High quality segmentation of brain MR images is a challenging task. To deal with this problem many automatic segmentation methods rely on atlas information of anatomical structures. We further investigate this line of research by introducing hierarchical representations of anatomical structures in an Expectation-Maximization framework. This new approach enables us to divide a complex segmentation scenario into less difficult sub-problems reducing the scenario’s statistical complexity. We demonstrate the method’s strength by segmenting a set of brain MR images into 31 different anatomical structures as well as comparing it to other methods
International audienceWe propose a method based on a priori knowledge provided by anatomical atlases...
This study presents a novel automatic approach for the identification of anatomical brain structures...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
Abstract. This paper presents a statistical framework which combines the regis-tration of an atlas w...
We introduce an algorithm for segmenting brain magnetic resonance (MR) images into anatomical compar...
For analyzing neurological disorders, realistic analysis of brain MRIs serves as a prerequisite step...
Standard image based segmentation approaches perform poorly when there is little or no contrast alon...
Brain image segmentation is one of the most important applications in medicine and also is one of th...
The human brain is composed of a variety of structures, or regions of interest (ROIs), that are resp...
Medical cerebral images can be classified to two categories: structural and functional. The former e...
Brain image segmentation is one of the most important applications in medicine and also is one of th...
Abstract — In this paper, a hybrid discriminative/generative model for brain anatomical structure se...
Accurate automated brain structure segmentation methods facilitate the analysis of large-scale neuro...
We present a statistical framework that combines the registration of an atlas with the segmentation ...
In recent years, multi-atlas segmentation has emerged as one of the most accurate techniques for the...
International audienceWe propose a method based on a priori knowledge provided by anatomical atlases...
This study presents a novel automatic approach for the identification of anatomical brain structures...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
Abstract. This paper presents a statistical framework which combines the regis-tration of an atlas w...
We introduce an algorithm for segmenting brain magnetic resonance (MR) images into anatomical compar...
For analyzing neurological disorders, realistic analysis of brain MRIs serves as a prerequisite step...
Standard image based segmentation approaches perform poorly when there is little or no contrast alon...
Brain image segmentation is one of the most important applications in medicine and also is one of th...
The human brain is composed of a variety of structures, or regions of interest (ROIs), that are resp...
Medical cerebral images can be classified to two categories: structural and functional. The former e...
Brain image segmentation is one of the most important applications in medicine and also is one of th...
Abstract — In this paper, a hybrid discriminative/generative model for brain anatomical structure se...
Accurate automated brain structure segmentation methods facilitate the analysis of large-scale neuro...
We present a statistical framework that combines the registration of an atlas with the segmentation ...
In recent years, multi-atlas segmentation has emerged as one of the most accurate techniques for the...
International audienceWe propose a method based on a priori knowledge provided by anatomical atlases...
This study presents a novel automatic approach for the identification of anatomical brain structures...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...