AbstractThe recent advance in sensor technology is a boon for hyperspectral remote sensing. Though Hyperspectral images (HSI) are captured using these advanced sensors, they are highly prone to issues like noise, high dimensionality of data and spectral mixing. Among these, noise is the major challenge that affects the quality of the captured image. In order to overcome this issue, hyperspectral images are subjected to spatial preprocessing (denoising) prior to image analysis (Classification). In this paper, authors discuss a sparsity based denoising strategy which uses low pass sparse banded filter matrices (AB filter) to effectively denoise each band of HSI. Both subjective and objective evaluations are conducted to prove the efficiency o...
Sparsity-based classification methods have been widely used in hyperspectral image (HSI) classificat...
In this letter, we propose target detector version of recently introduced basic thresholding classif...
Spectral unmixing and denoising of hyperspectral images have always been regarded as separate proble...
AbstractThe recent advance in sensor technology is a boon for hyperspectral remote sensing. Though H...
Hyperspectral images (HSIs) can facilitate extensive computer vision applications with the extra spe...
AbstractHyperspectral images contain a huge amount of spatial and spectral information so that, almo...
During the acquisition process hyperspectral images (HSI) are inevitably corrupted by various noises...
This thesis addresses two important aspects in hyperspectral image processing: automatic hyperspectr...
This paper shows that hyperspectral image classification performance using support vector machines (...
Hyperspectral remote sensing is based on measuring the scattered and reflected electromagnetic signa...
In this paper, we investigate the performance of a sparsity-preserving graph embedding based approac...
Hyperspectral images consist of large number of spectral bands but many of which contain redundant i...
With a low spectral resolution hyperspectral sensor, the signal recorded from a given pixel against ...
This dissertation develops new techniques employing the Low-rank and Sparse Representation approache...
Nowadays the concern of finding an efficient algorithm that can answer some of the open questions in...
Sparsity-based classification methods have been widely used in hyperspectral image (HSI) classificat...
In this letter, we propose target detector version of recently introduced basic thresholding classif...
Spectral unmixing and denoising of hyperspectral images have always been regarded as separate proble...
AbstractThe recent advance in sensor technology is a boon for hyperspectral remote sensing. Though H...
Hyperspectral images (HSIs) can facilitate extensive computer vision applications with the extra spe...
AbstractHyperspectral images contain a huge amount of spatial and spectral information so that, almo...
During the acquisition process hyperspectral images (HSI) are inevitably corrupted by various noises...
This thesis addresses two important aspects in hyperspectral image processing: automatic hyperspectr...
This paper shows that hyperspectral image classification performance using support vector machines (...
Hyperspectral remote sensing is based on measuring the scattered and reflected electromagnetic signa...
In this paper, we investigate the performance of a sparsity-preserving graph embedding based approac...
Hyperspectral images consist of large number of spectral bands but many of which contain redundant i...
With a low spectral resolution hyperspectral sensor, the signal recorded from a given pixel against ...
This dissertation develops new techniques employing the Low-rank and Sparse Representation approache...
Nowadays the concern of finding an efficient algorithm that can answer some of the open questions in...
Sparsity-based classification methods have been widely used in hyperspectral image (HSI) classificat...
In this letter, we propose target detector version of recently introduced basic thresholding classif...
Spectral unmixing and denoising of hyperspectral images have always been regarded as separate proble...