International audienceIn this paper, we propose a new knowledge-based method illustrated in the context of segmentation, which labels internal brain structures viewed by magnetic resonance imaging (MRI). In order to improve the accuracy of the labeling, we introduce a fuzzy model of regions of interest (ROI) by analogy with the electrostatic potential distribution, to represent more appropriately the knowledge of distance, shape and relationship of structures. The knowledge is mainly derived from the Talairach stereotaxic atlas. The labeling is achieved by the regionwise labeling using genetic algorithms (GAs), followed by a voxelwise amendment using parallel region growing. The fuzzy model is used both to design the fitness function of GAs...
The interior boundary of medical image is fuzzy in nature. In this paper, proposed is a novel method...
Segmentation and visualisation of anatomical regions of the brain are fundamental problems in medica...
We present a collection of methods that model and interpret information represented in structural ma...
International audienceIn this paper, we propose a novel automatic method based on fuzzy modeling of ...
We report a novel computer method for automatic labeling of structures in 3D MRI data sets using exp...
International audienceThis paper presents an automatic algorithm to segment and classify neuroanatom...
Nous proposons une méthode basée sur la connaissance a priori pour la segmentation et la reconnaissa...
Abstract—We present an algorithm that automatically segments and classifies the brain structures in ...
textabstractThe final type of segmentationmethod is atlas-based segmentation (sometimes also called...
In the present work we propose a novel label fusion strategy specifically oriented to MRI Brain tumo...
AbstractWe present a technique for automatically assigning a neuroanatomical label to each voxel in ...
Background: Regarding the importance of right diagnosis in medical applications, various methods hav...
This dissertation presents a knowledge-guided expert system that is capable of applying routinesfor ...
Image segmentation is an indispensable process in the visualization of human tissues, particularly d...
International audienceWe propose to segment 3D structures with competitive level sets driven by fuzz...
The interior boundary of medical image is fuzzy in nature. In this paper, proposed is a novel method...
Segmentation and visualisation of anatomical regions of the brain are fundamental problems in medica...
We present a collection of methods that model and interpret information represented in structural ma...
International audienceIn this paper, we propose a novel automatic method based on fuzzy modeling of ...
We report a novel computer method for automatic labeling of structures in 3D MRI data sets using exp...
International audienceThis paper presents an automatic algorithm to segment and classify neuroanatom...
Nous proposons une méthode basée sur la connaissance a priori pour la segmentation et la reconnaissa...
Abstract—We present an algorithm that automatically segments and classifies the brain structures in ...
textabstractThe final type of segmentationmethod is atlas-based segmentation (sometimes also called...
In the present work we propose a novel label fusion strategy specifically oriented to MRI Brain tumo...
AbstractWe present a technique for automatically assigning a neuroanatomical label to each voxel in ...
Background: Regarding the importance of right diagnosis in medical applications, various methods hav...
This dissertation presents a knowledge-guided expert system that is capable of applying routinesfor ...
Image segmentation is an indispensable process in the visualization of human tissues, particularly d...
International audienceWe propose to segment 3D structures with competitive level sets driven by fuzz...
The interior boundary of medical image is fuzzy in nature. In this paper, proposed is a novel method...
Segmentation and visualisation of anatomical regions of the brain are fundamental problems in medica...
We present a collection of methods that model and interpret information represented in structural ma...