Home /Research /Learning Deep Parameterized Skills from Demonstration for Re-targetable Visuomotor Control
LEARNING

Learning Deep Parameterized Skills from Demonstration for Re-targetable Visuomotor Control

Jonathan Chang, Nishanth Kumar, Sean Hastings, Aaron Gokaslan, Diego Romeres, Devesh K. Jha, Daniel Nikovski, George Konidaris, Stefanie Tellex

Year
2019
Citations
5
Access
Open access

Abstract

Robots need to learn skills that can not only generalize across similar problems but also be directed to a specific goal. Previous methods either train a new skill for every different goal or do not infer the specific target in the presence of multiple goals from visual data. We introduce an end-to-end method that represents targetable visuomotor skills as a goal-parameterized neural network policy. By training on an informative subset of available goals with the associated target parameters, we are able to learn a policy that can zero-shot generalize to previously unseen goals. We evaluate our method in a representative 2D simulation of a button-grid and on both button-pressing and peg-insertion tasks on two different physical arms. We demonstrate that our model trained on 33% of the possible goals is able to generalize to more than 90% of the targets in the scene for both simulation and robot experiments. We also successfully learn a mapping from target pixel coordinates to a robot policy to complete a specified goal.

Keywords

Parameterized complexityControl (management)Computer scienceArtificial intelligencePsychologyAlgorithm

Related papers

Browse all LEARNING papers