International audienceA general framework of spatio-spectral segmentation for multi-spectral images is introduced in this paper. The method is based on classification-driven stochastic watershed (WS) by Monte Carlo simulations, and it gives more regular and reliable contours than standard WS. The present approach is decomposed into several sequential steps. First, a dimensionality-reduction stage is performed using the factor-correspondence analysis method. In this context, a new way to select the factor axes (eigenvectors) according to their spatial information is introduced. Then, a spectral classification produces a spectral pre-segmentation of the image. Subsequently, a probability density function (pdf) of contours containing spatial a...
A multi-spectral texture characterisation model is proposed, the Multi-spectral Local Differences Te...
A new technique for the segmentation of single- and multiresolution (MR) remote sensing images is pr...
Dans cette thèse, nous proposons et développons des nouvelles méthodes et algorithmes spectro-spatia...
International audienceStochastic watershed is a robust method to estimate the probability density fu...
This paper deals with unsupervised segmentation of hyper-spectral images. It is based on the stochas...
Stochastic watershed is a robust method to estimate the probability density function (pdf) of contou...
Abstract. This paper extends the use of stochastic watershed, recently introduced by Angulo and Jeul...
High-resolution multispectral remote sensing image provides both spectral and structural information...
International audienceRecent advances in spectral-spatial classification of hyperspectral images are...
High-resolution multispectral remote sensing image provides both spectral and structural information...
A new spectral-spatial method for classification of hyperspectral images is introduced. The proposed...
Image segmentation is a key and prerequisite step for object-based analysis of very high resolution ...
International audienceIn this paper, a new method for supervised hyperspectral data classification i...
Abstract—We present a new method for remote sensing image segmentation, which utilizes both spectral...
International audienceThe Hierarchical SEGmentation (HSEG) algorithm, which combines region object f...
A multi-spectral texture characterisation model is proposed, the Multi-spectral Local Differences Te...
A new technique for the segmentation of single- and multiresolution (MR) remote sensing images is pr...
Dans cette thèse, nous proposons et développons des nouvelles méthodes et algorithmes spectro-spatia...
International audienceStochastic watershed is a robust method to estimate the probability density fu...
This paper deals with unsupervised segmentation of hyper-spectral images. It is based on the stochas...
Stochastic watershed is a robust method to estimate the probability density function (pdf) of contou...
Abstract. This paper extends the use of stochastic watershed, recently introduced by Angulo and Jeul...
High-resolution multispectral remote sensing image provides both spectral and structural information...
International audienceRecent advances in spectral-spatial classification of hyperspectral images are...
High-resolution multispectral remote sensing image provides both spectral and structural information...
A new spectral-spatial method for classification of hyperspectral images is introduced. The proposed...
Image segmentation is a key and prerequisite step for object-based analysis of very high resolution ...
International audienceIn this paper, a new method for supervised hyperspectral data classification i...
Abstract—We present a new method for remote sensing image segmentation, which utilizes both spectral...
International audienceThe Hierarchical SEGmentation (HSEG) algorithm, which combines region object f...
A multi-spectral texture characterisation model is proposed, the Multi-spectral Local Differences Te...
A new technique for the segmentation of single- and multiresolution (MR) remote sensing images is pr...
Dans cette thèse, nous proposons et développons des nouvelles méthodes et algorithmes spectro-spatia...