In this work, we develop a new framework to combine ensemble learning and composite kernel learning for hyperspectral image classification. We refer it as the multiple composite kernel learning, which is based on an iterative architecture. More specifically, in each iteration, we use the rotation-based ensemble to create rotation matrix, which is used to generate rotated features for both spectral and spatial information (e.g., extinction profiles). Then, the new spectral and spatial features are integrated into the composite kernels based on support vector machines classifier. Different rotation matrices will lead to obtaining various newly spectral and spatial characteristics, thereby they further increase the diversity and the classifica...
The classification of hyperspectral images is one of the most popular fields in remote sensing appli...
International audienceIn this paper, we propose a new spectral-spatial classification strategy to en...
In this paper, we propose a discriminative multiple kernel learning (DMKL) method for spectral image...
Classification techniques for hyperspectral images based on random forest (RF) ensembles and extende...
For the classification of hyperspectral images (HSIs), this paper presents a novel framework to effe...
Abstract—Hyperspectral image classification has been an active topic of research in recent years. In...
In this thesis, we propose several new techniques for the classification of hyperspectral remote sen...
Extinction profile (EP) is an effective feature extraction method which can well preserve the geomet...
Ensemble learning is widely used to combine varieties of weak learners in order to generate a relati...
Abstract—This paper presents a new framework for the de-velopment of generalized composite kernel ma...
The kernel function plays an important role in machine learning methods such as the support vector m...
This work was supported in part by the National Science Fund for Excellent Young Scholars under Gran...
Kernel-based methods and ensemble learning are two important paradigms for the classification of hyp...
International audienceWith different principles, support vector machines (SVMs) and multiple classif...
In this paper, we introduce a novel classification framework for hyperspectral images (HSIs) by join...
The classification of hyperspectral images is one of the most popular fields in remote sensing appli...
International audienceIn this paper, we propose a new spectral-spatial classification strategy to en...
In this paper, we propose a discriminative multiple kernel learning (DMKL) method for spectral image...
Classification techniques for hyperspectral images based on random forest (RF) ensembles and extende...
For the classification of hyperspectral images (HSIs), this paper presents a novel framework to effe...
Abstract—Hyperspectral image classification has been an active topic of research in recent years. In...
In this thesis, we propose several new techniques for the classification of hyperspectral remote sen...
Extinction profile (EP) is an effective feature extraction method which can well preserve the geomet...
Ensemble learning is widely used to combine varieties of weak learners in order to generate a relati...
Abstract—This paper presents a new framework for the de-velopment of generalized composite kernel ma...
The kernel function plays an important role in machine learning methods such as the support vector m...
This work was supported in part by the National Science Fund for Excellent Young Scholars under Gran...
Kernel-based methods and ensemble learning are two important paradigms for the classification of hyp...
International audienceWith different principles, support vector machines (SVMs) and multiple classif...
In this paper, we introduce a novel classification framework for hyperspectral images (HSIs) by join...
The classification of hyperspectral images is one of the most popular fields in remote sensing appli...
International audienceIn this paper, we propose a new spectral-spatial classification strategy to en...
In this paper, we propose a discriminative multiple kernel learning (DMKL) method for spectral image...