2022
DOI: 10.48550/arxiv.2202.07720
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Active Uncertainty Reduction for Human-Robot Interaction: An Implicit Dual Control Approach

Abstract: Predictive models are effective in reasoning about human motion, a crucial part that affects safety and efficiency in human-robot interaction. However, robots often lack access to certain key parameters of such models, for example, human's objectives, their level of distraction, and willingness to cooperate. Dual control theory addresses this challenge by treating unknown parameters as stochastic hidden states and identifying their values using information gathered during control of the robot. Despite its abil… Show more

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“…Model-based active exploration in MPCs has been suggested in [677,649]. [324] propose active uncertainty learning for motion planning with stochastic MPC.…”
Section: Applicationmentioning
confidence: 99%
“…Model-based active exploration in MPCs has been suggested in [677,649]. [324] propose active uncertainty learning for motion planning with stochastic MPC.…”
Section: Applicationmentioning
confidence: 99%