Autonomous Visual Fish Pen Inspections for Estimating the State of Biofouling Buildup Using ROV -- Extended Abstract
Matej Fabijani\'c, Nadir Kapetanovi\'c, Nikola Mi\v{s}kovi\'c

TL;DR
This paper presents an autonomous ROV system equipped with AI-based image segmentation to automate fish cage inspections and accurately estimate biofouling buildup, reducing human risk and operational costs in aquaculture.
Contribution
It introduces a complete autonomous inspection solution combining control algorithms, image segmentation, and biofouling estimation for fish cage monitoring.
Findings
ROV with acoustic positioning can operate autonomously.
AI-based image segmentation accurately estimates biofouling levels.
The system provides reliable distance and biofouling assessments.
Abstract
The process of fish cage inspections, which is a necessary maintenance task at any fish farm, be it small scale or industrial, is a task that has the potential to be fully automated. Replacing trained divers who perform regular inspections with autonomous marine vehicles would lower the costs of manpower and remove the risks associated with humans performing underwater inspections. Achieving such a level of autonomy implies developing an image processing algorithm that is capable of estimating the state of biofouling buildup. The aim of this work is to propose a complete solution for automating the said inspection process; from developing an autonomous control algorithm for an ROV, to automatically segmenting images of fish cages, and accurately estimating the state of biofouling. The first part is achieved by modifying a commercially available ROV with an acoustic SBL positioning…
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Taxonomy
TopicsWater Quality Monitoring Technologies
