To the Noise and Back: Diffusion for Shared Autonomy
Takuma Yoneda, Luzhe Sun, Ge Yang, Bradly Stadie, Matthew Walter

TL;DR
This paper introduces a diffusion-based shared autonomy framework that learns desired behaviors without environment models or reward functions, effectively correcting user actions while preserving user control in robotic tasks.
Contribution
It proposes a novel diffusion model approach for shared autonomy that does not require environment dynamics, goal knowledge, reward feedback, or user policy during training.
Findings
Successfully corrects user actions in continuous control tasks.
Maintains user control authority during action correction.
Outperforms existing methods in flexibility and robustness.
Abstract
Shared autonomy is an operational concept in which a user and an autonomous agent collaboratively control a robotic system. It provides a number of advantages over the extremes of full-teleoperation and full-autonomy in many settings. Traditional approaches to shared autonomy rely on knowledge of the environment dynamics, a discrete space of user goals that is known a priori, or knowledge of the user's policy -- assumptions that are unrealistic in many domains. Recent works relax some of these assumptions by formulating shared autonomy with model-free deep reinforcement learning (RL). In particular, they no longer need knowledge of the goal space (e.g., that the goals are discrete or constrained) or environment dynamics. However, they need knowledge of a task-specific reward function to train the policy. Unfortunately, such reward specification can be a difficult and brittle process. On…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Reinforcement Learning in Robotics
MethodsDiffusion
