Planning to Chronicle
Hazhar Rahmani, Dylan A. Shell, and Jason M. O'Kane

TL;DR
This paper explores planning strategies for robots that observe uncertain processes with limited sensing, aiming to produce event chronicles matching complex specifications using a model-based approach and automata theory.
Contribution
It introduces a novel framework combining hidden Markov models and automata to plan sensor actions for observing event sequences with rich temporal specifications.
Findings
Effective planning algorithms for event observation
Performance metrics demonstrated in case studies
Framework supports complex event sequence specifications
Abstract
An important class of applications entails a robot monitoring, scrutinizing, or recording the evolution of an uncertain time-extended process. This sort of situation leads an interesting family of planning problems in which the robot is limited in what it sees and must, thus, choose what to pay attention to. The distinguishing characteristic of this setting is that the robot has influence over what it captures via its sensors, but exercises no causal authority over the evolving process. As such, the robot's objective is to observe the underlying process and to produce a `chronicle' of occurrent events, subject to a goal specification of the sorts of event sequences that may be of interest. This paper examines variants of such problems when the robot aims to collect sets of observations to meet a rich specification of their sequential structure. We study this class of problems by…
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