Simultaneous localization and planning on multiple map hypotheses

Intelligent Robots and Systems(2014)

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摘要
This paper presents a novel method to rank map hypotheses by the quality of localization they afford. The highest ranked hypothesis at any moment becomes the active representation that is used to guide the robot to its goal location. A single static representation is insufficient for navigation in dynamic environments where paths can be blocked periodically, a common scenario which poses significant challenges for typical planners. In our approach we simultaneously rank multiple map hypotheses by the influence that localization in each of them has on locally accurate odometry. This is done online for the current locally accurate window by formulating a factor graph of odometry relaxed by localization constraints. Comparison of the resulting perturbed odometry of each hypothesis with the original odometry yields a score that can be used to rank map hypotheses by their utility. We deploy the proposed approach on a real robot navigating a structurally noisy office environment. The configuration of the environment is physically altered outside the robots sensory horizon during navigation tasks to demonstrate the proposed approach of hypothesis selection.
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关键词
slam (robots),graph theory,path planning,robots,active representation,factor graph,hypothesis ranking,localization constraint,multiple map hypothesis,odometry,robot guidance,robot navigation,robots sensory horizon,simultaneous localization and planning,static representation,switches,planning,trajectory,navigation
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