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Articles

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

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Pages 228-243 | Received 06 Sep 2012, Accepted 05 Dec 2012, Published online: 06 Feb 2013
 

Abstract

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.

Acknowledgement

We appreciate the constructive comments and suggestions from the three anonymous reviewers, which improved this manuscript.

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