Simultaneous Localization and Mapping Based on Semantic World Modelling

2014 European Modelling Symposium(2014)

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摘要
In mobile robotics the problem of simultaneous localization and mapping is quite complex. However, by using smart constraints, the problem can be reduced considerably. Instead of constraining the issue to a specific robotic system or its movement behavior, we show how semantic environment perception and modeling allows for another point of view and therefore a simple solution for the problem. We present a method for application independent localization and mapping based on semantic landmarks and the concept of visual odometry. Central starting point is a generic landmark definition, allowing for a reduction of the 3d localization problem to a more simple search for an affine transformation in 2d space. These semantic landmarks are simultaneously used to map the surrounding environment of the robot, resulting in a widely applicable world model.
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关键词
localization, visual odometry, mapping, SLAM, semantic landmarks
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