Risk-aware Path and Motion Planning for a Tethered Aerial Visual Assistant in Unstructured or Confined Environments
Xuesu Xiao

TL;DR
This paper develops a risk-aware path planning algorithm for a tethered UAV to serve as a visual assistant in unstructured environments, improving safety and viewpoint quality without additional crew.
Contribution
It introduces a novel high-level planning algorithm that balances viewpoint quality and motion risk for tethered UAVs in complex environments.
Findings
Successfully planned safe, high-quality viewpoints in experimental scenarios.
Demonstrated effective tether-based localization with low computational overhead.
Validated the approach on a tethered UAV platform in unstructured environments.
Abstract
This research aims at developing path and motion planning algorithms for a tethered Unmanned Aerial Vehicle (UAV) to visually assist a teleoperated primary robot in unstructured or confined environments. The emerging state of the practice for nuclear operations, bomb squad, disaster robots, and other domains with novel tasks or highly occluded environments is to use two robots, a primary and a secondary that acts as a visual assistant to overcome the perceptual limitations of the sensors by providing an external viewpoint. However, the benefits of using an assistant have been limited for at least three reasons: (1) users tend to choose suboptimal viewpoints, (2) only ground robot assistants are considered, ignoring the rapid evolution of small unmanned aerial systems for indoor flying, (3) introducing a whole crew for the second teleoperated robot is not cost effective, may introduce…
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Taxonomy
TopicsRobotic Path Planning Algorithms · Robotics and Sensor-Based Localization · Distributed Control Multi-Agent Systems
