Accepted for publication, already available on lineInternational audienceIn this paper, the use of Independent Component (IC) Discriminant Analysis (ICDA) for remote sensing classification is proposed. ICDA is a nonparametric method for discriminant analysis based on the application of a Bayesian classification rule on a signal composed by ICs. The method uses IC Analysis (ICA) to choose a transform matrix so that the transformed components are as independent as possible. When the data are projected in an independent space, the estimates of their multivariate density function can be computed in a much easier way as the product of univariate densities. A nonparametric kernel density estimator is used to compute the density functions of each ...
The paper presents an algorithm based on Independent Component Analysis (ICA) for the detection of s...
The paper presents a novel algorithm based on Independent Component Analysis (ICA) for the detection...
International audienceIn order to obtain accurate classification results of hyperspectral images, bo...
Abstract—In this paper, the use of Independent Component (IC) Discriminant Analysis (ICDA) for remot...
International audienceIn this paper, the use of Independent Component Discriminant Analysis (ICDA) f...
In this paper, the use of Independent Component Discriminant Anal-ysis (ICDA) for remote sensing cla...
In this paper, the use of Independent Component Discriminant Anal-ysis (ICDA) for remote sensing cla...
In land investigation, it is often required to extract plant and vegetation information from land co...
Independent component analysis (ICA) is a very popular method that has shown success in blind source...
Conventional remote sensing classification techniques that model the data in each class with a multi...
Conventional remote sensing classification techniques that model the data in each class with a multi...
In this paper, an ICA-based approach is proposed for hyperspectral image analysis. It can be viewed ...
In this paper, a technique based on Independent Component Analysis (ICA) and morphological attribute...
In this paper, a technique based on Independent Component Anal-ysis (ICA) and morphological attribut...
The goal of this dissertation is to investigate the applicability of Independent Component Analysis ...
The paper presents an algorithm based on Independent Component Analysis (ICA) for the detection of s...
The paper presents a novel algorithm based on Independent Component Analysis (ICA) for the detection...
International audienceIn order to obtain accurate classification results of hyperspectral images, bo...
Abstract—In this paper, the use of Independent Component (IC) Discriminant Analysis (ICDA) for remot...
International audienceIn this paper, the use of Independent Component Discriminant Analysis (ICDA) f...
In this paper, the use of Independent Component Discriminant Anal-ysis (ICDA) for remote sensing cla...
In this paper, the use of Independent Component Discriminant Anal-ysis (ICDA) for remote sensing cla...
In land investigation, it is often required to extract plant and vegetation information from land co...
Independent component analysis (ICA) is a very popular method that has shown success in blind source...
Conventional remote sensing classification techniques that model the data in each class with a multi...
Conventional remote sensing classification techniques that model the data in each class with a multi...
In this paper, an ICA-based approach is proposed for hyperspectral image analysis. It can be viewed ...
In this paper, a technique based on Independent Component Analysis (ICA) and morphological attribute...
In this paper, a technique based on Independent Component Anal-ysis (ICA) and morphological attribut...
The goal of this dissertation is to investigate the applicability of Independent Component Analysis ...
The paper presents an algorithm based on Independent Component Analysis (ICA) for the detection of s...
The paper presents a novel algorithm based on Independent Component Analysis (ICA) for the detection...
International audienceIn order to obtain accurate classification results of hyperspectral images, bo...