Mixture models are often used in the statistical segmentation of medical images. For example, they can be used for the segmentation of structural images into different matter types or of functional statistical parametric maps (SPMs) into activations and nonactivations. Nonspatial mixture models segment using models of just the histogram of intensity values. Spatial mixture models have also been developed which augment this histogram information with spatial regularization using Markov random fields. However, these techniques have control parameters, such as the strength of spatial regularization, which need to be tuned heuristically to particular datasets. We present a novel spatial mixture model within a fully Bayesian framework with the a...
In this work, we propose a new Bayesian model for unsupervised image segmentation based on a combina...
Abstract. In this paper, a spatially constrained mixture model for the segmentation of MR brain imag...
Abstract—A new Bayesian model is proposed for image seg-mentation based upon Gaussian mixture models...
Mixture models are commonly used in the statistical segmentation of images. For example, they can be...
Within-subject analysis in event-related functional Magnetic Resonance Imaging (fMRI) first relies o...
International audienceWithin-subject analysis in fMRI essentially addresses two problems, the detect...
International audienceWithin-subject analysis in fMRI essentially addresses two problems, the detect...
International audienceWithin-subject analysis in fMRI essentially addresses two problems, the detect...
International audienceIn medical imaging, lesion segmentation (differentiation between lesioned and ...
International audienceIn medical imaging, lesion segmentation (differentiation between lesioned and ...
International audienceIn medical imaging, lesion segmentation (differentiation between lesioned and ...
Finite mixture models have proven to be a great tool for both modeling non-standard probability dist...
We develop, implement and study a new Bayesian spatial mixture model (BSMM). The proposed BSMM allow...
Abstract—We propose a new approach for image segmentation based on a hierarchical and spatially vari...
Abstract. In this paper, a spatially constrained mixture model for the segmentation of MR brain imag...
In this work, we propose a new Bayesian model for unsupervised image segmentation based on a combina...
Abstract. In this paper, a spatially constrained mixture model for the segmentation of MR brain imag...
Abstract—A new Bayesian model is proposed for image seg-mentation based upon Gaussian mixture models...
Mixture models are commonly used in the statistical segmentation of images. For example, they can be...
Within-subject analysis in event-related functional Magnetic Resonance Imaging (fMRI) first relies o...
International audienceWithin-subject analysis in fMRI essentially addresses two problems, the detect...
International audienceWithin-subject analysis in fMRI essentially addresses two problems, the detect...
International audienceWithin-subject analysis in fMRI essentially addresses two problems, the detect...
International audienceIn medical imaging, lesion segmentation (differentiation between lesioned and ...
International audienceIn medical imaging, lesion segmentation (differentiation between lesioned and ...
International audienceIn medical imaging, lesion segmentation (differentiation between lesioned and ...
Finite mixture models have proven to be a great tool for both modeling non-standard probability dist...
We develop, implement and study a new Bayesian spatial mixture model (BSMM). The proposed BSMM allow...
Abstract—We propose a new approach for image segmentation based on a hierarchical and spatially vari...
Abstract. In this paper, a spatially constrained mixture model for the segmentation of MR brain imag...
In this work, we propose a new Bayesian model for unsupervised image segmentation based on a combina...
Abstract. In this paper, a spatially constrained mixture model for the segmentation of MR brain imag...
Abstract—A new Bayesian model is proposed for image seg-mentation based upon Gaussian mixture models...