In this letter, we propose a new version of the rotation forest (RoF) method for the pixelwise classification of hyperspectral images. RoF, which is an ensemble of decision tree classifiers, uses random feature selection and data transformation techniques (i.e., principal component analysis) to improve both the accuracy of base classifiers and the diversity within the ensemble. Traditional RoF performs data transformation on the training samples of each subset. In order to further improve the performance of RoF, the data transformation is separately performed on each class, extracting sets of transformation matrices that are strictly dependent on the training samples of each single class. The approach, namely, class-separation-based RoF (Ro...
Classification techniques for hyperspectral images based on random forest (RF) ensembles and extende...
Ensemble classifiers are being widely used for the classification of spectroscopic data. In this reg...
In this letter, we propose a novel approach for improving Random Forest (RF) in hyperspectral image ...
In this letter, we propose a new version of the rotation forest (RoF) method for the pixelwise class...
International audienceIn this letter, an ensemble learning approach, Rotation Forest, has been appli...
Ensemble learning is widely used to combine varieties of weak learners in order to generate a relati...
Random Forest (RF) is a widely used classifier to show a good performance of hyperspectral data clas...
International audienceIn this paper, we propose a new spectral-spatial classification strategy to en...
International audienceWith different principles, support vector machines (SVMs) and multiple classif...
Decision tree-based Rotation Forest could generate satisfactory but lower classification accuracy fo...
In this thesis, we propose several new techniques for the classification of hyperspectral remote sen...
Kernel-based methods and ensemble learning are two important paradigms for the classification of hyp...
This paper presents a new framework for object-based classification of high-resolution hyperspectral...
Global band selection or feature extraction methods have been applied to hyperspectral image classif...
Global band selection or feature extraction methods have been applied to hyperspectral image classif...
Classification techniques for hyperspectral images based on random forest (RF) ensembles and extende...
Ensemble classifiers are being widely used for the classification of spectroscopic data. In this reg...
In this letter, we propose a novel approach for improving Random Forest (RF) in hyperspectral image ...
In this letter, we propose a new version of the rotation forest (RoF) method for the pixelwise class...
International audienceIn this letter, an ensemble learning approach, Rotation Forest, has been appli...
Ensemble learning is widely used to combine varieties of weak learners in order to generate a relati...
Random Forest (RF) is a widely used classifier to show a good performance of hyperspectral data clas...
International audienceIn this paper, we propose a new spectral-spatial classification strategy to en...
International audienceWith different principles, support vector machines (SVMs) and multiple classif...
Decision tree-based Rotation Forest could generate satisfactory but lower classification accuracy fo...
In this thesis, we propose several new techniques for the classification of hyperspectral remote sen...
Kernel-based methods and ensemble learning are two important paradigms for the classification of hyp...
This paper presents a new framework for object-based classification of high-resolution hyperspectral...
Global band selection or feature extraction methods have been applied to hyperspectral image classif...
Global band selection or feature extraction methods have been applied to hyperspectral image classif...
Classification techniques for hyperspectral images based on random forest (RF) ensembles and extende...
Ensemble classifiers are being widely used for the classification of spectroscopic data. In this reg...
In this letter, we propose a novel approach for improving Random Forest (RF) in hyperspectral image ...