TL;DR
This paper introduces a multi-objective ergodic search framework for robots, enabling balanced exploration of multiple information types in time-sensitive scenarios like disaster relief, with an efficient local optimization approach.
Contribution
It formulates the Multi-Objective Ergodic Search problem and proposes the Sequential Local Ergodic Search framework to efficiently approximate Pareto-optimal solutions.
Findings
SLES runs significantly faster than baseline methods.
It effectively balances conflicting information criteria.
The approach is suitable for time-critical search applications.
Abstract
Robots have the potential to perform search for a variety of applications under different scenarios. Our work is motivated by humanitarian assistant and disaster relief (HADR) where often it is critical to find signs of life in the presence of conflicting criteria, objectives, and information. We believe ergodic search can provide a framework for exploiting available information as well as exploring for new information for applications such as HADR, especially when time is of the essence. Ergodic search algorithms plan trajectories such that the time spent in a region is proportional to the amount of information in that region, and is able to naturally balance exploitation (myopically searching high-information areas) and exploration (visiting all locations in the search space for new information). Existing ergodic search algorithms, as well as other information-based approaches,…
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