work in [12], by generating a database of coupling terms and generalizing to multiple scenarios. All of the above approaches take an iterative approach towards learning the parameters of their coupling term model, but suffer from a lack of generalizability to unseen settings.…”
Section: A Coupling Termsmentioning
confidence: 99%
“…More recently, Gams el al. expanded their work in [12], by generating a database of coupling terms and generalizing to multiple scenarios. All of the above approaches take an iterative approach towards learning the parameters of their coupling term model, but suffer from a lack of generalizability to unseen settings.…”
Section: A Coupling Termsmentioning
confidence: 99%
“…For example, Matsubara et al [19] proposed an algorithm for the generation of new control policies from existing knowledge, thereby achieving an extended scalability of DMPs, while mixture of motor primitives was used for generation of table tennis swings in [20]. On the other hand, generalization of DMPs was combined with model predictive control by Krug and Dimitrov [21] or applied to DMP coupling terms [22], which were learned and later added to a demonstrated trajectory to generate new joint space trajectories. Furthermore, Stulp et al [23] proposed learning a function approximator with one regression in the full space of phase and tasks parameters, bypassing the need for two consecutive regressions.…”
Section: Generalization Of Position and Orientation Trajectoriesmentioning
confidence: 99%
“…Generalization using GPR was applied over combined joint position torque trajectories in the framework of compliant movement primitives [12], extending the DMP framework beyond the kinematic trajectory properties. Generalization was also applied to DMP coupling terms [13], which were learned and later added to a demonstrated trajectory to generate new joint-space trajectories.…”
Section: Related Workmentioning
confidence: 99%