4.5 Article

Data fusion and classifier ensemble techniques for vegetation mapping in the coastal Everglades

期刊

GEOCARTO INTERNATIONAL
卷 29, 期 3, 页码 228-243

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TAYLOR & FRANCIS LTD
DOI: 10.1080/10106049.2012.756940

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data fusion; classifier ensemble; vegetation mapping; Everglades

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This study examined the applicability of data fusion and classifier ensemble techniques for vegetation mapping in the coastal Everglades. A framework was designed to combine these two techniques. In the framework, 20-m hyperspectral imagery collected from Airborne Visible/Infrared Imaging Spectrometer was first merged with 1-m Digital Orthophoto Quarter Quads using a proposed pixel/feature-level fusion strategy. The fused data set was then classified with an ensemble approach based on two contemporary machine learning algorithms: Random Forest and Support Vector Machine. The framework was applied to classify nine vegetation types in a portion of the coastal Everglades. An object-based vegetation map was produced with an overall accuracy of 90% and Kappa value of 0.86. Per-class classification accuracy varied from 61% for identifying buttonwood forest to 100% for identifying red mangrove scrub. The result shows that the framework is promising for automated vegetation mapping in the Everglades.

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