Accurate and robust brain/non-brain segmentation is very crucial in brain imaging application. Formerly, brain extraction relied on a single image modality, which limits its performance and accuracy. Nowadays, high resolution of T1- and T2-weighted images can be acquired during the same scanning session. This creates a promising possibility of combining images to improve delineation of brain structures. In this report, we present a novel skull striping algorithm which aims to get more accurate and robust extracted brain image region. The idea is by incorporating the information from T2-weigthed image into the skull striping decision process. In order to achieve this, the pair of images must be brought into strict correspondence. Perfect ali...
Multithreshold segmentation algorithm is time-consuming, and the time complexity will increase expon...
© 2017 Elsevier B.V. In recent decades, a large number of segmentation methods have been introduced ...
BackgroundSegmentation methods for medical images may not generalize well to new data sets or new ta...
Brain is the part of the central nervous system located in skull. For the diagnosis of human brain b...
Part 3: Images, Visualization, ClassificationInternational audienceOne of the most common MRI (Magne...
International audiencePURPOSE:MRI-based skull segmentation is a useful procedure for many imaging ap...
The paper presents a new approach to segmentation of brain from the MR studies. The method is fully ...
International audienceTo isolate the brain from non-brain tissues using a fully automatic method may...
The automatic segmentation of interest structures is devoted to the morphological analysis of brain ...
Abstract. A robust method for the removal of non-cerebral tissue in T1-weigh-ted magnetic resonance ...
Skull stripping is a major phase in MRI brain imaging applications and it refers to the removal of i...
In this paper a new automatic skull stripping method for T1-weighted MR image of human brain is pres...
Image segmentation is one of the most important tasks in medical image analysis and is often the fir...
Purpose MRI-based skull segmentation is a useful procedure for many imaging applications. This st...
Typically, brain MR images present significant intensity variation across patients and scanners. Con...
Multithreshold segmentation algorithm is time-consuming, and the time complexity will increase expon...
© 2017 Elsevier B.V. In recent decades, a large number of segmentation methods have been introduced ...
BackgroundSegmentation methods for medical images may not generalize well to new data sets or new ta...
Brain is the part of the central nervous system located in skull. For the diagnosis of human brain b...
Part 3: Images, Visualization, ClassificationInternational audienceOne of the most common MRI (Magne...
International audiencePURPOSE:MRI-based skull segmentation is a useful procedure for many imaging ap...
The paper presents a new approach to segmentation of brain from the MR studies. The method is fully ...
International audienceTo isolate the brain from non-brain tissues using a fully automatic method may...
The automatic segmentation of interest structures is devoted to the morphological analysis of brain ...
Abstract. A robust method for the removal of non-cerebral tissue in T1-weigh-ted magnetic resonance ...
Skull stripping is a major phase in MRI brain imaging applications and it refers to the removal of i...
In this paper a new automatic skull stripping method for T1-weighted MR image of human brain is pres...
Image segmentation is one of the most important tasks in medical image analysis and is often the fir...
Purpose MRI-based skull segmentation is a useful procedure for many imaging applications. This st...
Typically, brain MR images present significant intensity variation across patients and scanners. Con...
Multithreshold segmentation algorithm is time-consuming, and the time complexity will increase expon...
© 2017 Elsevier B.V. In recent decades, a large number of segmentation methods have been introduced ...
BackgroundSegmentation methods for medical images may not generalize well to new data sets or new ta...