Deep Learning--Based Bathymetry Mapping from Multispectral Satellite Data Around Europa Island

Khishma Modoosoodun Nicolas, Lucas Drumetz, Sébastien Lefèvre, Dirk Tiede, Touria Bajjouk, Jean-Christophe Burnel

Research output: Chapter in Book/Report/Conference proceeding/Legal commentaryChapter in BookResearchpeer-review

Abstract

Bathymetry studies are important to monitor the changes occurring in coastal topographies, to update navigation charts, and to understand the dynamics of the marine environment. Satellite-derived bathymetry enables rapid mapping of large coastal areas through measurement of optical penetration of the water column. In this study, bathymetry prediction is investigated using Pleiades multispectral satellite data. This research work explores the possibility of using very-high-resolution multispectral satellite data with a deep learning U-Net-inspired neural network architecture to infer bathymetry estimates around Europa Island (22o20textasciiacutexS, 40o22textasciiacutexE), which is a coralline island in the Mozambique Channel. This study is among the first to provide an overview suitable for bathymetry mapping using a deep learning approach based on optical satellite data. An airborne light detection and ranging (LiDAR) dataset of 1 m resolution is used as ground truth to train the model. From experiments, the overall accuracy evaluation of the model shows a good relationship (R2 = 0.99, standard error = 0.492) between the predicted and reference depth values that satisfy the International Hydrographic Organization (IHO) S-57 Category of Zone of Confidence (CATZOC) levels A1, A2, B, and C (IHO, 2014). These predicted bathymetry values could potentially be incorporated into electronic navigational charts. The image reconstruction shows accurate results to estimate bathymetry in the shallow waters with mean absolute error not exceeding 1.5 m in that case. The U-Net-inspired deep learning technique exhibits promising outcomes to predict water depth from very-high-resolution satellite data to operate bathymetry mapping automatically over a wide area.
Original languageEnglish
Title of host publicationEuropean Spatial Data for Coastal and Marine Remote Sensing
EditorsSimona Niculescu
Place of PublicationCham
PublisherSpringer International Publishing
Pages97-111
Number of pages15
ISBN (Print)978-3-031-16213-8
DOIs
Publication statusPublished - 2023

Publication series

NameEuropean Spatial Data for Coastal and Marine Remote Sensing

Keywords

  • bathymetry mapping
  • deep learning
  • europa island
  • lidar
  • pleiades satellite
  • remote sensing
  • u-net architecture

Fields of Science and Technology Classification 2012

  • 107 Other Natural Sciences

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