In this letter, we propose a novel approach for improving Random Forest (RF) in hyperspectral image classification. The proposed approach combines the ensemble of features and the semisupervised feature extraction (SSFE) technique. The main contribution of our approach is to construct an ensemble of RF classifiers. In this way, the feature space is divided into several disjoint feature subspaces. Then, the feature subspaces induced by the SSFE technique are used as the input space to an RF classifier. This method is compared with a regular RF and an RF with the reduced features by the SSFE on two real hyperspectral data sets, showing an improved performance in ill-posed, poor-posed, and well-posed conditions. An additional study shows that ...
Abstract—Traditional statistical classification approaches often fail to yield adequate results with...
Ensemble classifiers are being widely used for the classification of spectroscopic data. In this reg...
International audienceIn this letter, an ensemble learning approach, Rotation Forest, has been appli...
In this letter, we propose a novel approach for improving Random Forest (RF) in hyperspectral image ...
International audienceIn this letter, we propose a novel approach for improving Random Forest (RF) i...
The purposes of the algorithm presented in this paper are to select features with the highest averag...
Classification techniques for hyperspectral images based on random forest (RF) ensembles and extende...
Hyperspectral imagery generates huge data volumes, consist-ing of hundreds of contiguous and often h...
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...
In this paper, an efficient semi-supervised support vector machine (SVM) with segmentation-based ens...
International audienceHyperspectral imagery generates huge data volumes, consisting of hundreds of c...
International audienceClassification is one of the most important techniques to the analysis of hype...
This paper presents a new framework for object-based classification of high-resolution hyperspectral...
The class imbalance problem has been reported to exist in remote sensing and hinders the classificat...
Abstract—Traditional statistical classification approaches often fail to yield adequate results with...
Ensemble classifiers are being widely used for the classification of spectroscopic data. In this reg...
International audienceIn this letter, an ensemble learning approach, Rotation Forest, has been appli...
In this letter, we propose a novel approach for improving Random Forest (RF) in hyperspectral image ...
International audienceIn this letter, we propose a novel approach for improving Random Forest (RF) i...
The purposes of the algorithm presented in this paper are to select features with the highest averag...
Classification techniques for hyperspectral images based on random forest (RF) ensembles and extende...
Hyperspectral imagery generates huge data volumes, consist-ing of hundreds of contiguous and often h...
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...
In this paper, an efficient semi-supervised support vector machine (SVM) with segmentation-based ens...
International audienceHyperspectral imagery generates huge data volumes, consisting of hundreds of c...
International audienceClassification is one of the most important techniques to the analysis of hype...
This paper presents a new framework for object-based classification of high-resolution hyperspectral...
The class imbalance problem has been reported to exist in remote sensing and hinders the classificat...
Abstract—Traditional statistical classification approaches often fail to yield adequate results with...
Ensemble classifiers are being widely used for the classification of spectroscopic data. In this reg...
International audienceIn this letter, an ensemble learning approach, Rotation Forest, has been appli...