Feb. 9, 2024, 5:43 a.m. | Giorgio Angelotti Caroline P. C. Chanel Adam H. M. Pinto Christophe Lounis Corentin Chauffaut Nicolas Drougard

cs.LG updates on arXiv.org arxiv.org

The integration of physiological computing into mixed-initiative human-robot interaction systems offers valuable advantages in autonomous task allocation by incorporating real-time features as human state observations into the decision-making system. This approach may alleviate the cognitive load on human operators by intelligently allocating mission tasks between agents. Nevertheless, accommodating a diverse pool of human participants with varying physiological and behavioral measurements presents a substantial challenge. To address this, resorting to a probabilistic framework becomes necessary, given the inherent uncertainty and partial …

advantages agents autonomous cognitive computing cs.ai cs.hc cs.lg cs.ma cs.ro decision features human integration making mission mixed observability offline operators performance real-time risk robot state systems tasks

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