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Classification of hyperspectral images by using extended morphological attribute profiles and independent component analysis

Rannsóknarafurð: Framlag til fræðitímaritsGreinritrýni

Útdráttur

In this letter, a technique based on independent component analysis (ICA) and extended morphological attribute profiles (EAPs) is presented for the classification of hyperspectral images. The ICA maps the data into a subspace in which the components are as independent as possible. APs, which are extracted by using several attributes, are applied to each image associated with an extracted independent component, leading to a set of extended EAPs. Two approaches are presented for including the computed profiles in the analysis. The features extracted by the morphological processing are then classified with an SVM. The experiments carried out on two hyperspectral images proved the effectiveness of the proposed technique.

Upprunalegt tungumálEnska
Númer greinar5664759
Síður (frá-til)542-546
Síðufjöldi5
FræðitímaritIEEE Geoscience and Remote Sensing Letters
Bindi8
Númer tölublaðs3
DOI
ÚtgáfustaðaÚtgefið - maí 2011

Athugasemd

Funding Information: Manuscript received July 19, 2010; revised October 14, 2010; accepted October 25, 2010. Date of publication December 9, 2010; date of current version April 22, 2011. This work was supported in part by the European community’s Marie Curie Research Training Networks Program, Hyperspectral Imaging Network (HYPER-I-NET), under Contract MRTN-CT-2006-035927 and in part by the Research Fund of the University of Iceland and the University of Trento.

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