Abstract—This paper presents a validation study on statistical nonsupervised brain tissue classification techniques in magnetic resonance (MR) images. Several image models assuming different hypotheses regarding the intensity distribution model, the spatial model and the number of classes are assessed. The methods are tested on simulated data for which the classification ground truth is known. Different noise and intensity nonuniformities are added to simulate real imaging conditions. No enhancement of the image quality is considered either before or during the classification process. This way, the accuracy of the methods and their ro-bustness against image artifacts are tested. Classification is also performed on real data where a quantita...
Brain tissue classification from Magnetic Resonance Imaging (MRI) is of great importance for re...
International audienceThis paper presents a fully-automatic 3D classification of brain tissues for M...
This work investigates the capability of supervised classification methods in detecting both major t...
This paper presents a validation study on statistical nonsupervised brain tissue classification tech...
We propose a deep study on tissue modelization and classification Techniques on T1-weighted MR image...
We propose a deep study on tissue modelization and classification Techniques on T1-weighted MR image...
We propose a deep study on tissue modelization and classification Techniques on T1-weighted MR image...
We propose a deep study on tissue modelization and classification Techniques on T1-weighted MR image...
We propose a deep study on tissue modelization and classification Techniques on T1-weighted MR image...
We propose a deep study on tissue modelization andclassification Techniques on T1-weighted MR images...
We describe a fully automated method for model-based tissue classification of Magnetic Resonance (MR...
We describe a fully automated method for model-based tissue classification of magnetic resonance (MR...
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...
Brain tissue classification from Magnetic Resonance Imaging (MRI) is of great importance for re...
International audienceThis paper presents a fully-automatic 3D classification of brain tissues for M...
This work investigates the capability of supervised classification methods in detecting both major t...
This paper presents a validation study on statistical nonsupervised brain tissue classification tech...
We propose a deep study on tissue modelization and classification Techniques on T1-weighted MR image...
We propose a deep study on tissue modelization and classification Techniques on T1-weighted MR image...
We propose a deep study on tissue modelization and classification Techniques on T1-weighted MR image...
We propose a deep study on tissue modelization and classification Techniques on T1-weighted MR image...
We propose a deep study on tissue modelization and classification Techniques on T1-weighted MR image...
We propose a deep study on tissue modelization andclassification Techniques on T1-weighted MR images...
We describe a fully automated method for model-based tissue classification of Magnetic Resonance (MR...
We describe a fully automated method for model-based tissue classification of magnetic resonance (MR...
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...
Brain tissue classification from Magnetic Resonance Imaging (MRI) is of great importance for re...
International audienceThis paper presents a fully-automatic 3D classification of brain tissues for M...
This work investigates the capability of supervised classification methods in detecting both major t...