SHALLOW WATER BATHYMETRY RETRIEVAL USING MACHINE LEARNING ALGORITHMS FOR HYPERSPECTRAL PRISMA IMAGERY

- 319299
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Abstract

Accurate shallow-water bathymetric maps are essential for coastal resource management, transportation, military navigation, and scientific research. Satellite-based bathymetry provides an alternative to traditional ship-based methods. In this study, Random Forest (RF) and Multilayer Perceptron (MLP) algorithms were applied to PRISMA hyperspectral satellite imagery to map bathymetry in a protected area on the northeast coast of Brazil. Depth data were collected using a single-beam echosounder. The combination of PRISMA hyperspectral imagery and these ML algorithms proved to be effective for bathymetry retrieval, achieving high accuracy. The results showed R² values of 0.96 for RF and 0.98 for MLP, with RMSE values of 1.16 and 0.82, respectively.

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Institutions
  • 1 INPE
  • 2 Instituto Nacional de Pesquisas Espaciais
  • 3 Universidade Federal do Rio de Janeiro
  • 4 Universidade Estadual de Campinas
Track
  • 22. Oceanography
Keywords
Satellite derived bathymetry
Random Forest
Artificial Neural Network
Multilayer Perceptron
Hyperspectral imagery