Robotics
♻ ★ Adapt Your Body: Mitigating Proprioception Shifts in Imitation Learning
Imitation learning models for robotic tasks typically rely on multi-modal
inputs, such as RGB images, language, and proprioceptive states. While
proprioception is intuitively important for decision-making and obstacle
avoidance, simply incorporating all proprioceptive states leads to a surprising
degradation in imitation learning performance. In this work, we identify the
underlying issue as the proprioception shift problem, where the distributions
of proprioceptive states diverge significantly between training and deployment.
To address this challenge, we propose a domain adaptation framework that
bridges the gap by utilizing rollout data collected during deployment. Using
Wasserstein distance, we quantify the discrepancy between expert and rollout
proprioceptive states and minimize this gap by adding noise to both sets of
states, proportional to the Wasserstein distance. This strategy enhances
robustness against proprioception shifts by aligning the training and
deployment distributions. Experiments on robotic manipulation tasks demonstrate
the efficacy of our method, enabling the imitation policy to leverage
proprioception while mitigating its adverse effects. Our approach outperforms
the naive solution which discards proprioception, and other baselines designed
to address distributional shifts.
comment: Need further modification