Constrained Probabilistic Movement Primitives for Robot Trajectory Adaptation
Felix Frank, Alexandros Paraschos, Patrick van der Smagt, Botond Cseke

TL;DR
This paper introduces a unified probabilistic framework for adapting movement primitives in robots, enabling safe and versatile task execution in dynamic environments by combining various adaptation techniques.
Contribution
It develops a generic probabilistic approach that unifies and extends existing adaptation methods for movement primitives, including novel techniques like temporally unbound via-points.
Findings
Successfully applied to simulated planar robot arms.
Demonstrated on 7-DOF Franka-Emika robots.
Effectively handles obstacle avoidance and task modifications.
Abstract
Placing robots outside controlled conditions requires versatile movement representations that allow robots to learn new tasks and adapt them to environmental changes. The introduction of obstacles or the placement of additional robots in the workspace, the modification of the joint range due to faults or range-of-motion constraints are typical cases where the adaptation capabilities play a key role for safely performing the robot's task. Probabilistic movement primitives (ProMPs) have been proposed for representing adaptable movement skills, which are modelled as Gaussian distributions over trajectories. These are analytically tractable and can be learned from a small number of demonstrations. However, both the original ProMP formulation and the subsequent approaches only provide solutions to specific movement adaptation problems, e.g., obstacle avoidance, and a generic, unifying,…
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