Local map extrapolation in dynamic environments

Systems, Man and Cybernetics(2014)

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摘要
We present a generative approach to perform robot mapping that is based on an intelligent integration of static and dynamic entity classes within an environment, in order to extrapolate map information at various resolutions. Our framework differentiates from the conventional standpoint where different mapping levels are overlaid on one another, by fusing information from different mapping levels that allows us to infer new information within partially mapped environments. Towards this goal, we develop a class-dependent map extrapolation function that captures the discriminative relation between an environment entity and the mapping procedure. We illustrate the advantages in using heterogeneous contextual information when mapping an environment using a prototype implementation of our approach on an indoor robot platform, giving very promising results.
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关键词
extrapolation,image fusion,mobile robots,robot vision,class-dependent map extrapolation function,dynamic entity classes,dynamic environments,heterogeneous contextual information,indoor robot platform,information fusion,local map extrapolation,map information extrapolation,partially mapped environments,robot mapping,static entity classes
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