An experimental methodology for automated detection of surface turbulence features in tidal stream environments

  • James Slingsby
  • , Beth Scott
  • , Louise Kregting
  • , Jason McIlvenny
  • , Jared Wilson
  • , Fanny Helleux
  • , Benjamin J. Williamson* (Corresponding Author)
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

1 Downloads (Pure)

Abstract

Tidal stream environments are important areas of marine habitat for the development of marine renewable energy (MRE) sources and as foraging hotspots for megafaunal species (seabirds and marine mammals). Hydrodynamic features can promote prey availability and foraging efficiency that influences megafaunal foraging success and behaviour, with the potential for animal interactions with MRE devices. Uncrewed aerial vehicles (UAVs) offer a novel tool for the fine-scale data collection of surface turbulence features and animals, which is not possible through other techniques, to provide information on the potential environmental impacts of anthropogenic developments. However, large imagery datasets are time-consuming to manually review and analyse. This study demonstrates an experimental methodology for the automated detection of turbulence features within UAV imagery. A deep learning architecture, specifically a Faster R-CNN model, was used to autonomously detect kolk-boils within UAV imagery of a tidal stream environment. The model was trained on pre-existing, labelled images of kolk-boils that were pre-treated using a suite of image enhancement techniques based on the environmental conditions present within each image. A 75-epoch model variant provided the highest average recall and precision values; however, it appeared to be limited by sub-optimal detections of false positive values. Although further development is required, including the creation of standardised image data pools, increased model benchmarking and the advancement of tailored pre-processing techniques, this work demonstrates the viability of utilising deep learning to automate the detection of surface turbulence features within a tidal stream environment.
Original languageEnglish
Article number6170
Number of pages14
JournalSensors
Volume24
Issue number19
Early online date24 Sept 2024
DOIs
Publication statusPublished - 1 Oct 2024

Bibliographical note

Acknowledgments
We gratefully acknowledge the support of colleagues at Marine Scotland Science, the crew/scientists of the MRV Scotia 2016/2018 cruises (particularly Chief Scientists Eric Armstrong and Adrian Tait), and ERI interns: Gael Gelis and Martin Forestier.

Data Availability Statement

The data underlying this article will be shared on reasonable request to the corresponding author.

Funding

This work was funded by the Bryden Centre project, supported by the European Union’s INTERREG VA Programme, and managed by the Special EU Programmes Body (SEUPB). The views and opinions expressed in this paper do not necessarily reflect those of the European Commission or the Special EU Programmes Body (SEUPB). Aspects of this research were also funded by a Royal Society Research Grant [RSG\R1\180430], the NERC VertIBase project [NE/N01765X/1], the UK Department for Business, Energy, and Industrial Strategy’s offshore energy Strategic Environmental Assessment programme, and EPSRC Supergen ORE Hub [EP/S000747/1].

FundersFunder number
European Commission
The Royal Society RSG\R1\180430
Natural Environment Research CouncilNE/N01765X/1
Department for Business, Energy, and Industrial Strategy
Engineering and Physical Sciences Research CouncilEP/S000747/1

    UN SDGs

    This output contributes to the following UN Sustainable Development Goals (SDGs)

    1. SDG 7 - Affordable and Clean Energy
      SDG 7 Affordable and Clean Energy
    2. SDG 14 - Life Below Water
      SDG 14 Life Below Water

    Keywords

    • environmental monitoring
    • remote sensing
    • marine renewables
    • machine learning
    • deep learning

    Fingerprint

    Dive into the research topics of 'An experimental methodology for automated detection of surface turbulence features in tidal stream environments'. Together they form a unique fingerprint.

    Cite this