Frontiers in Marine Science (Nov 2023)

Toward the development of smart capabilities for understanding seafloor stretching morphology and biogeographic patterns via DenseNet from high-resolution multibeam bathymetric surveys for underwater vehicles

  • Rui Nian,
  • Shasha Liu,
  • Zongcan Lu,
  • Xiaoyu Li,
  • Shidong Ren,
  • Yuqi Qian,
  • Qiuying Li,
  • Guotong He,
  • Kexin Shi,
  • Guoyao Zhang,
  • Lina Zang,
  • Luyao Li,
  • Bo He,
  • Tianhong Yan,
  • Xishuang Li

DOI
https://doi.org/10.3389/fmars.2023.1205142
Journal volume & issue
Vol. 10

Abstract

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The increasing use of underwater vehicles facilitates deep-sea exploration at a wide range of depths and spatial scales. In this paper, we make an initial attempt to develop online computing strategies to identify seafloor categories and predict biogeographic patterns with a deep learning-based architecture, DenseNet, integrated with joint morphological cues, with the expectation of potentially developing its embedded smart capacities. We utilized high-resolution multibeam bathymetric measurements derived from MBES and denoted a collection of joint morphological cues to help with semantic mapping and localization. We systematically strengthened dominant feature propagation and promoted feature reuse via DenseNet by applying the channel attention module and spatial pyramid pooling. From our experiment results, the seafloor classification accuracy reached up to 89.87%, 82.01%, and 73.52% on average in terms of PA, MPA, and MIoU metrics, achieving comparable performances with the state-of-the-art deep learning frameworks. We made a preliminary study on potential biogeographic distribution statistics, which allowed us to delicately distinguish the functionality of probable submarine benthic habitats. This study demonstrates the premise of using underwater vehicles through unbiased means or pre-programmed path planning to quantify and estimate seafloor categories and the exhibited fine-scale biogeographic patterns.

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