We describe a fully automated method for model-based tissue classification of magnetic resonance (MR) images of the brain. The method interleaves classification with estimation of the model parameters, improving the classification at each iteration. The algorithm is able to segment single- and multispectral MR images, corrects for MR signal inhomogeneities, and incorporates contextual information by means of Markov random Fields (MRF's). A digital brain atlas containing prior expectations about the spatial location of tissue classes is used to initialize the algorithm. This makes the method fully automated and therefore it provides objective and reproducible segmentations. We have validated the technique on simulated as well as on real MR i...
The objective of this thesis is to classify Magnetic Resonance brain images into component tissue ty...
Classification of Magnetic Resonance (MR) images of the human brain into anatomically meaningful tis...
This paper presents a validation study on statistical nonsupervised brain tissue classification tech...
We describe a fully automated method for model-based tissue classification of Magnetic Resonance (MR...
International audienceThis paper presents a fully-automatic 3D classification of brain tissues for M...
International audienceThis paper presents a fully automatic three-dimensional classification of brai...
International audienceThis paper presents a fully automatic three-dimensional classification of brai...
International audienceThis paper presents a fully automatic three-dimensional classification of brai...
Abstract—This paper presents a validation study on statistical nonsupervised brain tissue classifica...
A fully automatic procedure for brain tissue classification from 3D magnetic resonance head images (...
Abstract. We present an automated algorithm for tissue segmentation of noisy, low contrast magnetic ...
Magnetic Resonance Imaging is one of the most important medical imaging techniques for the investiga...
Magnetic Resonance Imaging is one of the most important medical imaging techniques for the investiga...
Magnetic Resonance Imaging is one of the most important medical imaging techniques for the investiga...
Abstract. We present an automated algorithm for tissue segmentation of noisy, low contrast magnetic ...
The objective of this thesis is to classify Magnetic Resonance brain images into component tissue ty...
Classification of Magnetic Resonance (MR) images of the human brain into anatomically meaningful tis...
This paper presents a validation study on statistical nonsupervised brain tissue classification tech...
We describe a fully automated method for model-based tissue classification of Magnetic Resonance (MR...
International audienceThis paper presents a fully-automatic 3D classification of brain tissues for M...
International audienceThis paper presents a fully automatic three-dimensional classification of brai...
International audienceThis paper presents a fully automatic three-dimensional classification of brai...
International audienceThis paper presents a fully automatic three-dimensional classification of brai...
Abstract—This paper presents a validation study on statistical nonsupervised brain tissue classifica...
A fully automatic procedure for brain tissue classification from 3D magnetic resonance head images (...
Abstract. We present an automated algorithm for tissue segmentation of noisy, low contrast magnetic ...
Magnetic Resonance Imaging is one of the most important medical imaging techniques for the investiga...
Magnetic Resonance Imaging is one of the most important medical imaging techniques for the investiga...
Magnetic Resonance Imaging is one of the most important medical imaging techniques for the investiga...
Abstract. We present an automated algorithm for tissue segmentation of noisy, low contrast magnetic ...
The objective of this thesis is to classify Magnetic Resonance brain images into component tissue ty...
Classification of Magnetic Resonance (MR) images of the human brain into anatomically meaningful tis...
This paper presents a validation study on statistical nonsupervised brain tissue classification tech...