Self-Supervised Visual Place Recognition Learning in Mobile Robots
Place recognition is a critical component in robot navigation that enables it to re-establish previously visited locations, and simultaneously use this information to correct the drift incurred in its dead-reckoned estimate. In this work, we develop a self-supervised approach to place recognition in...
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Zusammenfassung: | Place recognition is a critical component in robot navigation that enables it
to re-establish previously visited locations, and simultaneously use this
information to correct the drift incurred in its dead-reckoned estimate. In
this work, we develop a self-supervised approach to place recognition in
robots. The task of visual loop-closure identification is cast as a metric
learning problem, where the labels for positive and negative examples of
loop-closures can be bootstrapped using a GPS-aided navigation solution that
the robot already uses. By leveraging the synchronization between sensors, we
show that we are able to learn an appropriate distance metric for arbitrary
real-valued image descriptors (including state-of-the-art CNN models), that is
specifically geared for visual place recognition in mobile robots. Furthermore,
we show that the newly learned embedding can be particularly powerful in
disambiguating visual scenes for the task of vision-based loop-closure
identification in mobile robots. |
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DOI: | 10.48550/arxiv.1905.04453 |