A novel Symmetric Sparse Representation (SSR) method has been presented to solve the band selection problem in hyperspectral imagery (HSI) classification. The method assumes that the selected bands and the original HSI bands are sparsely represented by each other, i.e., symmetrically represented. The method formulates band selection into a famous problem of archetypal analysis and selects the representative bands by finding the archetypes in the minimal convex hull containing the HSI band points (i.e., one band corresponds to a band point in the high-dimensional feature space). Without any other parameter tuning work except the size of band subset, the SSR optimizes the band selection program using the block-coordinate descent scheme. Four ...
The analysis of hyperspectral images is usually very heavy from the computational point-of-view, due...
Sparse representation (SR)-driven classifiers have been widely adopted for hyperspectral image (HSI)...
The analysis of hyperspectral images is usually very heavy from the computational point-of-view, due...
A novel Symmetric Sparse Representation (SSR) method has been presented to solve the band selection ...
Hyperspectral images consist of large number of spectral bands but many of which contain redundant i...
International audienceIn order to alleviate the negative effect of curse of dimensionality, band sel...
Hyperspectral (HS) data are enriched with highly resourceful abundant spectral bands. However, analy...
Hyperspectral Band Selection (BS) aims to select a few informative and distinctive bands to represen...
Hyperspectral Band Selection (BS) aims to select a few informative and distinctive bands to represen...
Hyperspectral (HS) data are enriched with highly resourceful abundant spectral bands. However, analy...
The high dimensionality of hyperspectral images (HSIs) brings great difficulty for their later data ...
The high dimensionality of hyperspectral images (HSIs) brings great difficulty for their later data ...
Abstract—Hyperspectral images have been proved to be effec-tive for a wide range of applications; ho...
A hyperspectral image (HSI) has many bands, which leads to high correlation between adjacent bands, ...
International audienceIn this letter, a novel morphological band selection method is proposed to obt...
The analysis of hyperspectral images is usually very heavy from the computational point-of-view, due...
Sparse representation (SR)-driven classifiers have been widely adopted for hyperspectral image (HSI)...
The analysis of hyperspectral images is usually very heavy from the computational point-of-view, due...
A novel Symmetric Sparse Representation (SSR) method has been presented to solve the band selection ...
Hyperspectral images consist of large number of spectral bands but many of which contain redundant i...
International audienceIn order to alleviate the negative effect of curse of dimensionality, band sel...
Hyperspectral (HS) data are enriched with highly resourceful abundant spectral bands. However, analy...
Hyperspectral Band Selection (BS) aims to select a few informative and distinctive bands to represen...
Hyperspectral Band Selection (BS) aims to select a few informative and distinctive bands to represen...
Hyperspectral (HS) data are enriched with highly resourceful abundant spectral bands. However, analy...
The high dimensionality of hyperspectral images (HSIs) brings great difficulty for their later data ...
The high dimensionality of hyperspectral images (HSIs) brings great difficulty for their later data ...
Abstract—Hyperspectral images have been proved to be effec-tive for a wide range of applications; ho...
A hyperspectral image (HSI) has many bands, which leads to high correlation between adjacent bands, ...
International audienceIn this letter, a novel morphological band selection method is proposed to obt...
The analysis of hyperspectral images is usually very heavy from the computational point-of-view, due...
Sparse representation (SR)-driven classifiers have been widely adopted for hyperspectral image (HSI)...
The analysis of hyperspectral images is usually very heavy from the computational point-of-view, due...