The spatial analysis of the image detected and acquired by a satellite provides less accurate information on a remote location. Hyperspectral images are one of the images detected remotely, they are superior to multispectral images that provide spectral information. detailed information is one of the important requirements in many areas, such as military, agriculture, etc. The FODPSO classifier algorithm is used with the grouping technique of least squares for image segmentation. The 2D adaptive filter is proposed to eliminate the noise of the hyperspectral image detected and captured in order to eliminate the noise of the spot. Denoising the hyperspectral image (HSI) is an essential pre-processing step to improve the performance of subsequ...
National audienceHyper-Spectral Imaging (HIS) also known as chemical or spectroscopic imaging is an ...
Hyperspectral imaging is concerned with the measurement, analysis, and interpretation of spectra acq...
Feature extraction (FE) or dimensionality reduction (DR) plays quite an important role in the field ...
The Spatial analysis of image sensed and captured from a satellite provides less accurate informatio...
A new spectral-spatial method for classification of hyperspectral images is introduced. The proposed...
The technological evolution of optical sensors over the last few decades has provided remote sensing...
High dimensional problems are often encountered in studies related to hyperspectral data. One of the...
The best technique to extract information from remotely sensed image is classification. The problem ...
High dimensional problems are often encountered in studies related to hyperspectral data. One of t...
Spatial analysis of images sensed and captured from a satellite provides less adequate information a...
The high spectral resolution of hyperspectral images (HSIs) provides rich information but causes dat...
Hyperspectral images have high dimensions, making it difficult to determine accurate and efficient...
In this thesis, a three-stage algorithm for performing unsupervised segmentation of hyperspectral im...
Existing remote sensing images of ground objects are difficult to annotate, and building a hyperspec...
The hyperspectral data contains hundreds of narrows bands representing the same scene on earth, with...
National audienceHyper-Spectral Imaging (HIS) also known as chemical or spectroscopic imaging is an ...
Hyperspectral imaging is concerned with the measurement, analysis, and interpretation of spectra acq...
Feature extraction (FE) or dimensionality reduction (DR) plays quite an important role in the field ...
The Spatial analysis of image sensed and captured from a satellite provides less accurate informatio...
A new spectral-spatial method for classification of hyperspectral images is introduced. The proposed...
The technological evolution of optical sensors over the last few decades has provided remote sensing...
High dimensional problems are often encountered in studies related to hyperspectral data. One of the...
The best technique to extract information from remotely sensed image is classification. The problem ...
High dimensional problems are often encountered in studies related to hyperspectral data. One of t...
Spatial analysis of images sensed and captured from a satellite provides less adequate information a...
The high spectral resolution of hyperspectral images (HSIs) provides rich information but causes dat...
Hyperspectral images have high dimensions, making it difficult to determine accurate and efficient...
In this thesis, a three-stage algorithm for performing unsupervised segmentation of hyperspectral im...
Existing remote sensing images of ground objects are difficult to annotate, and building a hyperspec...
The hyperspectral data contains hundreds of narrows bands representing the same scene on earth, with...
National audienceHyper-Spectral Imaging (HIS) also known as chemical or spectroscopic imaging is an ...
Hyperspectral imaging is concerned with the measurement, analysis, and interpretation of spectra acq...
Feature extraction (FE) or dimensionality reduction (DR) plays quite an important role in the field ...