A new technique for signal subspace identification in hyperspectral images is presented. It estimates the signal subspace by including both the abundant and the rare signal components. The method is derived by assuming a non stationary model for the noise affecting the data. It is particularly suitable for the processing of images acquired by new generation sensors where, due to the improved sensitivity of the electronic components, noise includes a signal dependent term. Results obtained by applying the new algorithm to simulated and real data are presented and discussed
In this paper, a novel method to characterize random noise sources in hyperspectral (HS) images is ...
Hyperspectral imaging sensors provide image data containing both spectral and spatial information fr...
Hyperspectral imaging sensors provide image data containing both spectral and spatial information fr...
Orthogonal subspace projection (OSP) is a powerful tool for dimensionality reduction (DR) in hypersp...
Signal subspace identification is a crucial first step in many hyperspectral processing algorithms s...
This paper deals with the problem of signal subspace estimation for dimensionality reduction (DR) in...
In this paper, we investigate the problem of signal subspace identification (SSI) and dimensionality...
Abstract—Given an hyperspectral image, the determination of the number of endmembers and the subspac...
In this work we present a comparative analysis of the performance of two recently proposed algorithm...
Given an hyperspectral image, the determination of the number of endmembers and the subspace where t...
Given an hyperspectral image, the determination of the number of endmembers and the subspace where t...
Abstract—Signal subspace identification is a crucial first step in many hyperspectral processing alg...
Dimensionality reduction plays a crucial role in many hyperspectral data processing and analysis alg...
In this letter, we introduce an efficient algorithm to estimate the noise correlation matrix in the ...
This paper deals with the problem of signal subspace estimation and dimensionality reduction (DR) in...
In this paper, a novel method to characterize random noise sources in hyperspectral (HS) images is ...
Hyperspectral imaging sensors provide image data containing both spectral and spatial information fr...
Hyperspectral imaging sensors provide image data containing both spectral and spatial information fr...
Orthogonal subspace projection (OSP) is a powerful tool for dimensionality reduction (DR) in hypersp...
Signal subspace identification is a crucial first step in many hyperspectral processing algorithms s...
This paper deals with the problem of signal subspace estimation for dimensionality reduction (DR) in...
In this paper, we investigate the problem of signal subspace identification (SSI) and dimensionality...
Abstract—Given an hyperspectral image, the determination of the number of endmembers and the subspac...
In this work we present a comparative analysis of the performance of two recently proposed algorithm...
Given an hyperspectral image, the determination of the number of endmembers and the subspace where t...
Given an hyperspectral image, the determination of the number of endmembers and the subspace where t...
Abstract—Signal subspace identification is a crucial first step in many hyperspectral processing alg...
Dimensionality reduction plays a crucial role in many hyperspectral data processing and analysis alg...
In this letter, we introduce an efficient algorithm to estimate the noise correlation matrix in the ...
This paper deals with the problem of signal subspace estimation and dimensionality reduction (DR) in...
In this paper, a novel method to characterize random noise sources in hyperspectral (HS) images is ...
Hyperspectral imaging sensors provide image data containing both spectral and spatial information fr...
Hyperspectral imaging sensors provide image data containing both spectral and spatial information fr...