Multi-Atlas based Segmentation (MAS) algorithms have been successfully applied to many medical image segmentation tasks, but their success relies on a large number of atlases and good image registration performance. Choosing well-registered atlases for label fusion is vital for an accurate segmentation. This choice becomes even more crucial when the segmentation involves organs characterized by a high anatomical and pathological variability. In this paper, we propose a new genetic atlas selection strategy (GAS) that automatically chooses the best subset of atlases to be used for segmenting the target image, on the basis of both image similarity and segmentation overlap. More precisely, the key idea of GAS is that if two images are similar, ...
<div><p>Multi-atlas brain segmentation of human brain MR images allows quantification research in st...
Multi-atlas segmentation is an effective approach for automatically labeling objects of interest in ...
Label fusion based multi-atlas segmentation has proven to be one of the most competitive techniques ...
Multi-Atlas based Segmentation (MAS) algorithms have been successfully applied to many medical image...
Recently, multiple-atlas segmentation (MAS) has achieved a great success in the medical imaging area...
Multi-atlas image segmentation using label fusion is one of the most accurate state of the art image...
Multi atlas based segmentation (MABS) uses a database of atlas images, and an atlas selection proces...
Multiatlas based method is commonly used in medical image segmentation. In multiatlas based image se...
Multi atlas based segmentation (MABS) uses a database of atlas images, and an atlas selection proces...
In multi-atlas based segmentation, a target image is segmented by registering multiple atlas images ...
Purpose: Automatic, atlas-based segmentation of medical images benefits from using multiple atlases,...
Quantitative research in neuroimaging often relies on anatomical segmentation of human brain MR imag...
Multi-atlas brain segmentation of human brain MR images allows quantification research in structural...
<div><p>Multi-atlas brain segmentation of human brain MR images allows quantification research in st...
Multi-atlas segmentation is an effective approach for automatically labeling objects of interest in ...
Label fusion based multi-atlas segmentation has proven to be one of the most competitive techniques ...
Multi-Atlas based Segmentation (MAS) algorithms have been successfully applied to many medical image...
Recently, multiple-atlas segmentation (MAS) has achieved a great success in the medical imaging area...
Multi-atlas image segmentation using label fusion is one of the most accurate state of the art image...
Multi atlas based segmentation (MABS) uses a database of atlas images, and an atlas selection proces...
Multiatlas based method is commonly used in medical image segmentation. In multiatlas based image se...
Multi atlas based segmentation (MABS) uses a database of atlas images, and an atlas selection proces...
In multi-atlas based segmentation, a target image is segmented by registering multiple atlas images ...
Purpose: Automatic, atlas-based segmentation of medical images benefits from using multiple atlases,...
Quantitative research in neuroimaging often relies on anatomical segmentation of human brain MR imag...
Multi-atlas brain segmentation of human brain MR images allows quantification research in structural...
<div><p>Multi-atlas brain segmentation of human brain MR images allows quantification research in st...
Multi-atlas segmentation is an effective approach for automatically labeling objects of interest in ...
Label fusion based multi-atlas segmentation has proven to be one of the most competitive techniques ...