Learning to Share Autonomy Across Repeated Interaction
Ananth Jonnavittula, Dylan P. Losey

TL;DR
This paper presents a learning-based shared autonomy approach for assistive robots that leverages repeated human interactions to recognize and assist with both known and new tasks without prior goal specifications.
Contribution
The authors introduce a novel algorithm that learns from repeated interactions to recognize, replicate, and assist with new tasks in shared autonomy settings, reducing reliance on prior knowledge.
Findings
Matches existing methods on known goals
Outperforms imitation baselines on new tasks
Effective in simulations and user studies
Abstract
Wheelchair-mounted robotic arms (and other assistive robots) should help their users perform everyday tasks. One way robots can provide this assistance is shared autonomy. Within shared autonomy, both the human and robot maintain control over the robot's motion: as the robot becomes confident it understands what the human wants, it increasingly intervenes to automate the task. But how does the robot know what tasks the human may want to perform in the first place? Today's shared autonomy approaches often rely on prior knowledge: for example, the robot must know the set of possible human goals a priori. In the long-term, however, this prior knowledge will inevitably break down -- sooner or later the human will reach for a goal that the robot did not expect. In this paper we propose a learning approach to shared autonomy that takes advantage of repeated interactions. Learning to assist…
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