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Learning Your Way Without Map or Compass: Panoramic Target Driven Visual Navigation

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arxiv 1909.09295 v2 pith:J3OE2CVP submitted 2019-09-20 cs.RO cs.AIcs.CVcs.LG

Learning Your Way Without Map or Compass: Panoramic Target Driven Visual Navigation

classification cs.RO cs.AIcs.CVcs.LG
keywords navigationagentcompassenvironmentsframeworkgoallearningnavigate
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present a robot navigation system that uses an imitation learning framework to successfully navigate in complex environments. Our framework takes a pre-built 3D scan of a real environment and trains an agent from pre-generated expert trajectories to navigate to any position given a panoramic view of the goal and the current visual input without relying on map, compass, odometry, or relative position of the target at runtime. Our end-to-end trained agent uses RGB and depth (RGBD) information and can handle large environments (up to $1031m^2$) across multiple rooms (up to $40$) and generalizes to unseen targets. We show that when compared to several baselines our method (1) requires fewer training examples and less training time, (2) reaches the goal location with higher accuracy, and (3) produces better solutions with shorter paths for long-range navigation tasks.

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