Communicating Inferred Goals with Passive Augmented Reality and Active Haptic Feedback
James F. Mullen Jr, Josh Mosier, Sounak Chakrabarti, Anqi Chen, Tyler, White, and Dylan P. Losey

TL;DR
This paper presents a multimodal feedback system combining augmented reality and haptic cues to improve human-robot goal inference during shared autonomy tasks, enhancing teaching efficiency and reducing human effort.
Contribution
It introduces an integrated algorithmic framework for passive and active feedback, advancing robot-human communication in goal inference tasks.
Findings
Combined feedback outperforms single modality approaches.
Increases teaching efficiency in shared autonomy.
Reduces human interaction time with the robot.
Abstract
Robots learn as they interact with humans. Consider a human teleoperating an assistive robot arm: as the human guides and corrects the arm's motion, the robot gathers information about the human's desired task. But how does the human know what their robot has inferred? Today's approaches often focus on conveying intent: for instance, upon legible motions or gestures to indicate what the robot is planning. However, closing the loop on robot inference requires more than just revealing the robot's current policy: the robot should also display the alternatives it thinks are likely, and prompt the human teacher when additional guidance is necessary. In this paper we propose a multimodal approach for communicating robot inference that combines both passive and active feedback. Specifically, we leverage information-rich augmented reality to passively visualize what the robot has inferred, and…
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