Kernel-based methods and ensemble learning are two important paradigms for the classification of hyperspectral remote sensing images. However, they were developed in parallel with different principles. In this paper, we aim to combine the advantages of kernel and ensemble methods by proposing a kernel supervised ensemble classification method. In particular, the proposed method, namely RoF-KOPLS, combines the merits of ensemble feature learning (i.e., Rotation Forest (RoF)) and kernel supervised learning (i.e., Kernel Orthonormalized Partial Least Square (KOPLS)). In particular, the feature space is randomly split into K disjoint subspace and KOPLS is applied to each subspace to produce the new features set for the training of decision tree...
The class imbalance problem has been reported to exist in remote sensing and hinders the classificat...
This dissertation develops new techniques to reduce computational complexity for hyperspectral remot...
In recent years, a number of works proposing the combination of multiple classifiers to produce a si...
Random Forest (RF) is a widely used classifier to show a good performance of hyperspectral data clas...
International audienceIn this letter, an ensemble learning approach, Rotation Forest, has been appli...
In this letter, we propose a new version of the rotation forest (RoF) method for the pixelwise class...
Ensemble learning is widely used to combine varieties of weak learners in order to generate a relati...
International audienceWith different principles, support vector machines (SVMs) and multiple classif...
International audienceClassification is one of the most important techniques to the analysis of hype...
International audienceHyperspectral remote sensing sensors can capture hundreds of contiguous spectr...
Hyperspectral remote sensing has tremendous potential for monitoring land cover and water bodies fro...
Incorporating disparate features from multiple sources can provide valuable diverse information for ...
In this thesis, we propose several new techniques for the classification of hyperspectral remote sen...
Random forest (RF) is a popular ensemble learning method that is widely used for the analysis of rem...
To improve hyperspectral image classification accuracy,a classification method based on combination ...
The class imbalance problem has been reported to exist in remote sensing and hinders the classificat...
This dissertation develops new techniques to reduce computational complexity for hyperspectral remot...
In recent years, a number of works proposing the combination of multiple classifiers to produce a si...
Random Forest (RF) is a widely used classifier to show a good performance of hyperspectral data clas...
International audienceIn this letter, an ensemble learning approach, Rotation Forest, has been appli...
In this letter, we propose a new version of the rotation forest (RoF) method for the pixelwise class...
Ensemble learning is widely used to combine varieties of weak learners in order to generate a relati...
International audienceWith different principles, support vector machines (SVMs) and multiple classif...
International audienceClassification is one of the most important techniques to the analysis of hype...
International audienceHyperspectral remote sensing sensors can capture hundreds of contiguous spectr...
Hyperspectral remote sensing has tremendous potential for monitoring land cover and water bodies fro...
Incorporating disparate features from multiple sources can provide valuable diverse information for ...
In this thesis, we propose several new techniques for the classification of hyperspectral remote sen...
Random forest (RF) is a popular ensemble learning method that is widely used for the analysis of rem...
To improve hyperspectral image classification accuracy,a classification method based on combination ...
The class imbalance problem has been reported to exist in remote sensing and hinders the classificat...
This dissertation develops new techniques to reduce computational complexity for hyperspectral remot...
In recent years, a number of works proposing the combination of multiple classifiers to produce a si...