A Deep Learning Based Behavioral Approach to Indoor Autonomous Navigation

2018 IEEE International Conference on Robotics and Automation (ICRA)(2018)

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摘要
We present a semantically rich graph representation for indoor robotic navigation. Our graph representation encodes: semantic locations such as offices or corridors as nodes, and navigational behaviors such as enter office or cross a corridor as edges. In particular, our navigational behaviors operate directly from visual inputs to produce motor controls and are implemented with deep learning architectures. This enables the robot to avoid explicit computation of its precise location or the geometry of the environment, and enables navigation at a higher level of semantic abstraction. We evaluate the effectiveness of our representation by simulating navigation tasks in a large number of virtual environments. Our results show that using a simple sets of perceptual and navigational behaviors, the proposed approach can successfully guide the way of the robot as it completes navigational missions such as going to a specific office. Furthermore, our implementation shows to be effective to control the selection and switching of behaviors.
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关键词
navigational behaviors,deep learning architectures,semantic abstraction,navigation tasks,navigational missions,behavioral approach,indoor autonomous navigation,semantically rich graph representation,indoor robotic navigation,semantic locations
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