We present a population registration framework that acts on large collections or populations of data volumes. The data alignment procedure runs in a simultaneous fashion, with every member of the population approaching the central tendency of the collection at the same time. Such a mechanism eliminates the need for selecting a particular reference frame a priori, resulting in a non-biased estimate of a digital atlas. Our algorithm adopts an affine congealing framework with an information theoretic objective function and is optimized via a gradientbased stochastic approximation process embedded in a multi-resolution setting. We present experimental results on both synthetic and real images
The registration of pre-operative volumetric datasets to intra- operative two-dimensional images pro...
Registering medical images of different individuals is difficult due to inherent anatomical variabil...
This paper introduces a new metric to gather a large collection of segmented images into a same re...
We present a population registration framework that acts on large collections or populations of data...
We present a population registration framework that acts on large collections or populations of data...
PhD thesisThe field of medical image analysis has been rapidly growing for the past two decades. Bes...
Medical image registration is a widely used strategy for intrasubject and intersubject matching. Ove...
3D deformable registration, Two-level method, Statistical atlas Abstract: We propose a two-level met...
This paper introduces a new similarity measure designed to bring a population of segmented subjects ...
Abstract. This paper introduces a new similarity measure designed to bring a population of segmented...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
Medical imaging is nowadays a vital component of a large number of clinical applications. For compar...
Non-rigid image registration is fundamentally important in analyzing large-scale population of medic...
The ever-increasing amount of medical images stored in hospitals offers a great opportunity for big ...
The ever-increasing amount of medical images stored in hospitals offers a great opportunity for big ...
The registration of pre-operative volumetric datasets to intra- operative two-dimensional images pro...
Registering medical images of different individuals is difficult due to inherent anatomical variabil...
This paper introduces a new metric to gather a large collection of segmented images into a same re...
We present a population registration framework that acts on large collections or populations of data...
We present a population registration framework that acts on large collections or populations of data...
PhD thesisThe field of medical image analysis has been rapidly growing for the past two decades. Bes...
Medical image registration is a widely used strategy for intrasubject and intersubject matching. Ove...
3D deformable registration, Two-level method, Statistical atlas Abstract: We propose a two-level met...
This paper introduces a new similarity measure designed to bring a population of segmented subjects ...
Abstract. This paper introduces a new similarity measure designed to bring a population of segmented...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
Medical imaging is nowadays a vital component of a large number of clinical applications. For compar...
Non-rigid image registration is fundamentally important in analyzing large-scale population of medic...
The ever-increasing amount of medical images stored in hospitals offers a great opportunity for big ...
The ever-increasing amount of medical images stored in hospitals offers a great opportunity for big ...
The registration of pre-operative volumetric datasets to intra- operative two-dimensional images pro...
Registering medical images of different individuals is difficult due to inherent anatomical variabil...
This paper introduces a new metric to gather a large collection of segmented images into a same re...