The problem of feature transformation arises in many fields of information processing, including machine learning, data compression, computer vision and geosciences applications. Here we discuss an approach that seeks a hyperspherical coordinate system preserving geodesic distances in the high dimensional hyperspectral data space. A lower dimensional hyperspherical manifold is computed using a lower rank matrix approximation algorithm combined with the recently proposed spherical embeddings method. Three spherical metrics for classification that exploits the nonlinear structure of hyperspectral imagery based on the properties of hyperspherical surfaces and their relationship with local tangent spaces are proposed. As part of experimental va...
A novel hyperspectral remote sensing imagery feature extraction algorithm called discriminative supe...
Hyperspectral image visualization reduces color bands to three, but prevailing linear methods fail t...
Locality-preserving projection (LPP) is a typical manifold-based dimensionality reduction (DR) metho...
Traditional statistical models for remote sensing data have mainly focused on data that is in Euclid...
Modern hyperspectral imaging sensor technology provides detailed spectral and spatial information th...
Non-linear effects in hyperspectral data are caused by varying illumination conditions, different vi...
Hyperspectral images have traditionally been analyzed by pixel based methods. Invariant methods that...
Accurate land cover classification that ensures robust mapping under diverse acquisition conditions ...
Remote sensing involves measuring and analyzing objects of interests through data collected by a rem...
A novel discriminative supervised neighborhood preserving embedding (DSNPE) method is proposed for f...
Abstract — There are many well-known sources of nonlinearity present in hyperspectral imagery; these...
Learning the manifold structure of remote sensing images is of paramount relevance for modeling and ...
Hyperspectral images typically contain hundreds of spectral bands, which is one to two orders of mag...
Vast amounts of data are produced all the time. Yet this data does not easily equate to useful infor...
A novel discriminative supervised neighborhood preserving embedding (DSNPE) method is propo...
A novel hyperspectral remote sensing imagery feature extraction algorithm called discriminative supe...
Hyperspectral image visualization reduces color bands to three, but prevailing linear methods fail t...
Locality-preserving projection (LPP) is a typical manifold-based dimensionality reduction (DR) metho...
Traditional statistical models for remote sensing data have mainly focused on data that is in Euclid...
Modern hyperspectral imaging sensor technology provides detailed spectral and spatial information th...
Non-linear effects in hyperspectral data are caused by varying illumination conditions, different vi...
Hyperspectral images have traditionally been analyzed by pixel based methods. Invariant methods that...
Accurate land cover classification that ensures robust mapping under diverse acquisition conditions ...
Remote sensing involves measuring and analyzing objects of interests through data collected by a rem...
A novel discriminative supervised neighborhood preserving embedding (DSNPE) method is proposed for f...
Abstract — There are many well-known sources of nonlinearity present in hyperspectral imagery; these...
Learning the manifold structure of remote sensing images is of paramount relevance for modeling and ...
Hyperspectral images typically contain hundreds of spectral bands, which is one to two orders of mag...
Vast amounts of data are produced all the time. Yet this data does not easily equate to useful infor...
A novel discriminative supervised neighborhood preserving embedding (DSNPE) method is propo...
A novel hyperspectral remote sensing imagery feature extraction algorithm called discriminative supe...
Hyperspectral image visualization reduces color bands to three, but prevailing linear methods fail t...
Locality-preserving projection (LPP) is a typical manifold-based dimensionality reduction (DR) metho...