Bayesian Active Edge Evaluation on Expensive Graphs
Sanjiban Choudhury, Siddhartha Srinivasa, Sebastian Scherer

TL;DR
This paper introduces a Bayesian active learning framework for efficiently evaluating edges in expensive graph-based planning, enabling robots to infer environment structure and reduce planning effort.
Contribution
It proposes a novel combination of DRD algorithms, DIRECT and BISECT, to actively select edges for evaluation, improving over passive lazy approaches.
Findings
Outperforms state-of-the-art algorithms on various robotic planning tasks
Reduces edge evaluation costs significantly in complex environments
Enables robots to infer environment structure during planning
Abstract
Robots operate in environments with varying implicit structure. For instance, a helicopter flying over terrain encounters a very different arrangement of obstacles than a robotic arm manipulating objects on a cluttered table top. State-of-the-art motion planning systems do not exploit this structure, thereby expending valuable planning effort searching for implausible solutions. We are interested in planning algorithms that actively infer the underlying structure of the valid configuration space during planning in order to find solutions with minimal effort. Consider the problem of evaluating edges on a graph to quickly discover collision-free paths. Evaluating edges is expensive, both for robots with complex geometries like robot arms, and for robots with limited onboard computation like UAVs. Until now, this challenge has been addressed via laziness i.e. deferring edge evaluation…
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