Spatial abstraction for autonomous robot navigation.

Journal: Cognitive processing
Published Date:

Abstract

Optimal navigation for a simulated robot relies on a detailed map and explicit path planning, an approach problematic for real-world robots that are subject to noise and error. This paper reports on autonomous robots that rely on local spatial perception, learning, and commonsense rationales instead. Despite realistic actuator error, learned spatial abstractions form a model that supports effective travel.

Authors

  • Susan L Epstein
    Department of Computer Science, Hunter College of The City University of New York, New York, NY, USA, susan.epstein@hunter.cuny.edu.
  • Anoop Aroor
  • Matthew Evanusa
  • Elizabeth I Sklar
  • Simon Parsons