Effects of Robot Competency and Motion Legibility on Human Correction Feedback
Journal:
arXiv
Published Date:
Jan 7, 2025
Abstract
As robot deployments become more commonplace, people are likely to take on
the role of supervising robots (i.e., correcting their mistakes) rather than
directly teaching them. Prior works on Learning from Corrections (LfC) have
relied on three key assumptions to interpret human feedback: (1) people correct
the robot only when there is significant task objective divergence; (2) people
can accurately predict if a correction is necessary; and (3) people trade off
precision and physical effort when giving corrections. In this work, we study
how two key factors (robot competency and motion legibility) affect how people
provide correction feedback and their implications on these existing
assumptions. We conduct a user study ($N=60$) under an LfC setting where
participants supervise and correct a robot performing pick-and-place tasks. We
find that people are more sensitive to suboptimal behavior by a highly
competent robot compared to an incompetent robot when the motions are legible
($p=0.0015$) and predictable ($p=0.0055$). In addition, people also tend to
withhold necessary corrections ($p < 0.0001$) when supervising an incompetent
robot and are more prone to offering unnecessary ones ($p = 0.0171$) when
supervising a highly competent robot. We also find that physical effort
positively correlates with correction precision, providing empirical evidence
to support this common assumption. We also find that this correlation is
significantly weaker for an incompetent robot with legible motions than an
incompetent robot with predictable motions ($p = 0.0075$). Our findings offer
insights for accounting for competency and legibility when designing robot
interaction behaviors and learning task objectives from corrections.