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A robust, qualitative method for robot spatial learning

Benjamin Kuipers, Yung-Tai Byun

发表年份
1988
引用次数
119

摘要

We present a qualitative method for a mobile robot to explore an unknown environment and learn a map, which can be robust in the face of various possible errors in the real world. Procedural knowledge for the movement, topological model for the structure of the environment, and metrical information for geometrical accuracy are separately represented in our method, whereas traditional methods describe the environment mainly by metrical information. The topological model consists of distinctive places and local travel edges linking nearby distinctive places. A distinctive place is defined as the local maximum of some measure of distinctiveness appropriate to its immediate neighborhood, and is found by a hill-climbing search. Local travel edges are defined in terms of local control strategies required for wavel. How to find distinctive places and follow edges is the procedural knowledge which the robot learns dynamically during exploration stage and guides the robot in the navigation stage. An accurate topological model is created by linking places and edges; and allows metrical information to be ac- cumulated with reduced vulnerability to metrical errors. We describe a working simulation in which a robot, NX, with range sensors explores a variety of 2-D environments and we give its successful results under varying levels of random sensor error.

关键词

RobotOptimal distinctiveness theoryComputer scienceMobile robotArtificial intelligenceRange (aeronautics)Variety (cybernetics)Computer visionTopology (electrical circuits)Mathematics

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