Publication | Open Access
Extracting low-dimensional control variables for movement primitives
40
Citations
27
References
2015
Year
Unknown Venue
Artificial IntelligenceProbabilistic Movement PrimitivesEngineeringMachine LearningMovement PrimitivesSequential LearningIntelligent RoboticsCognitive RoboticsMotor ControlAdvanced Motion ControlMovement GenerationData ScienceRobot LearningKinematicsHealth SciencesMotion SynthesisAction Model LearningComputer ScienceDeep LearningMotion ControlMechanical SystemsProcess ControlRobotics
Movement primitives (MPs) provide a powerful framework for data driven movement generation that has been successfully applied for learning from demonstrations and robot reinforcement learning. In robotics we often want to solve a multitude of different, but related tasks. As the parameters of the primitives are typically high dimensional, a common practice for the generalization of movement primitives to new tasks is to adapt only a small set of control variables, also called meta parameters, of the primitive. Yet, for most MP representations, the encoding of these control variables is pre-coded in the representation and can not be adapted to the considered tasks. In this paper, we want to learn the encoding of task-specific control variables also from data instead of relying on fixed meta-parameter representations. We use hierarchical Bayesian models (HBMs) to estimate a low dimensional latent variable model for probabilistic movement primitives (ProMPs), which is a recent movement primitive representation. We show on two real robot datasets that ProMPs based on HBMs outperform standard ProMPs in terms of generalization and learning from a small amount of data and also allows for an intuitive analysis of the movement. We also extend our HBM by a mixture model, such that we can model different movement types in the same dataset.
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