Abstract. In this paper, a spatially constrained mixture model for the segmentation of MR brain images is presented. The novelty of this work is an edge-preserving smoothness prior which is imposed on the proba-bilities of the voxel labels. This prior incorporates a line process, which is modeled as a Bernoulli random variable, in order to preserve edges be-tween tissues. The main difference with other, state of the art methods imposing priors, is that the constraint is imposed on the probabilities of the voxel labels and not onto the labels themselves. Inference of the pro-posed Bayesian model is obtained using variational methodology and the model parameters are computed in closed form. Numerical experiments are presented where the propos...
This paper presents a model-based approach to correct for both partial volume effect and inhomogenei...
Abstract:- We propose a method to improve performance of image segmentation methods that are based o...
International audienceIn medical imaging, lesion segmentation (differentiation between lesioned and ...
Abstract. In this paper, a spatially constrained mixture model for the segmentation of MR brain imag...
Abstract. We present an automated algorithm for tissue segmentation of noisy, low contrast magnetic ...
Abstract. We present an automated algorithm for tissue segmentation of noisy, low contrast magnetic ...
\u3cp\u3eSuppose one is faced with the challenge of tissue segmentation in MR images, without annota...
We present a fully automatic mixture model-based tissue classification of multispectral (T1- and T2-...
We present a fully automatic mixture model-based tissue classification of multispectral (T1- and T2-...
Finite Mixture Models have been developed for brain tumor image seg- mentation using the Magnetic Re...
Mixture models are commonly used in the statistical segmentation of images. For example, they can be...
We present a fully automated algorithm for tissue segmentation of noisy, low contrast magnetic reson...
Accurate segmentation of brain tissue from magnetic resonance images (MRIs) is a critical task for d...
A Bayesian probability based tissue segmentation method is presented, which makes use of the grey le...
International audienceIn medical imaging, lesion segmentation (differentiation between lesioned and ...
This paper presents a model-based approach to correct for both partial volume effect and inhomogenei...
Abstract:- We propose a method to improve performance of image segmentation methods that are based o...
International audienceIn medical imaging, lesion segmentation (differentiation between lesioned and ...
Abstract. In this paper, a spatially constrained mixture model for the segmentation of MR brain imag...
Abstract. We present an automated algorithm for tissue segmentation of noisy, low contrast magnetic ...
Abstract. We present an automated algorithm for tissue segmentation of noisy, low contrast magnetic ...
\u3cp\u3eSuppose one is faced with the challenge of tissue segmentation in MR images, without annota...
We present a fully automatic mixture model-based tissue classification of multispectral (T1- and T2-...
We present a fully automatic mixture model-based tissue classification of multispectral (T1- and T2-...
Finite Mixture Models have been developed for brain tumor image seg- mentation using the Magnetic Re...
Mixture models are commonly used in the statistical segmentation of images. For example, they can be...
We present a fully automated algorithm for tissue segmentation of noisy, low contrast magnetic reson...
Accurate segmentation of brain tissue from magnetic resonance images (MRIs) is a critical task for d...
A Bayesian probability based tissue segmentation method is presented, which makes use of the grey le...
International audienceIn medical imaging, lesion segmentation (differentiation between lesioned and ...
This paper presents a model-based approach to correct for both partial volume effect and inhomogenei...
Abstract:- We propose a method to improve performance of image segmentation methods that are based o...
International audienceIn medical imaging, lesion segmentation (differentiation between lesioned and ...