Automatic Hierarchical Classification of Kelps Using Deep Residual Features.

Journal: Sensors (Basel, Switzerland)
Published Date:

Abstract

Across the globe, remote image data is rapidly being collected for the assessment of benthic communities from shallow to extremely deep waters on continental slopes to the abyssal seas. Exploiting this data is presently limited by the time it takes for experts to identify organisms found in these images. With this limitation in mind, a large effort has been made globally to introduce automation and machine learning algorithms to accelerate both classification and assessment of marine benthic biota. One major issue lies with organisms that move with swell and currents, such as kelps. This paper presents an automatic hierarchical classification method local binary classification as opposed to the conventional flat classification to classify kelps in images collected by autonomous underwater vehicles. The proposed kelp classification approach exploits learned feature representations extracted from deep residual networks. We show that these generic features outperform the traditional off-the-shelf CNN features and the conventional hand-crafted features. Experiments also demonstrate that the hierarchical classification method outperforms the traditional parallel multi-class classifications by a significant margin (90.0% vs. 57.6% and 77.2% vs. 59.0%) on Benthoz15 and Rottnest datasets respectively. Furthermore, we compare different hierarchical classification approaches and experimentally show that the sibling hierarchical training approach outperforms the inclusive hierarchical approach by a significant margin. We also report an application of our proposed method to study the change in kelp cover over time for annually repeated AUV surveys.

Authors

  • Ammar Mahmood
    Computer Science and Software Engineering, The University of Western Australia, Crawley, WA 6009, Australia.
  • Ana Giraldo Ospina
    School of Biological Sciences and Oceans Institute, The University of Western Australia, Crawley, WA 6009, Australia.
  • Mohammed Bennamoun
    School of Physics, Mathematics and Computing, University of Western Australia, Australia.
  • Senjian An
    Department of Computer Science and Software Engineering, The University of Western Australia, Australia. Electronic address: senjian.an@uwa.edu.au.
  • Ferdous Sohel
    Department of Information Technology, Mathematics and Statistics, College of Science, Health, Engineering and Education, Murdoch University, Murdoch, Australia.
  • Farid Boussaid
    Department of Electrical, Electronic and Computer Engineering, The University of Western Australia, Australia.
  • Renae Hovey
    School of Biological Sciences and Oceans Institute, The University of Western Australia, Crawley, WA 6009, Australia.
  • Robert B Fisher
    School of Informatics, University of Edinburgh, Edinburgh EH8 9AB, UK. rbf@inf.ed.ac.uk.
  • Gary A Kendrick
    School of Biological Sciences and Oceans Institute, The University of Western Australia, Crawley, WA 6009, Australia.