In this article, the task of remote-sensing image classification is tackled with local maximal margin approaches. First, we introduce a set of local kernel-based classifiers that alleviate the computational limitations of local support vector machines (SVMs), maintaining at the same time high classification accuracies. Such methods rely on the following idea: (a) during training, build a set of local models covering the considered data and (b) during prediction, choose the most appropriate local model for each sample to evaluate. Additionally, we present a family of operators on kernels aiming to integrate the local information into existing (input) kernels in order to obtain a quasi-local (QL) kernel. To compare the performances achieved b...
The incorporation of prior knowledge into the Support Vector Machine (SVM) architecture is a problem...
We follow the idea of learning invariant decision functions for remote sensing image classification ...
In this work, we present a new support vector machine (SVM)-based active learning method for the cla...
In this article, the task of remote-sensing image classification is tackled with local maximal margi...
The classification of remote sensing images is a challenging task, as image contains bulk of informa...
Classification of broad area features in satellite imagery is one of the most important applications...
This chapter presents an extensive and critical review on the use of kernel methods and in particula...
This paper proposes to learn the relevant features of remote sensing images for automatic spatio-spe...
provides advantages for remote sensing Gustavo Camps-Valls Kernel methods increase the accuracy of r...
Classification of hyperspectral remote sensing data with sup-port vector machines (SVMs) is investig...
Traditional kernel classifiers assume independence among the classification outputs. As a consequenc...
In the last decade, the application of statistical and neural network classifiers to re...
Abstract—This paper addresses classification of hyperspectral remote sensing images with kernel-base...
Land cover information is essential for many diverse applications. Various natural resource manageme...
A very important task in pattern recognition is the incorporation of prior information into the lear...
The incorporation of prior knowledge into the Support Vector Machine (SVM) architecture is a problem...
We follow the idea of learning invariant decision functions for remote sensing image classification ...
In this work, we present a new support vector machine (SVM)-based active learning method for the cla...
In this article, the task of remote-sensing image classification is tackled with local maximal margi...
The classification of remote sensing images is a challenging task, as image contains bulk of informa...
Classification of broad area features in satellite imagery is one of the most important applications...
This chapter presents an extensive and critical review on the use of kernel methods and in particula...
This paper proposes to learn the relevant features of remote sensing images for automatic spatio-spe...
provides advantages for remote sensing Gustavo Camps-Valls Kernel methods increase the accuracy of r...
Classification of hyperspectral remote sensing data with sup-port vector machines (SVMs) is investig...
Traditional kernel classifiers assume independence among the classification outputs. As a consequenc...
In the last decade, the application of statistical and neural network classifiers to re...
Abstract—This paper addresses classification of hyperspectral remote sensing images with kernel-base...
Land cover information is essential for many diverse applications. Various natural resource manageme...
A very important task in pattern recognition is the incorporation of prior information into the lear...
The incorporation of prior knowledge into the Support Vector Machine (SVM) architecture is a problem...
We follow the idea of learning invariant decision functions for remote sensing image classification ...
In this work, we present a new support vector machine (SVM)-based active learning method for the cla...