Characterization of Assistive Robot Arm Teleoperation: A Preliminary Study to Inform Shared Control
Assistive robotic devices can increase the independence of individuals with motor impairments. However, each person is unique in their level of injury, preferences, and skills, which moreover can change over time. Further, the amount of assistance required can vary throughout the day due to pain or...
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Zusammenfassung: | Assistive robotic devices can increase the independence of individuals with
motor impairments. However, each person is unique in their level of injury,
preferences, and skills, which moreover can change over time. Further, the
amount of assistance required can vary throughout the day due to pain or
fatigue, or over longer periods due to rehabilitation, debilitating conditions,
or aging. Therefore, in order to become an effective team member, the assistive
machine should be able to learn from and adapt to the human user. To do so, we
need to be able to characterize the user's control commands to determine when
and how autonomy should change to best assist the user. We perform a 20 person
pilot study in order to establish a set of meaningful performance measures
which can be used to characterize the user's control signals and as cues for
the autonomy to modify the level and amount of assistance. Our study includes 8
spinal cord injured and 12 uninjured individuals. The results unveil a set of
objective, runtime-computable metrics that are correlated with user-perceived
task difficulty, and thus could be used by an autonomy system when deciding
whether assistance is required. The results further show that metrics which
evaluate the user interaction with the robotic device, robot execution, and the
perceived task difficulty show differences among spinal cord injured and
uninjured groups, and are affected by the type of control interface used. The
results will be used to develop an adaptable, user-centered, and individually
customized shared-control algorithms. |
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DOI: | 10.48550/arxiv.2008.00109 |