AN END-MEMBER BASED ORDERING RELATION FOR THE MORPHOLOGICAL DESCRIPTION OF HYPERSPECTRAL IMAGES

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Date

2014

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Ieee

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Abstract

Despite the popularity of mathematical morphology with remote sensing image analysis, its application to hyperspectral data remains problematic. The issue stems from the need to impose a complete lattice structure on the multi-dimensional pixel value space, that requires a vector ordering. In this article, we introduce such a supervised ordering relation, which conversely to its alternatives, has been designed to be image-specific and exploits the spectral purity of pixels. The practical interest of the resulting multivariate morphological operators is validated through classification experiments where it achieves state-of-the-art performance.

Description

Aptoula, Erchan/0000-0001-6168-2883; Lefevre, Sebastien/0000-0002-2384-8202

Keywords

Mathematical morphology, vector ordering, hyperspectral images, end-members, classification

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IEEE International Conference on Image Processing (ICIP) -- OCT 27-30, 2014 -- Paris, FRANCE

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Start Page

5097

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5101