Best Viewpoints for External Robots or Sensors Assisting Other Robots
Jan Dufek, Xuesu Xiao, Robin R. Murphy

TL;DR
This paper develops a model to identify optimal external viewpoints for robots assisting other robots, improving task performance by selecting viewpoints based on affordance-specific clusters validated through expert studies.
Contribution
It introduces an affordance-based clustering approach to determine the most valuable external viewpoints for robotic assistance, enabling autonomous viewpoint selection.
Findings
Viewpoint values form statistically significant manifolds.
Viewpoint value depends on affordances, not robot type.
Best viewpoints significantly improve task performance.
Abstract
This work creates a model of the value of different external viewpoints of a robot performing tasks. The current state of the practice is to use a teleoperated assistant robot to provide a view of a task being performed by a primary robot; however, the choice of viewpoints is ad hoc and does not always lead to improved performance. This research applies a psychomotor approach to develop a model of the relative quality of external viewpoints using Gibsonian affordances. In this approach, viewpoints for the affordances are rated based on the psychomotor behavior of human operators and clustered into manifolds of viewpoints with the equivalent value. The value of 30 viewpoints is quantified in a study with 31 expert robot operators for 4 affordances (Reachability, Passability, Manipulability, and Traversability) using a computer-based simulator of two robots. The adjacent viewpoints with…
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