Decision Making for Rapid Information Acquisition in the Reconnaissance of Random Fields
Dimitar Baronov, John Baillieul

TL;DR
This paper develops a theoretical framework for robot reconnaissance of unknown random fields, focusing on rapid topological feature discovery using information theory, and validates the approach through human-robot experiments.
Contribution
It introduces a novel information-theoretic approach for topology-guided exploration that does not require prior environmental knowledge.
Findings
New figures of merit for exploration strategies
Theoretical foundation for rapid topological feature discovery
Experimental validation with human-robot reconnaissance exercises
Abstract
Research into several aspects of robot-enabled reconnaissance of random fields is reported. The work has two major components: the underlying theory of information acquisition in the exploration of unknown fields and the results of experiments on how humans use sensor-equipped robots to perform a simulated reconnaissance exercise. The theoretical framework reported herein extends work on robotic exploration that has been reported by ourselves and others. Several new figures of merit for evaluating exploration strategies are proposed and compared. Using concepts from differential topology and information theory, we develop the theoretical foundation of search strategies aimed at rapid discovery of topological features (locations of critical points and critical level sets) of a priori unknown differentiable random fields. The theory enables study of efficient reconnaissance strategies…
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Taxonomy
TopicsGuidance and Control Systems · Artificial Immune Systems Applications
