Automating the assessment of biofouling in images using expert agreement as a gold standard
Nathaniel J. Bloomfield, Susan Wei, Bartholomew Woodham and, Peter Wilkinson, Andrew Robinson

TL;DR
This study develops a deep learning approach to automate biofouling assessment in water-immersed vessel images, achieving expert-level agreement and potentially reducing inspection costs and effort.
Contribution
It introduces a deep learning model trained on expert-annotated images to reliably classify biofouling severity, demonstrating automation's feasibility in biofouling assessment.
Findings
Expert annotations showed 89% agreement.
The deep learning model achieved similar agreement levels.
Automated assessment is feasible and effective.
Abstract
Biofouling is the accumulation of organisms on surfaces immersed in water. It is of particular concern to the international shipping industry because it increases fuel costs and presents a biosecurity risk by providing a pathway for non-indigenous marine species to establish in new areas. There is growing interest within jurisdictions to strengthen biofouling risk-management regulations, but it is expensive to conduct in-water inspections and assess the collected data to determine the biofouling state of vessel hulls. Machine learning is well suited to tackle the latter challenge, and here we apply deep learning to automate the classification of images from in-water inspections to identify the presence and severity of fouling. We combined several datasets to obtain over 10,000 images collected from in-water surveys which were annotated by a group biofouling experts. We compared the…
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