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Towards bio-inspired unsupervised representation learning for indoor aerial navigation (2106.09326v1)

Published 17 Jun 2021 in cs.RO and cs.AI

Abstract: Aerial navigation in GPS-denied, indoor environments, is still an open challenge. Drones can perceive the environment from a richer set of viewpoints, while having more stringent compute and energy constraints than other autonomous platforms. To tackle that problem, this research displays a biologically inspired deep-learning algorithm for simultaneous localization and mapping (SLAM) and its application in a drone navigation system. We propose an unsupervised representation learning method that yields low-dimensional latent state descriptors, that mitigates the sensitivity to perceptual aliasing, and works on power-efficient, embedded hardware. The designed algorithm is evaluated on a dataset collected in an indoor warehouse environment, and initial results show the feasibility for robust indoor aerial navigation.

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Authors (5)
  1. Ni Wang (12 papers)
  2. Tim Verbelen (55 papers)
  3. Matthias Hartmann (3 papers)
  4. Bart Dhoedt (47 papers)
  5. Ozan Catal (7 papers)
Citations (1)

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