DocumentCode
108714
Title
PerTurbo Manifold Learning Algorithm for Weakly Labeled Hyperspectral Image Classification
Author
Chapel, Laetitia ; Burger, Thomas ; Courty, N. ; Lefevre, S.
Author_Institution
Univ. de Bretagne, Vannes, France
Volume
7
Issue
4
fYear
2014
fDate
Apr-14
Firstpage
1070
Lastpage
1078
Abstract
Hyperspectral data analysis has been given a growing attention due to the scientific challenges it raises and the wide set of applications that can benefit from it. Classification of hyperspectral images has been identified as one of the hottest topics in this context, and has been mainly addressed by discriminative methods such as SVM. In this paper, we argue that generative methods, and especially those based on manifold representation of classes in the hyperspectral space, are relevant alternatives to SVM. To illustrate our point, we focus on the recently published PerTurbo algorithm and benchmark against SVM this generative manifold learning algorithm in the context of hyperspectral image classification. This choice is motivated by the fact that PerTurbo is fitted with numerous interesting properties, such as low sensitivity to dimensionality curse, high accuracy in weakly labelled images classification context (few training samples), straightforward extension to on-line setting, and interpretability for the practitioner. The promising results call for an up-to-date interest toward generative algorithms for hyperspectral image classification.
Keywords
data analysis; geophysical image processing; hyperspectral imaging; image classification; image representation; learning (artificial intelligence); support vector machines; PerTurbo manifold learning algorithm; SVM; benchmark; discriminative method; hyperspectral data analysis; manifold class representation; weakly labeled hyperspectral image classification; Context; Hyperspectral imaging; Kernel; Manifolds; Support vector machines; Training; Classification; PerTurbo algorithm; generative method; hyperspectral images; low-sized training sets; manifold learning; remote sensing; support vector machines (SVM);
fLanguage
English
Journal_Title
Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of
Publisher
ieee
ISSN
1939-1404
Type
jour
DOI
10.1109/JSTARS.2014.2304304
Filename
6746042
Link To Document