Augmenting biologging with supervised machine learning to study behavior of the medusa .

Journal: The Journal of experimental biology
Published Date:

Abstract

Zooplankton play critical roles in marine ecosystems, yet their fine-scale behavior remains poorly understood because of the difficulty in studying individuals Here, we combine biologging with supervised machine learning (ML) to propose a pipeline for studying behavior of larger zooplankton such as jellyfish. We deployed the ITAG, a biologging package with high-resolution motion sensors designed for soft-bodied invertebrates, on eight in Monterey Bay, using the tether method for retrieval. By analyzing simultaneous video footage of the tagged jellyfish, we developed ML methods to: (1) identify periods of tag data corrupted by the tether method, which may have compromised prior research findings, and (2) classify jellyfish behaviors. Our tools yield characterizations of fine-scale jellyfish activity and orientation over long durations, and we conclude that it is essential to develop behavioral classifiers on rather than laboratory data.

Authors

  • Clara Fannjiang
    Research and Development, Monterey Bay Aquarium Research Institute, Moss Landing, CA 95039, USA clarafy@berkeley.edu.
  • T Aran Mooney
    Biology Department, Woods Hole Oceanographic Institution, Woods Hole, MA 02543, USA.
  • Seth Cones
    Biology Department, Woods Hole Oceanographic Institution, Woods Hole, MA 02543, USA.
  • David Mann
    Loggerhead Instruments, FL 34238, USA.
  • K Alex Shorter
    Department of Mechanical Engineering, University of Michigan, Ann Arbor, MI 48109, USA.
  • Kakani Katija
    Research and Development, Monterey Bay Aquarium Research Institute, Moss Landing, CA 95039, USA.