Unsupervised Learning of Terrain Appearance for Automated Coral Reef Exploration

  • Authors:
  • Philippe Giguere;Gregory Dudek;Christopher Prahacs;Nicolas Plamondon;Katrine Turgeon

  • Affiliations:
  • -;-;-;-;-

  • Venue:
  • CRV '09 Proceedings of the 2009 Canadian Conference on Computer and Robot Vision
  • Year:
  • 2009

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Abstract

We describe a navigation and coverage system based on unsupervised learning driven by visual input. Our objectiveis to allow a robot to remain continuously moving above a terrain of interest using visual feedback to avoid leavingthis region. As a particular application domain, we are interested in doing this in open water, but the approach makes few domain-specific assumptions. Specifically, our system employed an unsupervised learning technique to train a k-Nearest Neighbor classifier to distinguish between images of different terrain types through image segmentation. A simple random exploration strategy was used with this classifier to allow the robot to collect data while remaining confined above a coral reef, without the need to maintain pose estimates. We tested the technique in simulation, and a live deployment was conducted in open water. During the latter, the robot successfully navigated autonomously above acoral reef during a 20 minutes period.