Using invariant theory to extend the extrapolation capabilities of robot learning from demonstration methodologies KU Leuven
This research focuses in the use of virtual demonstration in the robot learning by demonstration field. The objective is to analyse the possible advantages in combining the Coordinate invariant trajectory representation, used to generate virtual demonstrations, with other learning methodologies, as the trajectory parametrised Probabilistic Principal Component Analysis, to increase their generalization capabilities