A benthic substrate classification method for seabed images using deep learning: application to management of deep-sea coral reefs.

Published online
23 Dec 2023
Content type
Journal article
Journal title
Journal of Applied Ecology
DOI
10.1111/1365-2664.14408

Author(s)
Jackett, C. & Althaus, F. & Maguire, K. & Farazi, M. & Scoulding, B. & Untiedt, C. & Ryan, T. & Shanks, P. & Brodie, P. & Williams, A.
Contact email(s)
chris.jackett@csiro.au

Publication language
English

Abstract

Protecting deep-sea coral-based vulnerable marine ecosystems (VMEs) from human impacts, particularly bottom trawling, is a major conservation challenge in world oceans. Management processes for these ecosystems are weakened by key uncertainties that could be substantially addressed by having much greater volumes of quantitative image-derived data that detail the distribution and abundance of coral reefs and the nature of impacts upon them. Considerably greater volumes of data could be available if the resource costs of image annotation are reduced. In this paper we propose a solution: a deep learning system capable of automatically identifying reef-building stony corals amongst other seabed substrata in much larger volumes of seabed imagery than was previously possible. Using a previously annotated dataset, we trained a convolutional neural network on approximately 70,000 classified images ('snips') comprising six benthic substrate classes, including reef-building stony coral-'coral matrix'. Model performance improvements, chiefly by dataset cleaning, transfer learning and hyperparameter optimisation, resulted in the final trained model achieving validation accuracy of 98.19%. The classification was robust: benthic substrate types were accurately differentiated, and in some cases more consistently than was achieved by human annotators.

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