Unlocking the soundscape of coral reefs with artificial intelligence: pretrained networks and unsupervised learning win out.

Journal: PLoS computational biology
PMID:

Abstract

Passive acoustic monitoring can offer insights into the state of coral reef ecosystems at low-costs and over extended temporal periods. Comparison of whole soundscape properties can rapidly deliver broad insights from acoustic data, in contrast to detailed but time-consuming analysis of individual bioacoustic events. However, a lack of effective automated analysis for whole soundscape data has impeded progress in this field. Here, we show that machine learning (ML) can be used to unlock greater insights from reef soundscapes. We showcase this on a diverse set of tasks using three biogeographically independent datasets, each containing fish community (high or low), coral cover (high or low) or depth zone (shallow or mesophotic) classes. We show supervised learning can be used to train models that can identify ecological classes and individual sites from whole soundscapes. However, we report unsupervised clustering achieves this whilst providing a more detailed understanding of ecological and site groupings within soundscape data. We also compare three different approaches for extracting feature embeddings from soundscape recordings for input into ML algorithms: acoustic indices commonly used by soundscape ecologists, a pretrained convolutional neural network (P-CNN) trained on 5.2 million hrs of YouTube audio, and CNN's which were trained on each individual task (T-CNN). Although the T-CNN performs marginally better across tasks, we reveal that the P-CNN offers a powerful tool for generating insights from marine soundscape data as it requires orders of magnitude less computational resources whilst achieving near comparable performance to the T-CNN, with significant performance improvements over the acoustic indices. Our findings have implications for soundscape ecology in any habitat.

Authors

  • Ben Williams
    Department of Engineering, University of Cambridge, Cambridge, United Kingdom.
  • Santiago M Balvanera
    Centre for Biodiversity and Environment Research, Department of Genetics, Evolution and Environment, University College London, London, United Kingdom.
  • Sarab S Sethi
    Department of Mathematics, Imperial College London, London, SW7 2AZ, United Kingdom; s.sethi16@imperial.ac.uk.
  • Timothy A C Lamont
    Lancaster Environment Centre, Lancaster University, Lancaster, United Kingdom.
  • Jamaluddin Jompa
    Graduate School, Universitas Hasanuddin, Makassar, Indonesia.
  • Mochyudho Prasetya
    MARS Sustainable Solutions, Makassar, Indonesia.
  • Laura Richardson
    School of Ocean Sciences, Bangor University, Askew Street, Menai Bridge, Anglesey, United Kingdom.
  • Lucille Chapuis
    School of Biological Sciences, University of Bristol, Bristol, United Kingdom.
  • Emma Weschke
    School of Biological Sciences, University of Bristol, Bristol, United Kingdom.
  • Andrew Hoey
    Australian Research Council Centre of Excellence for Coral Reef Studies, James Cook University, Townsville, Queensland, Australia.
  • Ricardo Beldade
    Australian Research Council Centre of Excellence for Coral Reef Studies, James Cook University, Townsville, Queensland, Australia.
  • Suzanne C Mills
    CRIOBE, PSL Research University, Moorea, French Polynesia.
  • Anne Haguenauer
    CRIOBE, PSL Research University, Moorea, French Polynesia.
  • Frederic Zuberer
    CRIOBE, PSL Research University, Moorea, French Polynesia.
  • Stephen D Simpson
    School of Biological Sciences, University of Bristol, Bristol, United Kingdom.
  • David Curnick
    Zoological Society of London, Regents Park, London, United Kingdom.
  • Kate E Jones
    Centre for Biodiversity and Environment Research, Department of Genetics, Evolution and Environment, University College London, London, United Kingdom.