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Library Mapping salt-marsh land-cover vegetation using high-spatial and hyperspectral satellite data to assist wetland inventory

Mapping salt-marsh land-cover vegetation using high-spatial and hyperspectral satellite data to assist wetland inventory

Mapping salt-marsh land-cover vegetation using high-spatial and hyperspectral satellite data to assist wetland inventory

Resource information

Date of publication
december 2014
Resource Language
ISBN / Resource ID
AGRIS:US201500210974
Pages
483-497

Information on wetland condition can be used for various decision-making processes for better management of this vital resource. Salt marshes are complex ecosystems that are not well mapped and understood. This research was conducted to assess the potential of high-spatial and high-spectral resolution satellite data to map and monitor salt-marsh vegetation communities of Micalo Island of New South Wales, Australia. The aim of the study was to determine whether different salt-marsh vegetation species could be differentiated using high-spectral and high-spatial resolution imagery and whether these could be linked to wetland condition. To compare sensor capabilities in discriminating salt-marsh vegetation, high-spatial data sets from Quickbird and high-spectral data sets from Hyperion were used. A hybrid unsupervised and supervised classification procedure was used to assess the wetland mapping potential of the Quickbird and Hyperion data. The supervised classification results had greater overall and within-class accuracies and showed greater promise. Most of the vegetation species were identified and mapped correctly. One area of concern was the misclassification of Sporobolus into grass categories while using Quickbird imagery, mainly where the Sporobolus was tall and dry. They look very similar to the tall reedy grass. The mapping results can be useful in establishing baseline information for subsequent studies involving change detection of salt-marsh ecosystems.

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Authors and Publishers

Author(s), editor(s), contributor(s)

Kumar, Lalit
Sinha, Priyakant

Publisher(s)
Data Provider
Geographical focus