Find My Office: Navigating Real Space From Semantic Descriptions

2016 IEEE International Conference on Robotics and Automation (ICRA)(2016)

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摘要
This paper shows that by using only symbolic language phrases, a mobile robot can purposefully navigate to specified rooms in previously unexplored environments. The robot intelligently organises a symbolic language description of the unseen environment and "imagines" a representative map, called the abstract map. The abstract map is an internal representation of the topological structure and spatial layout of symbolically defined locations. To perform goal-directed exploration, the abstract map creates a high-level semantic plan to reason about spaces beyond the robot's known world. While completing the plan, the robot uses the metric guidance provided by a spatial layout, and grounded observations of door labels, to efficiently guide its navigation. The system is shown to complete exploration in unexplored spaces by travelling only 13.3 % further than the optimal path.
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关键词
real space navigation,semantic descriptions,symbolic language phrases,mobile robot,symbolic language description,representative map,abstract map,topological structure representation,spatial layout representation,symbolically defined locations,goal-directed exploration,high-level semantic plan,metric guidance,door labels
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