Collaborative rover-copter path planning and exploration with temporal logic specifications based on Bayesian update under uncertain environments
Kazumune Hashimoto, Natsuko Tsumagari, Toshimitsu Ushio

TL;DR
This paper presents a collaborative approach for rover and copter path planning under environmental uncertainty, using Bayesian updates and temporal logic to optimize mission success and exploration efficiency.
Contribution
It introduces a novel integrated framework combining Bayesian belief updates, automata-based model checking, and entropy-driven exploration for rover-copter coordination.
Findings
Effective reduction of environmental uncertainties through active exploration.
Successful synthesis of optimal rover policies satisfying temporal logic specifications.
Numerical examples demonstrate improved mission efficiency and uncertainty management.
Abstract
This paper investigates a collaborative rover-copter path planning and exploration with temporal logic specifications under uncertain environments. The objective of the rover is to complete a mission expressed by a syntactically co-safe linear temporal logic (scLTL) formula, while the objective of the copter is to actively explore the environment and reduce its uncertainties, aiming at assisting the rover and enhancing the efficiency of the mission completion. To formalize our approach, we first capture the environmental uncertainties by environmental beliefs of the atomic propositions, under an assumption that it is unknown which properties (or, atomic propositions) are satisfied in each area of the environment. The environmental beliefs of the atomic propositions are updated according to the Bayes rule based on the Bernoulli-type sensor measurements provided by both the rover and the…
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