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Computer Optics, 2023, Volume 47, Issue 5, Pages 795–805
DOI: https://doi.org/10.18287/2412-6179-CO-1260
(Mi co1181)
 

IMAGE PROCESSING, PATTERN RECOGNITION

Ensembles of spectral-spatial convolutional neural network models for classifying soil types in hyperspectral images

N. A. Firsovab, V. V. Podlipnovab, N. A. Ivlievab, D. D. Ryskovab, A. V. Pirogovab, A. A. Muzykaab, A. R. Makarovab, V. E. Lobanovbc, V. I. Platonovb, A. N. Babichevb, V. A. Monastyrskyb, V. I. Olgarenkob, P. Nikolaevd, R. V. Skidanovab, A. V. Nikonorovab, N. L. Kazanskiiab, V. A. Soiferab

a Image Processing Systems Institute of the RAS - Branch of the FSRC "Crystallography and Photonics" RAS, Samara, Russia, Samara
b Samara National Research University
c Adyghe State University, Maikop
d Institute for Information Transmission Problems of the Russian Academy of Sciences (Kharkevich Institute), Moscow
References:
Abstract: The paper presents a study of various approaches to the classification of soil covers based on neural network algorithms using hyperspectral remote and proximal sensing of the Earth. The spectral distributions were recorded in the laboratory using an Offner imaging scanning hyperspectrometer. Spectral-spatial characteristics of nine soil samples from various parts of a farming land in the Samara region were experimentally studied. Using a method of energy dispersion microanalysis, the correspondence between the hyperspectral data and the chemical composition of the samples taken was established. Based on the data obtained, a neural network-aided classification of soil samples was implemented depending on the content of constituent elements such as carbon and calcium. A normalized spectral-spatial convolutional neural network was used as a classifier. As a result of the work, an approach to the classification of high-resolution hyperspectral images based on the refinement of a multiclass convolutional neural network using an ensemble of binary classifiers is proposed. It is shown that the classification of soil samples by carbon and calcium content is carried out with an accuracy of 0.96.
Keywords: hyperspectral images, hyperspectral sensing, proximal sensing, convolutional neural networks, spectral-spatial classification, soil cartography
Funding agency Grant number
Russian Science Foundation 20-69-47110
Ministry of Science and Higher Education of the Russian Federation FSSS-2021-0016
This work was partly funded under the ggovernemtn project of the FSRC "Crystallography and Photonics" RAS (experimental part) and grant No.20-69-47110 from the Russian Science Foundation (theoretical part).
Received: 06.12.2022
Accepted: 14.04.2023
Document Type: Article
Language: Russian
Citation: N. A. Firsov, V. V. Podlipnov, N. A. Ivliev, D. D. Ryskova, A. V. Pirogov, A. A. Muzyka, A. R. Makarov, V. E. Lobanov, V. I. Platonov, A. N. Babichev, V. A. Monastyrsky, V. I. Olgarenko, P. Nikolaev, R. V. Skidanov, A. V. Nikonorov, N. L. Kazanskii, V. A. Soifer, “Ensembles of spectral-spatial convolutional neural network models for classifying soil types in hyperspectral images”, Computer Optics, 47:5 (2023), 795–805
Citation in format AMSBIB
\Bibitem{FirPodIvl23}
\by N.~A.~Firsov, V.~V.~Podlipnov, N.~A.~Ivliev, D.~D.~Ryskova, A.~V.~Pirogov, A.~A.~Muzyka, A.~R.~Makarov, V.~E.~Lobanov, V.~I.~Platonov, A.~N.~Babichev, V.~A.~Monastyrsky, V.~I.~Olgarenko, P.~Nikolaev, R.~V.~Skidanov, A.~V.~Nikonorov, N.~L.~Kazanskii, V.~A.~Soifer
\paper Ensembles of spectral-spatial convolutional neural network models for classifying soil types in hyperspectral images
\jour Computer Optics
\yr 2023
\vol 47
\issue 5
\pages 795--805
\mathnet{http://mi.mathnet.ru/co1181}
\crossref{https://doi.org/10.18287/2412-6179-CO-1260}
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