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dc.date2018
dc.date.accessioned2025-08-22T12:19:07Z-
dc.date.available2025-08-22T12:19:07Z-
dc.date.issued2018
dc.identifier.identifierDspace\SGAU\20180514\69171
dc.identifier.identifierDspace\SGAU\20180515\69171
dc.identifier.citationBoori M.S. Comparison in hyperspectral and multi-spectral remote sensing data for land cover classification in Samara, Russia / M.S.Boori, R. Paringer, K. Choudhary, A. Kupriyanov, R. Banda // Сборник трудов IV международной конференции и молодежной школы «Информационные технологии и нанотехнологии» (ИТНТ-2018) - Самара: Новая техника, 2018. - С.1172-1181
dc.identifier.urihttp://repo.ssau.ru/jspui/handle/123456789/13859-
dc.description.abstractThe main aim of this study is to evaluate k-nearest neighbor algorithm (KNN) supervised classification with migrating means clustering unsupervised classification (MMC) method on hyperspectral and multispectral imagery to discriminating land-cover classes. Accuracy assessment of the derived thematic maps was based on the analysis of the classification confusion matrix statistics computed for each classification map, using for consistency the same set of validation points. We used Earth Observing-1 (EO-1) Hyperion hyperspectral data to Landsat 8 Operational Land Imager (OLI) and Advance Land Imager (ALI) multispectral data. Results indicate that KNN (95, 94, 88 overall accuracy and .91, .89, .85 kappa coefficient for Hyp, ALI, OLI respectively) shows better results than unsupervised classification (93, 90, 84 overall accuracy and .89, .87, .81 kappa coefficient for Hyp, ALI, OLI respectively). In addition, it is demonstrated that the hyperspectral satellite image provides more accurate classification results than those extracted from the multispectral satellite image. The higher classification accuracy by KNN supervised was attributed principally to the ability of this classifier to identify optimal separating classes with low generalization error, thus producing the best possible classes’ separation.
dc.description.sponsorshipThis work was supported by the Federal Agency of Scientific Organizations (agreement No 007-ГЗ/Ч3363/26 and science of the Russian Federation; by the Russian Foundation for Basic Research grants (# 16-41-630761; # 16-29-11698, # 17-01-00972).
dc.languageen
dc.publisherНовая техника
dc.titleComparison in hyperspectral and multi-spectral remote sensing data for land cover classification in Samara, Russia
dc.typeArticle
local.identifier.oldurihttp://repo.ssau.ru/handle/Informacionnye-tehnologii-i-nanotehnologii/Comparison-in-hyperspectral-and-multispectral-remote-sensing-data-for-land-cover-classification-in-Samara-Russia-69171
local.identifier.oldurihttp://repo.ssau.ru/handle/Informacionnye-tehnologii-i-nanotehnologii/Comparison-in-hyperspectral-and-multispectral-remote-sensing-data-for-land-cover-classification-in-Samara-Russia-69171
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