We propose a supervised classification and dimensionality reduction method for hyperspectral images. The proposed method contains a mixture of probabilistic principal component analysis (PPCA) models. Using the PPCA in the mixture model inherently provides a dimensionality reduction. Defining the mixture model to be spatially varying, we are also able to include spatial information into the classification process. In this way, the proposed mixture model allows dimensionality reduction and spectral-spatial classification of hyperspectral image at the same time. The experimental results obtained on real hyperspectral data show that the proposed method yields better classification performance compared to state of the art methods
Global band selection or feature extraction methods have been applied to hyperspectral image classif...
Global band selection or feature extraction methods have been applied to hyperspectral image classif...
Classification of h yperspectral imaging (HSI) data is a challenging problem for two main reasons. F...
In this study a supervised classification and dimensionality reduction method for hyperspectral imag...
Dimensionality reduction is a crucial preprocessing step for effective analysis of high dimensional ...
International audienceIn this paper, we have applied supervised probabilistic principal component an...
International audienceIn this paper, we have applied supervised probabilistic principal component an...
Abstract- In this paper, we combined the applica-tion of a non-linear dimensionality reduction tech-...
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...
Abstract—Hyperspectral imagery typically provides a wealth of information captured in a wide range o...
Abstract—The same high dimensionality of hyperspectral imagery that facilitates detection of subtle ...
The present paper addresses the problem of the classification of hyperspectral images with multiple ...
The present paper addresses the problem of the classification of hyperspectral images with multiple ...
Global band selection or feature extraction methods have been applied to hyperspectral image classif...
Global band selection or feature extraction methods have been applied to hyperspectral image classif...
Global band selection or feature extraction methods have been applied to hyperspectral image classif...
Classification of h yperspectral imaging (HSI) data is a challenging problem for two main reasons. F...
In this study a supervised classification and dimensionality reduction method for hyperspectral imag...
Dimensionality reduction is a crucial preprocessing step for effective analysis of high dimensional ...
International audienceIn this paper, we have applied supervised probabilistic principal component an...
International audienceIn this paper, we have applied supervised probabilistic principal component an...
Abstract- In this paper, we combined the applica-tion of a non-linear dimensionality reduction tech-...
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...
Abstract—Hyperspectral imagery typically provides a wealth of information captured in a wide range o...
Abstract—The same high dimensionality of hyperspectral imagery that facilitates detection of subtle ...
The present paper addresses the problem of the classification of hyperspectral images with multiple ...
The present paper addresses the problem of the classification of hyperspectral images with multiple ...
Global band selection or feature extraction methods have been applied to hyperspectral image classif...
Global band selection or feature extraction methods have been applied to hyperspectral image classif...
Global band selection or feature extraction methods have been applied to hyperspectral image classif...
Classification of h yperspectral imaging (HSI) data is a challenging problem for two main reasons. F...