Active Information Acquisition under Arbitrary Unknown Disturbances
Jennifer Wakulicz, He Kong, Salah Sukkarieh

TL;DR
This paper develops a method for planning sensor trajectories to track targets with unknown, arbitrary disturbances, providing performance guarantees and demonstrating effectiveness through simulations.
Contribution
It introduces a novel approach using an unknown input decoupled filter and reduced value iteration for robust target tracking under arbitrary disturbances.
Findings
The proposed method effectively tracks targets with unknown disturbances.
Performance guarantees are established for state and input tracking.
Simulations show improved tracking compared to greedy policies.
Abstract
Trajectory optimization of sensing robots to actively gather information of targets has received much attention in the past. It is well-known that under the assumption of linear Gaussian target dynamics and sensor models the stochastic Active Information Acquisition problem is equivalent to a deterministic optimal control problem. However, the above-mentioned assumptions regarding the target dynamic model are limiting. In real-world scenarios, the target may be subject to disturbances whose models or statistical properties are hard or impossible to obtain. Typical scenarios include abrupt maneuvers, jumping disturbances due to interactions with the environment, anomalous misbehaviors due to system faults/attacks, etc. Motivated by the above considerations, in this paper we consider targets whose dynamic models are subject to arbitrary unknown inputs whose models or statistical…
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