MAPPING AQUATIC VEGETATION OF THE RAKAMAZTISZANAGYFALUI NAGY-MOROTVA USING HYPERSPECTRAL IMAGERY

Rapid development in remote sensing technologies provides more and more reliable methods for environmental assessment. For most wetlands, it is difficult to walk-in without disturbing the endangered species living there; therefore, application of opportunities provided by remote sensing has a great...

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Bibliographic Details
Main Authors: PÉTER BURAI, GABRIELLA ZSUZSANNA LÖVEI, CSABA LÉNÁRT, ILDIKÓ NAGY, PÉTER ENYEDI
Format: Article
Language:English
Published: University of Debrecen 2010-06-01
Series:Acta Geographica Debrecina: Landscape and Environment Series
Subjects:
Online Access:http://landscape.geo.klte.hu/pdf/agd/2010/2010v4is1_1.pdf
Description
Summary:Rapid development in remote sensing technologies provides more and more reliable methods for environmental assessment. For most wetlands, it is difficult to walk-in without disturbing the endangered species living there; therefore, application of opportunities provided by remote sensing has a great importance in population-mapping. One effective tool of vegetation pattern estimation is hyperspectral remote sensing, which can be used for association and species level mapping as well, due to high ground resolution. The Rakamaz-Tiszanagyfalui Nagy-morotva is an oxbow lake, located in the north-eastern part of Hungary. For this study, a wetland area of 1.17 km2 containing the original water bad and shoreline was selected. For the image analysis, images taken by an AISA DUAL system hyperspectral sensor were used. At the same time, 7 main vegetation classes were separated, which are typical for the sample plot designated on the test site. Classification was performed by the master areas signed by the most common associations of the Rakamaz-Tiszanagyfalui Nagy-morotva with determined spectrums. During the image analysis, SAM classification method was used, whereradian values were optimized by the results of classification performed at the control area.
ISSN:1789-4921
1789-7556