A Bayesian hierarchical model is presented to classify very high resolution (VHR) images in a semisupervised manner, in which both a maximum entropy discrimination latent Dirichlet allocation (MedLDA) and a bilateral filter are combined into a novel application framework. The primary contribution of this paper is to nullify the disadvantages of traditional probabilistic topic models on pixel-level supervised information and to achieve the effective classification of VHR remote sensing images. This framework consists of the following two iterative steps. In the training stage, the model utilizes the central labeled pixel and its neighborhood, as a squared labeled image object, to train the classifiers. In the classification stage, each centr...
International audienceIn this paper we investigate a new hierarchical method for high resolution rem...
We present MATLAB software for the supervised classification of images. By super-vised we mean that ...
In this paper we develop a novel classification approach for multi-resolution, multi-sensor (optical...
Image segmentation is a key prerequisite for object-based classification. However, it is often diffi...
Remote sensing image segmentation requires multi-category classification typically with limited numb...
Imbalanced learning is a common problem in remote sensing imagery-based land-use and land-cover clas...
In very high resolution (VHR) image classification it is common to use spatial filters to enhance th...
Very high resolution (VHR) remote sensing images are widely used for land cover classification. Howe...
In this paper, a mapping procedure exploiting object boundaries in very high-resolution (VHR) images...
Scene classification of high-resolution remote sensing (HRRS) imagery is an important task in the in...
International audienceIn this paper, we propose a novel method for the classification of the multi-s...
This letter proposes two methods for the supervised classification of multisensor optical and synthe...
International audienceIn this paper, a hierarchical probabilistic graphical model is proposed to tac...
In this paper we investigate a new hierarchical method for high resolution remotely sensed image cla...
Multiscale segmentation is a key prerequisite step for object-based classification methods. However,...
International audienceIn this paper we investigate a new hierarchical method for high resolution rem...
We present MATLAB software for the supervised classification of images. By super-vised we mean that ...
In this paper we develop a novel classification approach for multi-resolution, multi-sensor (optical...
Image segmentation is a key prerequisite for object-based classification. However, it is often diffi...
Remote sensing image segmentation requires multi-category classification typically with limited numb...
Imbalanced learning is a common problem in remote sensing imagery-based land-use and land-cover clas...
In very high resolution (VHR) image classification it is common to use spatial filters to enhance th...
Very high resolution (VHR) remote sensing images are widely used for land cover classification. Howe...
In this paper, a mapping procedure exploiting object boundaries in very high-resolution (VHR) images...
Scene classification of high-resolution remote sensing (HRRS) imagery is an important task in the in...
International audienceIn this paper, we propose a novel method for the classification of the multi-s...
This letter proposes two methods for the supervised classification of multisensor optical and synthe...
International audienceIn this paper, a hierarchical probabilistic graphical model is proposed to tac...
In this paper we investigate a new hierarchical method for high resolution remotely sensed image cla...
Multiscale segmentation is a key prerequisite step for object-based classification methods. However,...
International audienceIn this paper we investigate a new hierarchical method for high resolution rem...
We present MATLAB software for the supervised classification of images. By super-vised we mean that ...
In this paper we develop a novel classification approach for multi-resolution, multi-sensor (optical...