TECHNIQUES FOR CLASSIFYING SEABED SEDIMENTS USING SATELLITE IMAGES: A SYSTEMATIC REVIEW OF THE LITERATURELO

Authors

DOI:

https://doi.org/10.66104/nxfq0t06

Keywords:

remote sensing; marine sediments; machine learning; satellite imagery.

Abstract

This systematic literature review aims to analyze the main techniques for classifying seabed sediments from satellite imagery. The research was conducted in the IEEE Xplore, SciELO, PubMed, and Google Scholar databases, encompassing publications between 2015 and 2025. The results highlight significant advances in marine remote sensing methodologies, particularly the integration of optical and altimetric sensors (Sentinel-2, Landsat 8, and ICESat-2) and the combined use of empirical models, spectral regressions, and supervised algorithms such as Random Forest, SVM, and convolutional neural networks (CNNs). Although studies focused on bathymetry predominate, a gradual increase in research dedicated to optical sediment classification was observed. Deep learning-based approaches showed promise, although their performance is still limited by water turbidity and the scarcity of labeled data. It is concluded that multisensory fusion, associated with the integration between empirical models and deep learning techniques, represents the main future trend for improving accuracy, reducing dependence on in situ surveys, and expanding the use of remote sensing in the environmental monitoring and management of coastal zones.

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Author Biographies

  • Diego de Oliveira Dantas, Universidade Federal do Maranhão

    Doutorando em Engenharia Elétrica, pelo Departamento de Engenharia Elétrica, Laboratório da Informação Biológica, Universidade Federal do Maranhão.

  • Jailly Aparecida do Rosario Silva, Universidade do Estado do Pará

    Graduanda em Engenharia de Software pela Universidade do Estado do Pará

  • Marta de Oliveira Barreiros, Universidade do Estado do Pará

    Doutora em Engenharia Elétrica, professora do curso de Engenharia de Software da Universidade do Estado do Pará.

  • Jonathan Araujo Queiroz, Universidade Federal do Maranhão

    Doutor em Engenharia Elétrica. Departamento de Engenharia Elétrica, Laboratório de Processamento da Informação Biológica na Universidade Federal do Maranhão.

  • Allan Kardec Duailibe Barros Filho, Universidade Federal do Maranhão

    Doutor em Engenharia da Informação. Professor Titular no Departamento de Engenharia Elétrica, Laboratório de Processamento da Informação Biológica na Universidade Federal do Maranhão.

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Published

2026-02-27

How to Cite

TECHNIQUES FOR CLASSIFYING SEABED SEDIMENTS USING SATELLITE IMAGES: A SYSTEMATIC REVIEW OF THE LITERATURELO. (2026). REMUNOM, 2(03), 1-21. https://doi.org/10.66104/nxfq0t06