A comparison of self-dual attribute profiles based on different filter rules for classification

Geoscience and Remote Sensing Symposium(2014)

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摘要
In this paper we compare features obtained by different filtering strategies for morphological attribute filters by considering non-increasing attributes. The Attribute profiles (APs) and Self Dual Attribute Profiles (SDAPs) are obtained by sequentially applying attribute filters on tree-based image representations, such as Min- or Max-trees and Inclusion tree, respectively. This work aims to study the effects of using the filtering rules max, min, direct and subtractive, when considering the non-increasing attributes moment of inertia and standard deviation. A very high spatial resolution data set is used in the experiments, and the extracted information obtained by the profiles is analyzed. This is done by studying the effects on the classification accuracy by using the profiles as additional input features to a Random Forest classifier.
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关键词
geomorphology,geophysical image processing,image classification,image representation,image resolution,remote sensing,vegetation mapping,classification effects,different filter rules,filtering strategies,high spatial resolution data,inclusion tree,information extraction,maxtrees,mintrees,moment-of-inertia,morphological attribute filters,random forest classifier features,remotely sensed images,self dual attribute profiles,self-dual attribute profiles,standard deviation,tree-based image representations,connected filters,image processing,mathematical morphology,tree representations
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