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hal.structure.identifierBiodiversité, Gènes & Communautés [BioGeCo]
dc.contributor.authorYEO, Samantha
hal.structure.identifierUniversité de Bordeaux [UB]
dc.contributor.authorLAFON, Virginie
hal.structure.identifierBiodiversité, Gènes & Communautés [BioGeCo]
dc.contributor.authorALARD, Didier
hal.structure.identifierUniversité de Bordeaux [UB]
dc.contributor.authorCURTI, Cécile
hal.structure.identifierUniversité de Bordeaux [UB]
dc.contributor.authorDEHOUCK, Aurélie
hal.structure.identifierBiodiversité, Gènes & Communautés [BioGeCo]
dc.contributor.authorBENOT, Marie-Lise
dc.date.issued2020
dc.identifier.issn0272-7714
dc.description.abstractEnSalt marshes are areas of high conservation value encompassing diverse ecological gradients responsible for creating unique vegetation structure and composition. In complement to the large body of studies developing vegetation mapping methods through the use of remote sensing data, we tested for the possibility of developing a cost-effective method to map salt marsh vegetation as a basis for monitoring a French Nature Reserve. Using classical multivariate ordination and cluster analyses, accurate and ecologically relevant vegetation groups matching existing typologies were determined from a vegetation database collected for management and conservation rather than mapping purposes. This resulted in six distinct vegetation groups, which were mapped through the combination of the NIR spectral band and radiometric indices (NDVI and NDWI) derived from multispectral 2 m-resolution satellite images (Pleiades images). The addition of a LiDAR-derived digital elevation model (DEM) layer was also tested. The final classified map of the reserve based only on optical layers had an overall accuracy of 75.5% (Kappa coefficient of 0.71), with varying success between the different vegetation groups. The addition of the DEM slightly decreased map accuracy to 73.6% (Kappa of 0.68). Decreasing the number of records used for map training had detectable negative effects on map accuracy. This study demonstrated that using already existing field observations combined with only a few spectral bands and radiometric indices from multi-temporal multispectral images with a high spatial resolution can be used as a basis to aid in vegetation classification and mapping of saltmarsh habitats, with the goal of monitoring their dynamics.
dc.language.isoen
dc.publisherElsevier
dc.subject.enArcachon bay
dc.subject.enMultispectral data
dc.subject.enMulti-temporal image classification
dc.subject.enPhytosociology
dc.subject.enSaltmarsh zonation
dc.subject.enSouthwestern France
dc.subject.enVegetation mapping
dc.subject.enWetland remote sensing
dc.title.enClassification and mapping of saltmarsh vegetation combining multispectral images with field data
dc.typeArticle de revue
dc.identifier.doi10.1016/j.ecss.2020.106643
dc.subject.halSciences du Vivant [q-bio]
bordeaux.journalEstuarine, Coastal and Shelf Science
bordeaux.page1-11
bordeaux.volume236
bordeaux.peerReviewedoui
hal.identifierhal-02624884
hal.version1
hal.popularnon
hal.audienceInternationale
hal.origin.linkhttps://hal.archives-ouvertes.fr//hal-02624884v1
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