Explaining decisions of deep neural networks used for fish age prediction.

Journal: PloS one
Published Date:

Abstract

Age-reading of fish otoliths (ear stones) is important for the sustainable management of fish resources. However, the procedure is challenging and requires experienced readers to carefully examine annual growth zones. In a recent study, convolutional neural networks (CNNs) have been demonstrated to perform reasonably well on automatically predicting fish age from otolith images. In the present study, we carefully investigate the prediction rule learned by such neural networks to provide insight into the features that identify certain fish age ranges. For this purpose, a recent technique for visualizing and analyzing the predictions of the neural networks was applied to different versions of the otolith images. The results indicate that supplementary knowledge about the internal structure improves the results for the youngest age groups, compared to using only the contour shape attribute of the otolith. However, the contour shape and size attributes are, in general, sufficient for older age groups. In addition, within specific age ranges we find that the network tends to focus on particular areas of the otoliths and that the most discriminating factors seem to be related to the central part and the outer edge of the otolith. Explaining age predictions from otolith images as done in this study will hopefully help build confidence in the potential of deep learning algorithms for automatic age prediction, as well as improve the quality of the age estimation.

Authors

  • Alba Ordoñez
    Department of Statistical Analysis, Machine Learning and Image Analysis, Norwegian Computing Center, Oslo, Norway.
  • Line Eikvil
    Norwegian Computing Center, P.O. Box 114 Blindern, NO-0314 Oslo, Norway. Electronic address: line.eikvil@nr.no.
  • Arnt-Børre Salberg
    Norwegian Computing Center, Oslo, Norway.
  • Alf Harbitz
    Institute of Marine Research, Bergen, Norway.
  • Sean Meling Murray
    Department of Statistical Analysis, Machine Learning and Image Analysis, Norwegian Computing Center, Oslo, Norway.
  • Michael C Kampffmeyer
    Department of Physics and Technology, University of Tromsø, Tromsø, Norway.