Virtual Underwater Datasets for Autonomous Inspections
Ioannis Polymenis, Maryam Haroutunian, Rose Norman, David Trodden

TL;DR
This paper presents a method to generate realistic underwater image datasets using GANs, enabling improved training for underwater object detection and classification tasks despite limited real-world data.
Contribution
The study introduces a novel approach to create synthetic underwater datasets from laboratory images using GANs, addressing data scarcity in underwater AI applications.
Findings
Generated images closely resemble real underwater environments.
Artificial datasets improve underwater object classification.
Method overcomes limited access to real underwater images.
Abstract
Underwater Vehicles have become more sophisticated, driven by the off-shore sector and the scientific community's rapid advancements in underwater operations. Notably, many underwater tasks, including the assessment of subsea infrastructure, are performed with the assistance of Autonomous Underwater Vehicles (AUVs). There have been recent breakthroughs in Artificial Intelligence (AI) and, notably, Deep Learning (DL) models and applications, which have widespread usage in a variety of fields, including aerial unmanned vehicles, autonomous car navigation, and other applications. However, they are not as prevalent in underwater applications due to the difficulty of obtaining underwater datasets for a specific application. In this sense, the current study utilises recent advancements in the area of DL to construct a bespoke dataset generated from photographs of items captured in a…
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