Band selection is an effective solutions for dimensionality re-duction in hyperspectral imagery. In this paper, a novel band weighting and selection method is proposed based on max-imizing margin in support vector machine (SVM). The goal is to reduce high dimensionality if hyperspectral data while achieving accuracy classification performance. This method computes the weights of the samples to maximize the margin between the samples and the hyperplane in SVM. Bands are selected if they can enlarge the differences between classes and improve the classification performance. Experiments on two public benchmark hyperspectral datasets show the effec-tiveness of our method. Index Terms — Band weighting and selection, support vector machine, hyper...
Abstract—Hyperspectral imaging involves large amounts of in-formation. This paper presents a techniq...
Band selection is a fundamental problem in hyperspectral data processing. In this paper, we present ...
Supervised classification of hyperspectral image data using conventional statistical classification ...
The high dimensionality of hyperspectral images (HSIs) brings great difficulty for their later data ...
International audienceIn order to alleviate the negative effect of curse of dimensionality, band sel...
The amount of information involved in hyperspectral imaging is large. Hyperspectral band selection i...
AbstractHyperspectral image classification has been an active field of research in recent years. The...
Hyperspectral images consist of large number of spectral bands but many of which contain redundant i...
Copyright © 2015 Anthony Amankwah.This is an open access article distributed under theCreativeCommon...
Hyperspectral image classification has always been a hot topic. The problem of "dimension disaster" ...
AbstractWith the development of hyperspectral remote sensing technology, the spectral resolution of ...
Hyperspectral images usually consist of hundreds of spectral bands, which can be used to precisely c...
Hyperspectral (HS) data are enriched with highly resourceful abundant spectral bands. However, analy...
Although it is a powerful feature selection algorithm, the wrapper method is rarely used for hypersp...
In recent decades, large margin methods such as Support Vector Machines (SVMs) are supposed to be th...
Abstract—Hyperspectral imaging involves large amounts of in-formation. This paper presents a techniq...
Band selection is a fundamental problem in hyperspectral data processing. In this paper, we present ...
Supervised classification of hyperspectral image data using conventional statistical classification ...
The high dimensionality of hyperspectral images (HSIs) brings great difficulty for their later data ...
International audienceIn order to alleviate the negative effect of curse of dimensionality, band sel...
The amount of information involved in hyperspectral imaging is large. Hyperspectral band selection i...
AbstractHyperspectral image classification has been an active field of research in recent years. The...
Hyperspectral images consist of large number of spectral bands but many of which contain redundant i...
Copyright © 2015 Anthony Amankwah.This is an open access article distributed under theCreativeCommon...
Hyperspectral image classification has always been a hot topic. The problem of "dimension disaster" ...
AbstractWith the development of hyperspectral remote sensing technology, the spectral resolution of ...
Hyperspectral images usually consist of hundreds of spectral bands, which can be used to precisely c...
Hyperspectral (HS) data are enriched with highly resourceful abundant spectral bands. However, analy...
Although it is a powerful feature selection algorithm, the wrapper method is rarely used for hypersp...
In recent decades, large margin methods such as Support Vector Machines (SVMs) are supposed to be th...
Abstract—Hyperspectral imaging involves large amounts of in-formation. This paper presents a techniq...
Band selection is a fundamental problem in hyperspectral data processing. In this paper, we present ...
Supervised classification of hyperspectral image data using conventional statistical classification ...