Home /Research /IntervenGen: Interventional Data Generation for Robust and Data-Efficient Robot Imitation Learning
LEARNING

IntervenGen: Interventional Data Generation for Robust and Data-Efficient Robot Imitation Learning

Ryan Hoque, Ajay Mandlekar, Caelan Reed Garrett, Ken Goldberg, Dieter Fox

Year
2024
Citations
6

Abstract

Imitation learning is a promising paradigm for training robot control policies, but these policies can suffer from distribution shift, where the conditions at evaluation time differ from those in the training data. A popular approach for increasing policy robustness to distribution shift is interactive imitation learning (i.e., DAgger and variants), where a human operator provides corrective interventions during policy rollouts. However, collecting a sufficient amount of interventions to cover the distribution of policy mistakes can be burdensome for human operators. We propose IntervenGen (I-Gen), a novel data augmentation system for robot control that autonomously produces a large set of corrective interventions with rich coverage of the state space from a small number of human interventions. We apply I-Gen to 4 simulated environments and 1 physical environment with object pose estimation error and show that it can increase policy robustness by up to 39× with only 10 human interventions. Videos and more results are available at https://sites.google.com/view/intervengen2024.

Keywords

Computer scienceImitationArtificial intelligenceRobotComputer visionPsychologyNeuroscience

Related papers

Browse all LEARNING papers