This paper presents genetic algorithm based band selection and classification on hyperspectral image data set. Hyperspectral remote sensors collect image data for a large number of narrow, adjacent spectral bands. Every pixel in hyperspectral image involves a continuous spectrum that is used to classify the objects with great detail and precision. In this paper, first filtering based on 2-D Empirical mode decomposition method is used to remove any noisy components in each band of the hyperspectral data. After filtering, band selection is done using genetic algorithm in-order to remove bands that convey less information. This dimensionality reduction minimizes many requirements such as storage space, computational load, communication bandwid...
Feature selection especially band selection plays important roles in hyperspectral remote sensed ima...
International audienceIn order to alleviate the negative effect of curse of dimensionality, band sel...
Hyperspectral images (HSIs) are a powerful source of reliable data in various remote sensing applica...
Hyperspectral remote sensors collect image data for a large number of narrow, adjacent spectral band...
In the most applications in remote sensing, there is no need to use all of available data, such as u...
Abstract: Recent advances in sensor technology opened new possibilities for remote sensing. For exam...
The high-dimensional feature vectors of hyper spectral data often impose a high computational cost a...
Abstract—Recent developments in remote sensing technologies have made hyperspectral imagery (HSI) re...
Recent developments in remote sensing technologies have made high resolution remotely sensed data su...
AbstractHyperspectral images have abundant of information stored in the various spectral bands rangi...
A 'fused' method may not be suitable for reducing the dimensionality of data and a band/fe...
The hyperspectral data contains hundreds of narrows bands representing the same scene on earth, with...
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 ...
As an essential reprocessing method, dimensionality reduction (DR) can reduce the data redundancy an...
Feature selection especially band selection plays important roles in hyperspectral remote sensed ima...
International audienceIn order to alleviate the negative effect of curse of dimensionality, band sel...
Hyperspectral images (HSIs) are a powerful source of reliable data in various remote sensing applica...
Hyperspectral remote sensors collect image data for a large number of narrow, adjacent spectral band...
In the most applications in remote sensing, there is no need to use all of available data, such as u...
Abstract: Recent advances in sensor technology opened new possibilities for remote sensing. For exam...
The high-dimensional feature vectors of hyper spectral data often impose a high computational cost a...
Abstract—Recent developments in remote sensing technologies have made hyperspectral imagery (HSI) re...
Recent developments in remote sensing technologies have made high resolution remotely sensed data su...
AbstractHyperspectral images have abundant of information stored in the various spectral bands rangi...
A 'fused' method may not be suitable for reducing the dimensionality of data and a band/fe...
The hyperspectral data contains hundreds of narrows bands representing the same scene on earth, with...
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 ...
As an essential reprocessing method, dimensionality reduction (DR) can reduce the data redundancy an...
Feature selection especially band selection plays important roles in hyperspectral remote sensed ima...
International audienceIn order to alleviate the negative effect of curse of dimensionality, band sel...
Hyperspectral images (HSIs) are a powerful source of reliable data in various remote sensing applica...