This letter introduces a nonlinear measure of independence between random variables for remote sensing supervised feature selection. The so-called HilbertSchmidt independence criterion (HSIC) is a kernel method for evaluating statistical dependence and it is based on computing the HilbertSchmidt norm of the cross-covariance operator of mapped samples in the corresponding Hilbert spaces. The HSIC empirical estimator is easy to compute and has good theoretical and practical properties. Rather than using this estimate for maximizing the dependence between the selected features and the class labels, we propose the more sensitive criterion of minimizing the associated HSIC p-value. Results in multispectral, hyperspectral, and SAR data feature ...
Abstract—In this paper, the use of Independent Component (IC) Discriminant Analysis (ICDA) for remot...
A new supervised classification method is developed for quantitative analysis of remotely-sensed mul...
provides advantages for remote sensing Gustavo Camps-Valls Kernel methods increase the accuracy of r...
This letter introduces a nonlinear measure of independence between random variables for remote sensi...
This paper introduces a nonlinear measure of dependence between random variables in the context of r...
© 2017, Springer-Verlag Berlin Heidelberg. Measures of statistical dependence between random variabl...
We propose an independence criterion based on the eigenspectrum of covariance operators in reproduci...
The increase in spatial and spectral resolution of the satellite sensors, along with the shortening ...
International audienceDesigning an effective criterion to select a subset of features is a challengi...
We introduce a framework for filtering features that employs the Hilbert-Schmidt Independence Criter...
The Hilbert-Schmidt Independence Criterion (HSIC) is a dependence measure based on reproducing kerne...
Abstract—The increase in spatial and spectral resolution of the satellite sensors, along with the sh...
This paper proposes to learn the relevant features of remote sensing images for automatic spatio-spe...
International audienceThe definition of the Mahalanobis kernel for the classification of hyperspectr...
A novel semi-supervised kernel feature extraction algorithm to combine an efficient metric learning ...
Abstract—In this paper, the use of Independent Component (IC) Discriminant Analysis (ICDA) for remot...
A new supervised classification method is developed for quantitative analysis of remotely-sensed mul...
provides advantages for remote sensing Gustavo Camps-Valls Kernel methods increase the accuracy of r...
This letter introduces a nonlinear measure of independence between random variables for remote sensi...
This paper introduces a nonlinear measure of dependence between random variables in the context of r...
© 2017, Springer-Verlag Berlin Heidelberg. Measures of statistical dependence between random variabl...
We propose an independence criterion based on the eigenspectrum of covariance operators in reproduci...
The increase in spatial and spectral resolution of the satellite sensors, along with the shortening ...
International audienceDesigning an effective criterion to select a subset of features is a challengi...
We introduce a framework for filtering features that employs the Hilbert-Schmidt Independence Criter...
The Hilbert-Schmidt Independence Criterion (HSIC) is a dependence measure based on reproducing kerne...
Abstract—The increase in spatial and spectral resolution of the satellite sensors, along with the sh...
This paper proposes to learn the relevant features of remote sensing images for automatic spatio-spe...
International audienceThe definition of the Mahalanobis kernel for the classification of hyperspectr...
A novel semi-supervised kernel feature extraction algorithm to combine an efficient metric learning ...
Abstract—In this paper, the use of Independent Component (IC) Discriminant Analysis (ICDA) for remot...
A new supervised classification method is developed for quantitative analysis of remotely-sensed mul...
provides advantages for remote sensing Gustavo Camps-Valls Kernel methods increase the accuracy of r...