Semantic mapping and navigation with visual planar landmarks

Ubiquitous Robots and Ambient Intelligence(2012)

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摘要
We propose a semantic map representation and human-like navigation strategies for the mobile robot with a monocular camera. First, we develop a method to automatically detect landmarks, which make up a perceived planar region. Next, we build a vision-based map with the detected visual planar landmarks. To build a map with a single camera, we use the concept of bearing-SLAM. The landmark bearings are measured by a camera from the detected planar regions. By measuring two bearings between three feature points in the detected planar regions, we estimate the distance from the robot to the landmark for an observation model. After building a vision-based map, we extract semantic information. The proposed semantic map represents the topology of the environment with nodes (area and landmarks) and their spatial relationships. Next, we attempt to apply human navigation strategies for the robot navigation with semantic map. We apply strategies (path integration, view-dependent place recognition, reorientation, and active searching for additional landmarks) to mobile robots and demonstrate a human-like navigation system based on a semantic map.
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关键词
slam (robots),distance measurement,feature extraction,mobile robots,navigation,object detection,robot vision,additional landmark active searching,automatic landmark detection,bearing-slam concept,distance estimation,environment topology,feature point,human-like navigation strategy,landmark bearing measurement,map building,mobile robot,monocular camera,observation model,path integration,perceived planar region,reorientation,robot navigation,semantic information extraction,semantic map representation,single camera,spatial relationship,view-dependent place recognition,vision-based map,visual planar landmark,planar,slam,semantic map
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