Home /Research /MAD-TN: A Tool for Measuring Fluency in Human-Robot Collaboration
HRI

MAD-TN: A Tool for Measuring Fluency in Human-Robot Collaboration

Seth Isaacson, Gretchen Rice, James C. Boerkoel

Year
2019
Access
Open access

Abstract

Fluency is an important metric in Human-Robot Interaction (HRI) that describes the coordination with which humans and robots collaborate on a task. Fluency is inherently linked to the timing of the task, making temporal constraint networks a promising way to model and measure fluency. We show that the Multi-Agent Daisy Temporal Network (MAD-TN) formulation, which expands on an existing concept of daisy-structured networks, is both an effective model of human-robot collaboration and a natural way to measure a number of existing fluency metrics. The MAD-TN model highlights new metrics that we hypothesize will strongly correlate with human teammates' perception of fluency.

Keywords

cs.AIcs.HCcs.RO

Related papers

Browse all HRI papers