Human-Centric Active Perception for Autonomous Observation

ICRA(2020)

引用 11|浏览33
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摘要
As robot autonomy improves, robots are increasingly being considered in the role of autonomous observation systems -- free-flying cameras capable of actively tracking human activity within some predefined area of interest. In this work, we formulate the autonomous observation problem through multi-objective optimization, presenting a novel Semi-MDP formulation of the autonomous human observation problem that maximizes observation rewards while accounting for both human- and robot-centric costs. We demonstrate that the problem can be solved with both scalarization-based Multi-Objective MDP methods and Constrained MDP methods, and discuss the relative benefits of each approach. We validate our work on activity tracking using a NASA Astrobee robot operating within a simulated International Space Station environment.
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关键词
autonomous observation systems,human activity,multiobjective optimization,autonomous human observation problem,robot-centric costs,scalarization-based MultiObjective MDP methods,NASA Astrobee robot operating,human-centric active perception,robot autonomy,SemiMDP formulation,constrained MDP method,NASA Astrobee robot
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