Отрывок: 06 1841.04 10.15 347.51 1.92 164.64 0.91 Forest 4233.95 23.35 2910.94 16.05 2055.95 11.34 1323.01 7.30 854.99 4.72 Mangroves 2521.43 13.91 2996.45 16.53 2758.90 15.22 475.02 2.62 237.55 1.31 Settlements 703.78 3.88 725.65 4.00 745.23 4.11 21.87 0.12 19.58 0.11 Water 6329.08 34.91 5388.13 29.72 5210.86 28.74 940.95 5.19 177.27 0.98 Total 18131.73 100.00 18131.73 100.00 18131.73 100.00 2000 2007 2015 2000-07 2007-15 Table 1 shows both positive and negative land use/cove changes in the stu...
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dc.contributor.authorChoudhary, K.-
dc.contributor.authorBoori, M.S.-
dc.contributor.authorKupriyanov, A.V.-
dc.contributor.authorKovelskiy, V.-
dc.date.accessioned2016-12-12 10:45:11-
dc.date.available2016-12-12 10:45:11-
dc.date.issued2016-
dc.identifierDspace\SGAU\20161212\60725ru
dc.identifier.citationМатериалы Международной конференции и молодёжной школы «Информационные технологии и нанотехнологии», с. 503-509ru
dc.identifier.isbn978-5-7883-1078-7-
dc.identifier.urihttp://repo.ssau.ru/handle/Informacionnye-tehnologii-i-nanotehnologii/Land-usecover-change-detection-through-remote-sensing-and-GIS-techniques-a-case-study-of-Astrakhan-Russia-60725-
dc.description.abstractThe present study illustrates the spatial-temporal dynamics of Land use/cover change in Astrakhan city, Russia. Landsat satellite imageries of three different time periods of 2000, 2007 and 2015 were acquired by earth explorer website and quantify the changes in the Astrakhan. In this study maximum-likelihood supervised classification along with post-classification change detection was applied to satellite images for 2000, 2007 and 2015 in order to map land use/cover changes. The land use/cover study was classified into five major class’s viz. agriculture, bare-land, settlements, vegetation and water body. The classification results were then further refined using ancillary data, visual interpretation and expert knowledge of the area along with GIS. After post-classification change detection a change image form the cross-tabulations were generated. The result shows extensive vegetation degradation and water logging in different parts of the study area.ru
dc.language.isoenru
dc.publisherИздательство СГАУru
dc.subjectlandscape classificationru
dc.subjectchange trajectoriesru
dc.subjectsatellite dataru
dc.subjectremote sensingru
dc.subjectGISru
dc.titleLand use/cover change detection through remote sensing and GIS techniques: a case study of Astrakhan, Russiaru
dc.typeArticleru
dc.textpart06 1841.04 10.15 347.51 1.92 164.64 0.91 Forest 4233.95 23.35 2910.94 16.05 2055.95 11.34 1323.01 7.30 854.99 4.72 Mangroves 2521.43 13.91 2996.45 16.53 2758.90 15.22 475.02 2.62 237.55 1.31 Settlements 703.78 3.88 725.65 4.00 745.23 4.11 21.87 0.12 19.58 0.11 Water 6329.08 34.91 5388.13 29.72 5210.86 28.74 940.95 5.19 177.27 0.98 Total 18131.73 100.00 18131.73 100.00 18131.73 100.00 2000 2007 2015 2000-07 2007-15 Table 1 shows both positive and negative land use/cove changes in the stu...-
Располагается в коллекциях: Информационные технологии и нанотехнологии

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