Accession Number : ADA478605


Title :   Multiscale Representation and Segmentation of Hyperspectral Imagery Using Geometric Partial Differential Equations and Algebraic Multigrid Methods (PREPRINT)


Corporate Author : MINNESOTA UNIV MINNEAPOLIS INST FOR MATHEMATICS AND ITS APPLICATIONS


Personal Author(s) : Duarte-Carvajalino, Julio M ; Sapiro, Guillermo ; Velez-Reyes, Minguel ; Castillo, Paul E


Full Text : http://www.dtic.mil/dtic/tr/fulltext/u2/a478605.pdf


Report Date : Jun 2007


Pagination or Media Count : 15


Abstract : A fast algorithm for multiscale representation and segmentation of hyperspectral imagery is introduced in this paper. The multiscale/scale-space representation is obtained by solving a nonlinear diffusion Partial Differential Equation (PDE) for vector-valued images. We use Algebraic Multigrid (AMG) techniques to obtain a fast and scalable solution of the PDE and to segment the hyperspectral image following the intrinsic multigrid structure. We test our algorithm on four standard hyperspectral images that represent different environments commonly found in remote sensing applications: agricultural, urban, mining, and marine. The experimental results show that the segmented images lead to better classification than using the original data directly, in spite of the use of simple similarity metrics and piecewise constant approximations obtained from the segmentation maps.


Descriptors :   *IMAGE PROCESSING , *HYPERSPECTRAL IMAGERY , STATE OF THE ART , CLASSIFICATION , PARTIAL DIFFERENTIAL EQUATIONS , SEGMENTED


Subject Categories : Numerical Mathematics
      Cybernetics


Distribution Statement : APPROVED FOR PUBLIC RELEASE