This paper presents a hierarchical classification approach for Synthetic Aperture Radar (SAR) images. The Conditional Random Field (CRF) and Bayesian Network (BN) are employed to incorporate prior knowledge into this approach for facilitating SAR image classification. (1) A multilayer region pyramid is constructed based on multiscale oversegmentation, and then, CRF is used to model the spatial relationships among those extracted regions within each layer of the region pyramid; the boundary prior knowledge is exploited and integrated into the CRF model as a strengthened constraint to improve classification performance near the boundaries. (2) Multilayer BN is applied to establish the causal connections between adjacent layers of the construc...
ABSTRACT: This paper discusses random field based image classification methods, and in particular co...
In this paper, we introduce dynamic and scalable Synthetic Aperture Radar (SAR) terrain classificati...
International audienceThis letter proposes two methods for the supervised classification of multisen...
This paper presents a hierarchical classification approach for Synthetic Aperture Radar (SAR) images...
Abstract—This letter presents a supervised classification method for synthetic aperture radar (SAR) ...
We introduce the hierarchical Markov aspect model (HMAM), a computationally efficient graphical mode...
Abstract — We introduce the hierarchical Markov aspect model (HMAM), a computationally efficient gra...
Automatic image classification is of major importance for a wide range of applications and is suppor...
This letter proposes an associative hierarchical conditional random field (AHCRF) model to improve t...
This letter proposes two methods for the supervised classification of multisensor optical and synthe...
Fusion of remote sensing images and LiDAR data provides complimentary information for the remote sen...
International audienceThis letter addresses the problem of classifying synthetic aperture radar (SAR...
International audienceThe problem of the semantic segmentation of multimodal images is characterized...
Synthetic aperture radar (SAR) image segmentation aims at generating homogeneous regions from a pixe...
International audience<p>When dealing with SAR image classification, the class parameters may vary a...
ABSTRACT: This paper discusses random field based image classification methods, and in particular co...
In this paper, we introduce dynamic and scalable Synthetic Aperture Radar (SAR) terrain classificati...
International audienceThis letter proposes two methods for the supervised classification of multisen...
This paper presents a hierarchical classification approach for Synthetic Aperture Radar (SAR) images...
Abstract—This letter presents a supervised classification method for synthetic aperture radar (SAR) ...
We introduce the hierarchical Markov aspect model (HMAM), a computationally efficient graphical mode...
Abstract — We introduce the hierarchical Markov aspect model (HMAM), a computationally efficient gra...
Automatic image classification is of major importance for a wide range of applications and is suppor...
This letter proposes an associative hierarchical conditional random field (AHCRF) model to improve t...
This letter proposes two methods for the supervised classification of multisensor optical and synthe...
Fusion of remote sensing images and LiDAR data provides complimentary information for the remote sen...
International audienceThis letter addresses the problem of classifying synthetic aperture radar (SAR...
International audienceThe problem of the semantic segmentation of multimodal images is characterized...
Synthetic aperture radar (SAR) image segmentation aims at generating homogeneous regions from a pixe...
International audience<p>When dealing with SAR image classification, the class parameters may vary a...
ABSTRACT: This paper discusses random field based image classification methods, and in particular co...
In this paper, we introduce dynamic and scalable Synthetic Aperture Radar (SAR) terrain classificati...
International audienceThis letter proposes two methods for the supervised classification of multisen...