Comparison of hyperspectral and multi-spectral imagery to building a spectral library and land cover classification performance

The main aim of this research work is to compare k -nearest neighbor algorithm (KNN) supervised classification with migrating means clustering unsupervised classification (MMC) method on the performance of hyperspectral and multispectral data for spectral land cover classes and develop their spectra...

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Main Authors: Mukesh Singh Boori, Rustam Paringer, Komal Choudhary, Alexander Kupriyanov
Format: Article
Language:English
Published: Samara National Research University 2018-12-01
Series:Компьютерная оптика
Subjects:
Online Access:http://computeroptics.ru/KO/PDF/KO42-6/420612.pdf
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spelling doaj-f0aeb0dbc9054c40b07fe854a17f007b2020-11-24T21:28:26ZengSamara National Research UniversityКомпьютерная оптика0134-24522412-61792018-12-014261035104510.18287/2412-6179-2018-42-6-1035-1045Comparison of hyperspectral and multi-spectral imagery to building a spectral library and land cover classification performanceMukesh Singh Boori0Rustam Paringer1Komal Choudhary2Alexander Kupriyanov3Samara National Research University, 443086, Russia, Samara, Moskovskoye Shosse 34, American Sentinel University, Colorado, USASamara National Research University, 443086, Russia, Samara, Moskovskoye Shosse 34, IPSI RAS – Branch of the FSRC “Crystallography and Photonics” RAS, Molodogvardeyskaya 151, 443001, Samara, RussiaSamara National Research University, 443086, Russia, Samara, Moskovskoye Shosse 34, The Hong Kong Polytechnic University, Hong KongSamara National Research University, 443086, Russia, Samara, Moskovskoye Shosse 34, IPSI RAS – Branch of the FSRC “Crystallography and Photonics” RAS, Molodogvardeyskaya 151, 443001, Samara, RussiaThe main aim of this research work is to compare k -nearest neighbor algorithm (KNN) supervised classification with migrating means clustering unsupervised classification (MMC) method on the performance of hyperspectral and multispectral data for spectral land cover classes and develop their spectral library in Samara, Russia. Accuracy assessment of the derived thematic maps was based on the analysis of the classification confusion matrix statistics computed for each classified map, using for consistency the same set of validation points. We were analyzed and compared Earth Observing-1 (EO-1) Hyperion hyperspectral data to Landsat 8 Operational Land Imager (OLI) and Advance Land Imager (ALI) multispectral data. Hyperspectral imagers, currently available on airborne platforms, provide increased spectral resolution over existing space based sensors that can document detailed information on the distribution of land cover classes, sometimes species level. 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). Development of spectral library for land cover classes is a key component needed to facilitate advance analytical techniques to monitor land cover changes. Different land cover classes in Samara were sampled to create a common spectral library for mapping landscape from remotely sensed data. The development of these libraries provides a physical basis for interpretation that is less subject to conditions of specific data sets, to facilitate a global approach to the application of hyperspectral imagers to mapping landscape. 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.http://computeroptics.ru/KO/PDF/KO42-6/420612.pdfhyperspectralmultispectralsatellite dataland cover classificationremote sensingsupervised and unsupervised classificationspectral library
collection DOAJ
language English
format Article
sources DOAJ
author Mukesh Singh Boori
Rustam Paringer
Komal Choudhary
Alexander Kupriyanov
spellingShingle Mukesh Singh Boori
Rustam Paringer
Komal Choudhary
Alexander Kupriyanov
Comparison of hyperspectral and multi-spectral imagery to building a spectral library and land cover classification performance
Компьютерная оптика
hyperspectral
multispectral
satellite data
land cover classification
remote sensing
supervised and unsupervised classification
spectral library
author_facet Mukesh Singh Boori
Rustam Paringer
Komal Choudhary
Alexander Kupriyanov
author_sort Mukesh Singh Boori
title Comparison of hyperspectral and multi-spectral imagery to building a spectral library and land cover classification performance
title_short Comparison of hyperspectral and multi-spectral imagery to building a spectral library and land cover classification performance
title_full Comparison of hyperspectral and multi-spectral imagery to building a spectral library and land cover classification performance
title_fullStr Comparison of hyperspectral and multi-spectral imagery to building a spectral library and land cover classification performance
title_full_unstemmed Comparison of hyperspectral and multi-spectral imagery to building a spectral library and land cover classification performance
title_sort comparison of hyperspectral and multi-spectral imagery to building a spectral library and land cover classification performance
publisher Samara National Research University
series Компьютерная оптика
issn 0134-2452
2412-6179
publishDate 2018-12-01
description The main aim of this research work is to compare k -nearest neighbor algorithm (KNN) supervised classification with migrating means clustering unsupervised classification (MMC) method on the performance of hyperspectral and multispectral data for spectral land cover classes and develop their spectral library in Samara, Russia. Accuracy assessment of the derived thematic maps was based on the analysis of the classification confusion matrix statistics computed for each classified map, using for consistency the same set of validation points. We were analyzed and compared Earth Observing-1 (EO-1) Hyperion hyperspectral data to Landsat 8 Operational Land Imager (OLI) and Advance Land Imager (ALI) multispectral data. Hyperspectral imagers, currently available on airborne platforms, provide increased spectral resolution over existing space based sensors that can document detailed information on the distribution of land cover classes, sometimes species level. 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). Development of spectral library for land cover classes is a key component needed to facilitate advance analytical techniques to monitor land cover changes. Different land cover classes in Samara were sampled to create a common spectral library for mapping landscape from remotely sensed data. The development of these libraries provides a physical basis for interpretation that is less subject to conditions of specific data sets, to facilitate a global approach to the application of hyperspectral imagers to mapping landscape. 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.
topic hyperspectral
multispectral
satellite data
land cover classification
remote sensing
supervised and unsupervised classification
spectral library
url http://computeroptics.ru/KO/PDF/KO42-6/420612.pdf
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