Simulating Visual Learning and Optical Illusions via a Network-Based Genetic Algorithm

ORAL

Abstract

We present a neural network model that uses a genetic algorithm to identify spatial patterns. We show that the model both learns and reproduces common visual patterns and optical illusions. Surprisingly, we find that the illusions generated are a direct consequence of the network architecture used. We discuss the implications of our results and the insights that we gain on how humans fall for optical illusions

Authors

  • Theodore Siu

    Rutgers University Department of Physics

  • Miguel Vivar Lazo

    Rutgers University Department of Biomedical Engineering, Rutgers University

  • Troy Shinbrot

    Rutgers University Department of Physics