Find your Way by Observing the Sun and Other Semantic Cues

2017 IEEE International Conference on Robotics and Automation (ICRA)(2016)

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摘要
In this paper we present a robust, efficient and affordable approach to self-localization which does not require neither GPS nor knowledge about the appearance of the world. Towards this goal, we utilize freely available cartographic maps and derive a probabilistic model that exploits semantic cues in the form of sun direction, presence of an intersection, road type, speed limit as well as the ego-car trajectory in order to produce very reliable localization results. Our experimental evaluation shows that our approach can localize much faster (in terms of driving time) with less computation and more robustly than competing approaches, which ignore semantic information.
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关键词
self-localization approach,cartographic maps,probabilistic model,semantic cues,sun direction,road type,speed limit,ego-car trajectory,driving time
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