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Self-Supervised Marine Organism Detection From Underwater Images | IEEE Journals & Magazine | IEEE Xplore

Self-Supervised Marine Organism Detection From Underwater Images


Abstract:

In recent years, in light of the significant progress in deep learning on general object detection, research on marine organism detection has become increasingly popular....Show More

Abstract:

In recent years, in light of the significant progress in deep learning on general object detection, research on marine organism detection has become increasingly popular. However, manual annotation of marine organism images usually requires specialized expertise, resulting in a scarcity of labeled data for research purposes. In addition, the complex and dynamic marine environment leads to varying degrees of light absorption and scattering, causing severe degradation issues in the collected images. These factors hinder the acquisition of high-quality representations for subsequent detection objectives. To overcome the reliance on annotated marine data sets and derive high-quality representations from extensive unlabeled and degraded data, we propose a self-supervised marine organism detection (SMOD) framework. To the best of the authors' knowledge, it is the first time that self-supervised learning has been introduced into the task of marine organism object detection. Specifically, in order to improve the quality of learned image representation from degraded data, a set of underwater augmentation strategies to improve the perceptional quality of underwater images is designed. To further address the challenging issue posed by numerous marine objects and diverse backgrounds, an underwater attention module is elaborately devised such that the model prioritizes objects over backgrounds during representation learning. Experimental results on URPC2021 data set show that our SMOD achieves competitive performance in the marine organism object detection task.
Published in: IEEE Journal of Oceanic Engineering ( Volume: 50, Issue: 1, January 2025)
Page(s): 120 - 135
Date of Publication: 14 October 2024

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I. Introduction

Marine organism detection (MOD) plays an extremely important role in the marine ecosystem, environment monitoring, and marine fishery [1], [2], [3], [4]. In order to capture high-quality images or videos of marine organisms, researchers have made great efforts in-situ and on-site using modern underwater vehicles, such as autonomous underwater vehicles (AUVs) [5], [6], [7], [8] and remotely operated vehicles (ROVs), which have provided strong data support for both MOD and the other relevant scientific researches.

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References

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