International audienceThis paper addresses the problem of jointly estimating the statistical distribution and segmenting lesions in multiple-tissue high-frequency skin ultrasound images. The distribution of multiple-tissue images is modeled as a spatially coherent finite mixture of heavy-tailed Rayleigh distributions. Spatial coherence inherent to biological tissues is modeled by enforcing local dependence between the mixture components. An original Bayesian algorithm combined with a Markov chain Monte Carlo method is then proposed to jointly estimate the mixture parameters and a label-vector associating each voxel to a tissue. More precisely, a hybrid Metropolis-within-Gibbs sampler is used to draw samples that are asymptotically distribut...
In this paper, a novel geometric active contour model for segmenting ultrasound image is presented. ...
Medical images such as ultrasound, Computed Tomography (CT) and Magnetic Resonance Imaging (MRI) are...
International audienceThis paper proposes a joint segmentation and deconvolution Bayesian method for...
This paper addresses the problem of jointly estimating the statistical distribution and segmenting l...
This thesis studies statistical image processing of high frequency ultrasound imaging, with applicat...
This thesis studies statistical image processing of high frequency ultrasound imaging, with applicat...
International audienceAs a particular case of the Finite Mixture Model (FMM), Rayleigh Mixture Model...
International audienceThe finite mixture model based on the Gaussian distribution is a flexible and ...
AbstractWe propose a multi-purpose level-set segmentation algorithm to detect the boundary of tumors...
International audienceHigh-frequency 3-D ultrasound imaging is an informative tool for diagnosis, su...
This paper proposes a joint segmentation and deconvolution Bayesian method for medical ultrasound (U...
This study presents a geometric model and a computational algorithm for segmentation of ultrasound i...
This thesis studies statistical image processing of high frequency ultrasound imaging, with applicat...
The presented method addresses the problem of multi-spectral image segmentation through use of a mod...
In this paper, we propose a robust adaptive region segmentation algorithm for noisy images, within a...
In this paper, a novel geometric active contour model for segmenting ultrasound image is presented. ...
Medical images such as ultrasound, Computed Tomography (CT) and Magnetic Resonance Imaging (MRI) are...
International audienceThis paper proposes a joint segmentation and deconvolution Bayesian method for...
This paper addresses the problem of jointly estimating the statistical distribution and segmenting l...
This thesis studies statistical image processing of high frequency ultrasound imaging, with applicat...
This thesis studies statistical image processing of high frequency ultrasound imaging, with applicat...
International audienceAs a particular case of the Finite Mixture Model (FMM), Rayleigh Mixture Model...
International audienceThe finite mixture model based on the Gaussian distribution is a flexible and ...
AbstractWe propose a multi-purpose level-set segmentation algorithm to detect the boundary of tumors...
International audienceHigh-frequency 3-D ultrasound imaging is an informative tool for diagnosis, su...
This paper proposes a joint segmentation and deconvolution Bayesian method for medical ultrasound (U...
This study presents a geometric model and a computational algorithm for segmentation of ultrasound i...
This thesis studies statistical image processing of high frequency ultrasound imaging, with applicat...
The presented method addresses the problem of multi-spectral image segmentation through use of a mod...
In this paper, we propose a robust adaptive region segmentation algorithm for noisy images, within a...
In this paper, a novel geometric active contour model for segmenting ultrasound image is presented. ...
Medical images such as ultrasound, Computed Tomography (CT) and Magnetic Resonance Imaging (MRI) are...
International audienceThis paper proposes a joint segmentation and deconvolution Bayesian method for...