Conference Proceedings

Assessing the significance of hyperion spectral bands in forest classification

GJ Newnham, D Lazaridis, NC Sims, AP Robinson, DS Culvenor

International Archives of the Photogrammetry Remote Sensing and Spatial Information Sciences ISPRS Archives | COPERNICUS GESELLSCHAFT MBH | Published : 2012

Abstract

The classification of vegetation in hyperspectral image scenes presents some challenges due to high band autocorrelations and problems dealing with many predictor variables. The Random Forests classification method is based on an ensemble of decision trees and attempts to address these issues by dealing with only a subset of image bands in each node of each decision tree. Random Forests has previously been used for classification of vegetation using hyperspectral data. However, the variable importance measure that is a by-product of the technique has largely been ignored. In this study we investigate the spectral qualities of variable importance in the classification of forest and non-forest..

View full abstract

University of Melbourne Researchers