International audienceIn this paper, we present a framework for extracting mutually-salient landmark pairs for registration. Traditional methods detect landmarks one-by-one and separately in two images. Therefore, the detected landmarks might inherit low dis-criminability and are not necessarily good for matching. In contrast, our method detects landmarks pair-by-pair across images, and those pairs are required to be mutually-salient, i.e., uniquely corresponding to each other. The second merit of our framework is that, instead of finding individually optimal correspondence, which is a local approach and could cause self-intersection of the resultant deformation, our framework adopts a Markov-random-field (MRF)-based spatial arrangement to ...
A novel method to obtain correspondence between landmarks when comparing pairs of mammographic image...
In this paper we consider landmark-based image registration using radial basis function interpolatio...
Using deformable models to register medical images can result in problems of initialization of defor...
International audienceIn this paper, we present a framework for extracting mutually-salient landmark...
In this paper, we present a framework for extracting mutually-salient landmark pairs for registratio...
Comparison of human brain MR images is often challenged by large inter-subject structural variabilit...
Two new consistent image registration algorithms are presented: one is based on matching correspondi...
International audienceIn this paper, we introduce a novel approach to bridge the gap between the lan...
Manually labeled landmark sets are often required as in-puts for landmark-based image registration. ...
We present an algorithm to predict landmarks on 3D human scans in varying poses. Our method is based...
Image registration is widely used in different areas, including medical image analysis and image pro...
We have developed a new mutual information-based registration method for matching unlabeled point fe...
Anatomical landmark correspondences in medical images can provide additional guidance information fo...
Purpose: Deformable image registration (DIR) can benefit from additional guidance using correspondin...
We present a novel method for aligning images under arbitrary poses, based on finding correspondence...
A novel method to obtain correspondence between landmarks when comparing pairs of mammographic image...
In this paper we consider landmark-based image registration using radial basis function interpolatio...
Using deformable models to register medical images can result in problems of initialization of defor...
International audienceIn this paper, we present a framework for extracting mutually-salient landmark...
In this paper, we present a framework for extracting mutually-salient landmark pairs for registratio...
Comparison of human brain MR images is often challenged by large inter-subject structural variabilit...
Two new consistent image registration algorithms are presented: one is based on matching correspondi...
International audienceIn this paper, we introduce a novel approach to bridge the gap between the lan...
Manually labeled landmark sets are often required as in-puts for landmark-based image registration. ...
We present an algorithm to predict landmarks on 3D human scans in varying poses. Our method is based...
Image registration is widely used in different areas, including medical image analysis and image pro...
We have developed a new mutual information-based registration method for matching unlabeled point fe...
Anatomical landmark correspondences in medical images can provide additional guidance information fo...
Purpose: Deformable image registration (DIR) can benefit from additional guidance using correspondin...
We present a novel method for aligning images under arbitrary poses, based on finding correspondence...
A novel method to obtain correspondence between landmarks when comparing pairs of mammographic image...
In this paper we consider landmark-based image registration using radial basis function interpolatio...
Using deformable models to register medical images can result in problems of initialization of defor...