Emergent color categorization in a neural network trained for object recognition.

Journal: eLife
Published Date:

Abstract

Color is a prime example of categorical perception, yet it is unclear why and how color categories emerge. On the one hand, prelinguistic infants and several animals treat color categorically. On the other hand, recent modeling endeavors have successfully utilized communicative concepts as the driving force for color categories. Rather than modeling categories directly, we investigate the potential emergence of color categories as a result of acquiring visual skills. Specifically, we asked whether color is represented categorically in a convolutional neural network (CNN) trained to recognize objects in natural images. We systematically trained new output layers to the CNN for a color classification task and, probing novel colors, found borders that are largely invariant to the training colors. The border locations were confirmed using an evolutionary algorithm that relies on the principle of categorical perception. A psychophysical experiment on human observers, analogous to our primary CNN experiment, shows that the borders agree to a large degree with human category boundaries. These results provide evidence that the development of basic visual skills can contribute to the emergence of a categorical representation of color.

Authors

  • Jelmer P de Vries
    Experimental Psychology, Giessen University, Giessen, Germany.
  • Arash Akbarinia
    Department of General Psychology, Justus-Liebig University, D-35394 Giessen, Germany. Electronic address: arash.akbarinia@psychol.uni-giessen.de.
  • Alban Flachot
    Abteilung Allgemeine Psychologie, Giessen University, Germany.
  • Karl R Gegenfurtner
    Abteilung Allgemeine Psychologie, Giessen University, Germany.