This paper describes a new algorithm for feature extraction on hyperspectral images based on blind source separation (BSS) and distributed processing. I use Independent Component Analysis (ICA), a particular case of BSS, where, given a linear mixture of statistical independent sources, the goal is to recover these components by producing the unmixing matrix. In the multispectral/hyperspectral imagery, the separated components can be associated with features present in the image, the source separation algorithm projecting them in different image bands. ICA based methods have been employed for target detection and classification of hyperspectral images. However, these methods involve an iterative optimization process. When applied to hyperspe...
Blind signal separation (BSS) based on the technique of independent component analysis (ICA) was int...
We describe the development of a real-time processing tool for hyperspectral imagery based on off-th...
one of the most challenging areas in data fusion is efficient abstraction of relevant information fr...
This paper describes a new algorithm for feature extraction on hyperspectral images based on blind s...
This paper describes a new algorithm for feature extraction in hyperspectral images based on Indepen...
The goal of this dissertation is to investigate the applicability of Independent Component Analysis ...
Independent component analysis (ICA) is a very popular method that has shown success in blind source...
We present a new algorithm for feature extraction in hyperspectral images based on source separation...
In this paper, an ICA-based approach is proposed for hyperspectral image analysis. It can be viewed ...
This paper investigates the effect of spectral screening on processing hyperspectral data through In...
The paper presents a novel algorithm based on Independent Component Analysis (ICA) for the detection...
The paper presents an algorithm based on Independent Component Analysis (ICA) for the detection of s...
In land investigation, it is often required to extract plant and vegetation information from land co...
Mixed pixel separation has always been a hotspot issue of quantitative remote sensing and is especia...
Mixed pixel separation has always been a hotspot issue of quantitative remote sensing and is especia...
Blind signal separation (BSS) based on the technique of independent component analysis (ICA) was int...
We describe the development of a real-time processing tool for hyperspectral imagery based on off-th...
one of the most challenging areas in data fusion is efficient abstraction of relevant information fr...
This paper describes a new algorithm for feature extraction on hyperspectral images based on blind s...
This paper describes a new algorithm for feature extraction in hyperspectral images based on Indepen...
The goal of this dissertation is to investigate the applicability of Independent Component Analysis ...
Independent component analysis (ICA) is a very popular method that has shown success in blind source...
We present a new algorithm for feature extraction in hyperspectral images based on source separation...
In this paper, an ICA-based approach is proposed for hyperspectral image analysis. It can be viewed ...
This paper investigates the effect of spectral screening on processing hyperspectral data through In...
The paper presents a novel algorithm based on Independent Component Analysis (ICA) for the detection...
The paper presents an algorithm based on Independent Component Analysis (ICA) for the detection of s...
In land investigation, it is often required to extract plant and vegetation information from land co...
Mixed pixel separation has always been a hotspot issue of quantitative remote sensing and is especia...
Mixed pixel separation has always been a hotspot issue of quantitative remote sensing and is especia...
Blind signal separation (BSS) based on the technique of independent component analysis (ICA) was int...
We describe the development of a real-time processing tool for hyperspectral imagery based on off-th...
one of the most challenging areas in data fusion is efficient abstraction of relevant information fr...