A novel feature selection approach is proposed to address the curse of dimensionality and reduce the redundancy of hyperspectral data. The proposed approach is based on a new binary optimization method inspired by fractional-order Darwinian particle swarm optimization (FODPSO). The overall accuracy (OA) of a support vector machine (SVM) classifier on validation samples is used as fitness values in order to evaluate the informativity of different groups of bands. In order to show the capability of the proposed method, two different applications are considered. In the first application, the proposed feature selection approach is directly carried out on the input hyperspectral data. The most informative bands selected from this step are classi...
Hyperspectral imagery generates huge data volumes, consist-ing of hundreds of contiguous and often h...
Due to their similar color and material variability, some ground objects have similar characteristic...
As an essential reprocessing method, dimensionality reduction (DR) can reduce the data redundancy an...
A new feature selection approach that is based on the integration of a genetic algorithm and particl...
SVM are attractive for the classification of remotely sensed data with some claims that the method i...
Abstract—Hyperspectral image data has great potential to identify and classify the chemical composit...
Feature subset selection is a well studied problem in machine learning. One short-coming of many met...
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 ...
International audienceHyperspectral remote sensing sensors can capture hundreds of contiguous spectr...
The Support Vector Machine provides a new way to design classification algorithms which learn from e...
The curse of dimensionality resulted from insufficient training samples and redundancy is considered...
In this paper, we investigate the potential of unsupervised feature selection techniques for classif...
Band selection is a great challenging task in the classification of hyperspectral remotely sensed im...
Abstract—The accuracy of supervised land cover classifications depends on factors such as the chosen...
Hyperspectral imagery generates huge data volumes, consist-ing of hundreds of contiguous and often h...
Due to their similar color and material variability, some ground objects have similar characteristic...
As an essential reprocessing method, dimensionality reduction (DR) can reduce the data redundancy an...
A new feature selection approach that is based on the integration of a genetic algorithm and particl...
SVM are attractive for the classification of remotely sensed data with some claims that the method i...
Abstract—Hyperspectral image data has great potential to identify and classify the chemical composit...
Feature subset selection is a well studied problem in machine learning. One short-coming of many met...
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 ...
International audienceHyperspectral remote sensing sensors can capture hundreds of contiguous spectr...
The Support Vector Machine provides a new way to design classification algorithms which learn from e...
The curse of dimensionality resulted from insufficient training samples and redundancy is considered...
In this paper, we investigate the potential of unsupervised feature selection techniques for classif...
Band selection is a great challenging task in the classification of hyperspectral remotely sensed im...
Abstract—The accuracy of supervised land cover classifications depends on factors such as the chosen...
Hyperspectral imagery generates huge data volumes, consist-ing of hundreds of contiguous and often h...
Due to their similar color and material variability, some ground objects have similar characteristic...
As an essential reprocessing method, dimensionality reduction (DR) can reduce the data redundancy an...