Abstract

Deep-sea debris is a globally growing problem, which is negatively impacting biological and chemical ecosystems. More seriously, the debris is likely to persist in the deep sea for long periods. Fortunately, with the help of the debris detection system the submersibles can clean up the debris. An excellent classifier is critical to the debris detection system. Therefore, the objective of this study is to determine whether deep convolutional neural networks can distinguish the differences of debris and natural deep-sea environment, so as to effectively achieve deep-sea debris identification. First, a real deep-sea debris images dataset is constructed for further classification research based on an online deep-sea debris database owned by the Japan Agency for Marine-Earth Science and Technology. Second, the hybrid Shuffle-Xception network is constructed to classify the deep-sea image as metal, glass, plastic, rubber, fishing net & rope, natural debris, and cloth. Furthermore, five common convolutional neural networks (CNNs) frameworks are also employed to implement the classification process. Finally, the identification experiments are carried out to validate the performance of the proposed methodology. The results demonstrate that the proposed method is superior to the state-of-the-art CNN method and has the potential for deep-sea debris identification.

Highlights

  • M ARINE environment has always been getting more and more attention all over the world

  • It can be found that ShuffleXception, which uses group convolution and channel shuffle strategies, is always better than unused ones

  • Adopting the strategies will improve the network’s ability to identify seabed garbage. This is because the effect brought by the group convolution and the channel shuffle that makes the information fusion between groups allow

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Summary

Introduction

M ARINE environment has always been getting more and more attention all over the world. Debris is everywhere from the shallow seas to the open seas, from the coast to seabed [1], [2]. In most cases, these man-made marine trashes will eventually sink to the bottom of the sea [3]. Deep-sea debris causes more serious water pollution and greater damage to the ecological environment than garbage on the sea surface and beach [5]. Submersibles could solve this problem by surveying and picking up submerged marine debris from the seabed with the help of a debris detection system. An accurate deep-sea debris classification algorithm is essential for the detection system, and contributes to further scientific research on deep-sea debris and marine ecological protection

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