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Learning-based Success Validation for Robotic Assembly Tasks

Arik Lämmle, Marlies Goes, Philipp Tenbrock

Year
2022
Citations
2

Abstract

The use of reinforcement learning for efficient robot programming has proven significant potential in research. Particularly in combination with advanced simulations, even complex assembly processes including variation and tolerances can be trained with little effort. However, reliable information about the system’s current success state is needed to reward promising actions for training the reinforcement learning agent. While this success information is readily available in simulation or traditionally retrieved with rule-based approaches, a solution approach to infer the success state from available observation data would highly increase the robustness of the reward information and the subsequent transfer to reality. In this paper, we present a deep learning approach to learn the success criteria using the assembly benchmark process of peg-in-hole.

Keywords

Computer scienceRobotHuman–computer interactionArtificial intelligenceSystems engineeringEngineering

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