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Object-oriented classification of QuickBird data for mapping seagrass spatial structure

Identyfikatory
Warianty tytułu
Języki publikacji
EN
Abstrakty
EN
QuickBird satellite images were processed using object-based analysis to map the spatial structure of seagrass in sandy shoal habitat in the southern Baltic Sea. A three-level ecological model of seagrass landscape, composed of meadows, beds and patches/gaps, was implemented in the multi-scale object domain. Image segmentation was performed at different spatial scales. In order to determine representative scales for bed level and patch/gap level objects, histograms of delineated objects were analyzed. Using object-oriented classification methods, two hierarchically nested maps of seagrass spatial structure were created. The map of patches/gaps was created using the nearest neighbor classification method in the feature space defined by the mean value of band 2 and the value of the proposed seagrass index. Overall map accuracy was 83%. The second map, which depicted the cover density of seagrass beds, was created on the basis of hierarchical relationships between objects at two chosen spatial scale levels. Both maps were exported as vector objects to GIS. Vector-based mapping of seagrass landscape structures at two scales simultaneously provides new possibilities for using landscape metrics and time change detection methods.
Słowa kluczowe
Rocznik
Strony
27--43
Opis fizyczny
bibliogr. 34 poz., wykr.
Twórcy
autor
autor
  • University of Gdansk, Institute of Oceanography Al. Pilsudskiego 46, 81-378 Gdynia, Poland, oceju@univ.gda.pl
Bibliografia
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  • Boström C., Bonsdorff E., 1997, Community structure and spatial variation of benthic invertebrates associated with Zostera marina (L.) beds in the northern Baltic Sea, Journal of Sea Research, 37, 153-166
  • Boström C., Jackson E.L., Simenstand C.A., 2006, Seagrass landscapes and their effects on associated fauna: A review, Estuarine, Coastal and Shelf Science, 68, 383-403
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  • Dekker A., Brando V., Anstee J., 2005, Retrospective seagrass change detection in a shallow coastal tidal Australian lake, Remote Sensing of Environment, 97, 415-433
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  • Foden J., Brazier D.P., 2007, Angiosperms (seagrass) within the EU water framework directive: A UK perspective, Marine Pollution Bulletin, 55, 181-195
  • Fornes A., Basterretxea G., Orfila A., Jordi A., Alvarez A., Tintore J., 2006, Mapping Posidonia oceanica from IKONOSISPRS, Journal of Photogrammetry & Remote Sensing, 60, 315-322
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  • Jackson E.L., Attrill M.J., Rowden A.A., Jones M.B., 2006, Seagrass complexity hierarchies: Influence on fish groups around the coast of Jersey (English Channel). Journal of Experimental Marine Biology and Ecology, 330, 38-54
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  • Pasqualini V., Pergent-Martini C., Pergent G., Agreil M., Skoufas G. et al., 2005, Use of SPOT 5 for mapping seagrasses: An application to Posidonia oceanica, Remote Sensing of Environment, 94, 39-45
  • Pihl L., Baden S., Kautsky N., Rönnbäck P., Söderqvist T., et al., 2006, Shift in fish assemblage structure due to loss of seagrass Zostera marina habitats in Sweden, Estuarine, Coastal and Shelf Science, 67, 123-132
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  • Sleeman J.C., Kendrick G.A., Boggs G.S., Hegge J.J., 2005, Measuring fragmentation of seagrass landscape: which indices are most appropriate for detecting change?, Marine and Freshwater Research, 56, 851-864
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Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-article-BUS5-0016-0039
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