TL;DR
PECAN introduces a novel method for robot personalization by learning a low-dimensional canonical space from human demonstrations, allowing users to directly select preferred behaviors, improving intuitiveness and user satisfaction.
Contribution
This paper presents PECAN, a new approach that enables direct human control of robot styles via a learned canonical space, enhancing personalization and user experience.
Findings
Humans prefer PECAN for direct personalization.
The canonical space is intuitive and consistent.
PECAN outperforms traditional indirect personalization methods.
Abstract
Robots should personalize how they perform tasks to match the needs of individual human users. Today's robot achieve this personalization by asking for the human's feedback in the task space. For example, an autonomous car might show the human two different ways to decelerate at stoplights, and ask the human which of these motions they prefer. This current approach to personalization is indirect: based on the behaviors the human selects (e.g., decelerating slowly), the robot tries to infer their underlying preference (e.g., defensive driving). By contrast, our paper develops a learning and interface-based approach that enables humans to directly indicate their desired style. We do this by learning an abstract, low-dimensional, and continuous canonical space from human demonstration data. Each point in the canonical space corresponds to a different style (e.g., defensive or aggressive…
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