Goal-oriented robot navigation learning using a multi-scale space representation.

Journal: Neural networks : the official journal of the International Neural Network Society
Published Date:

Abstract

There has been extensive research in recent years on the multi-scale nature of hippocampal place cells and entorhinal grid cells encoding which led to many speculations on their role in spatial cognition. In this paper we focus on the multi-scale nature of place cells and how they contribute to faster learning during goal-oriented navigation when compared to a spatial cognition system composed of single scale place cells. The task consists of a circular arena with a fixed goal location, in which a robot is trained to find the shortest path to the goal after a number of learning trials. Synaptic connections are modified using a reinforcement learning paradigm adapted to the place cells multi-scale architecture. The model is evaluated in both simulation and physical robots. We find that larger scale and combined multi-scale representations favor goal-oriented navigation task learning.

Authors

  • M Llofriu
    University of South Florida, United States; Universidad de la Republica, Uruguay. Electronic address: mllofriualon@mail.usf.edu.
  • G Tejera
    Universidad de la Republica, Uruguay.
  • M Contreras
    University of Arizona, United States.
  • T Pelc
    University of Arizona, United States.
  • J M Fellous
    University of Arizona, United States.
  • A Weitzenfeld