International audienceA family of parsimonious Gaussian process models is presented. They allow to construct a Gaussian mixture model in a kernel feature space by assuming that the data of each class live in a specific subspace. The proposed models are used to build a kernel Markov random field (pGPMRF), which is applied to classify the pixels of a real multivariate remotely sensed image. In terms of classification accuracy, some of the proposed models perform equivalently to a SVM but they perform better than another kernel Gaussian mixture model previously defined in the literature. The pGPMRF provides the best classification accuracy thanks to the spatial regularization
The paper addresses problems related to classification of images obtained by various types of remote...
The most successful one-class classification methods are discriminative approaches aimed at separati...
AbstractThis paper considers image classification based on a Markov random field (MRF), where the ra...
International audienceA family of parsimonious Gaussian process models is presented. They allow to c...
International audienceA family of parsimonious Gaussian process models for classification is propose...
International audienceIn the context of remote sensing image classification, Markov random fields (M...
International audienceThe definition of the Mahalanobis kernel for the classification of hyperspectr...
Abstract—The Gaussian mixture model is a well-known classi-fication tool that captures non-Gaussian ...
Abstract—The Gaussian mixture model is a well-known classification tool that captures non-Gaussian s...
A large-scale feature selection wrapper is discussed for the classification of high dimensional remo...
This study compares the performance of two non-parametric classifiers and Gaussian Maximum Likelihoo...
The most important issues in optimization based computer vision problems are the representation of t...
International audienceThis letter proposes two methods for the supervised classification of multisen...
For many problems in geostatistics, land cover classification, and brain imaging the classical Gauss...
International audienceA Markov random field is a graphical model that is commonly used to combine sp...
The paper addresses problems related to classification of images obtained by various types of remote...
The most successful one-class classification methods are discriminative approaches aimed at separati...
AbstractThis paper considers image classification based on a Markov random field (MRF), where the ra...
International audienceA family of parsimonious Gaussian process models is presented. They allow to c...
International audienceA family of parsimonious Gaussian process models for classification is propose...
International audienceIn the context of remote sensing image classification, Markov random fields (M...
International audienceThe definition of the Mahalanobis kernel for the classification of hyperspectr...
Abstract—The Gaussian mixture model is a well-known classi-fication tool that captures non-Gaussian ...
Abstract—The Gaussian mixture model is a well-known classification tool that captures non-Gaussian s...
A large-scale feature selection wrapper is discussed for the classification of high dimensional remo...
This study compares the performance of two non-parametric classifiers and Gaussian Maximum Likelihoo...
The most important issues in optimization based computer vision problems are the representation of t...
International audienceThis letter proposes two methods for the supervised classification of multisen...
For many problems in geostatistics, land cover classification, and brain imaging the classical Gauss...
International audienceA Markov random field is a graphical model that is commonly used to combine sp...
The paper addresses problems related to classification of images obtained by various types of remote...
The most successful one-class classification methods are discriminative approaches aimed at separati...
AbstractThis paper considers image classification based on a Markov random field (MRF), where the ra...