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Oil Spill Classification Using an Autoencoder and Hyperspectral Technology

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URI: http://hdl.handle.net/10498/33703

DOI: 10.3390/JMSE12030495

ISSN: 2077-1312

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OA_2024_0498.pdf (3.545Mb)
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Author/s
Carrasco García, María GemaAuthority UCA; Rodríguez García, María InmaculadaAuthority UCA; Ruíz Aguilar, Juan JesúsAuthority UCA; Deka, Lipika; Elizondo, David; Turias Domínguez, Ignacio JoséAuthority UCA
Date
2024
Department
Ingeniería Industrial e Ingeniería Civil; Ingeniería Informática
Source
Journal of Marine Science and Engineering - 2024, Vol. 12 n. 3 pp. 1-14
Abstract
Hyperspectral technology has been playing a leading role in monitoring oil spills in marine environments, which is an issue of international concern. In the case of monitoring oil spills in local areas, hyperspectral technology of small dimensions is the ideal solution. This research explores the use of encoded hyperspectral signatures to develop automated classifiers capable of discriminating between polluted and clean water and distinguishing between various types of oil. The overall objective is to leverage these classifiers to be able to improve the performance of conventional systems that rely solely on hyperspectral imagery. The acquisition of the hyperspectral signatures of water and hydrocarbons was carried out with a spectroradiometer. The range of the spectroradiometer used in this study covers the ranges between [350–1000] (visible near-infrared) and [1000–2500] (short-wavelength infrared). This gives detailed information regarding the targets of interest. Different neural autoencoders (AEs) have been developed to reduce inputs into different dimensions, from 1 to 15. Each of these encoded sets was used to train decision tree (DT) classifiers. The results are very promising, as they show that the AE models encoded data with correlation coefficients above 0.95. The classifiers trained with the different sets provide accuracies close to 1.
Subjects
hyperspectral; artificial neural network; autoencoder; decision tree; oil spills; machine learning; classification
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  • Artículos Científicos [11595]
  • Articulos Científicos Ing. Ind. [91]
  • Articulos Científicos Ing. Inf. [299]
Attribution 4.0 Internacional
This work is under a Creative Commons License Attribution 4.0 Internacional

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