DocumentCode :
1756774
Title :
Analyzing Hyperspectral and Hypertemporal Data by Decoupling Feature Redundancy and Feature Relevance
Author :
Held, Matthias ; Rabe, Andreas ; Senf, Cornelius ; van der Linden, Sebastian ; Hostert, Patrick
Author_Institution :
Geogr. Dept., Humboldt-Univ. zu Berlin, Berlin, Germany
Volume :
12
Issue :
5
fYear :
2015
fDate :
42125
Firstpage :
983
Lastpage :
987
Abstract :
The high information redundancy in hyperspectral and hypertemporal Earth observation data can limit the performance of supervised learning algorithms. Traditional sequential feature selection approaches start the search on the full set of correlated features, which is a computationally expensive task and impedes the search and discovery of spectral or temporal segments relevant for classification or regression tasks. We therefore propose to decouple the reduction of redundancy from the ranking of features. This is achieved by: 1) an unsupervised clustering of spectrally or temporally correlating neighboring features; 2) the definition of cluster representatives; and 3) the determination of the representatives´ relevance by an support vector machine-based feature forward selection. Exemplified by two data sets for solving both, a hyperspectral and a hypertemporal classification problem, we show that our approach leads to well-interpretable spectral and temporal clusters, with comparable accuracies to more processing extensive traditional sequential feature selection.
Keywords :
feature selection; geophysical image processing; hyperspectral imaging; image classification; learning (artificial intelligence); remote sensing; support vector machines; feature forward selection; feature redundancy decoupling; hyperspectral Earth observation data; hyperspectral classification; hypertemporal Earth observation data; hypertemporal classification; support vector machine; unsupervised clustering; Accuracy; Hyperspectral imaging; MODIS; Redundancy; Support vector machines; Dimensionality reduction; feature clustering; feature extraction; hyperspectral data; hypertemporal data; supervised classification; support vector machine (SVM) classification;
fLanguage :
English
Journal_Title :
Geoscience and Remote Sensing Letters, IEEE
Publisher :
ieee
ISSN :
1545-598X
Type :
jour
DOI :
10.1109/LGRS.2014.2371242
Filename :
6985552
Link To Document :
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