NEREON - An Underwater Dataset for Monocular Depth Estimation

Joño M. M. Dionísio, Pedro N. A. A. S. Pereira, Pedro N. Leite,Francisco S. Neves,João Manuel R. S. Tavares,Andry M. Pinto

OCEANS 2023 - Limerick(2023)

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Abstract
Structures associated with offshore wind energy production require an arduous and cyclical inspection and maintenance (O&M) procedure. Moreover, the harsh challenges introduced by sub-sea phenomena hamper visibility, considerably affecting underwater missions. The lack of quality 3D information within these environments hinders the applicability of autonomous solutions in close-range navigation, fault inspection and intervention tasks since these have a very poor perception of the surrounding space. Deep learning techniques are widely used to solve these challenges in aerial scenarios. The developments in this subject are limited regarding underwater environments due to the lack of publicly disseminated underwater information. This article presents a new underwater dataset: NEREON, containing both 2D and 3D data gathered within real underwater environments at the ATLANTIS Coastal Test Centre. This dataset is adequate for monocular depth estimation tasks, which can provide useful information during O&M missions. With this in mind, a benchmark comparing different deep learning approaches in the literature was conducted and presented along with the NEREON dataset.
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Key words
aerial scenarios,ATLANTIS Coastal Test Centre,autonomous solutions,close-range navigation,cyclical inspection,deep learning techniques,different deep learning approaches,fault inspection,harsh challenges,intervention tasks,monocular depth estimation tasks,NEREON dataset,offshore wind energy production,poor perception,publicly disseminated underwater information,quality 3D information,sub-sea phenomena,surrounding space,underwater dataset,underwater environments,underwater missions
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