FABRIC: A Framework for the Design and Evaluation of Collaborative Robots with Extended Human Adaptation
O. Can G\"or\"ur, Benjamin Rosman, Fikret Sivrikaya, Sahin Albayrak

TL;DR
This paper introduces FABRIC, an autonomous framework enabling collaborative robots to adapt in real-time to diverse human behaviors and characteristics, enhancing long-term collaboration effectiveness and user trust.
Contribution
The paper presents novel A-POMDP and ABPS models for real-time human behavior and characteristic adaptation in cobots, validated through simulation and physical experiments.
Findings
Framework effectively adapts to diverse human behaviors in real-time
Enhances collaboration efficiency and perceived naturalness
Increases human trust and positive teammate traits
Abstract
A limitation for collaborative robots (cobots) is their lack of ability to adapt to human partners, who typically exhibit an immense diversity of behaviors. We present an autonomous framework as a cobot's real-time decision-making mechanism to anticipate a variety of human characteristics and behaviors, including human errors, toward a personalized collaboration. Our framework handles such behaviors in two levels: 1) short-term human behaviors are adapted through our novel Anticipatory Partially Observable Markov Decision Process (A-POMDP) models, covering a human's changing intent (motivation), availability, and capability; 2) long-term changing human characteristics are adapted by our novel Adaptive Bayesian Policy Selection (ABPS) mechanism that selects a short-term decision model, e.g., an A-POMDP, according to an estimate of a human's workplace characteristics, such as her…
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Taxonomy
TopicsHuman-Automation Interaction and Safety · Reinforcement Learning in Robotics
