International audienceInvestigating multi-feature information-theoretic image registration, we introduce consistent and asymptotically unbiased kth-nearest neighbor (kNN) estimators of mutual information (MI), normalized MI and exclusive information applicable to high-dimensional random variables, and derive under closed-form their gradient flows over finite- and infinite-dimensional transform spaces. Using these results, we devise a novel unsupervised method for the groupwise registration of cardiac perfusion MRI exams. Here, local time-intensity curves are used as a dense set of spatio-temporal features, and statistically matched through variational optimization. Experiments on simulated and real datasets suggest the accuracy of the model...
In this thesis, we propose a multi-modal image registration method based on the a priori knowledge o...
Current unsupervised deep learning-based image registration methods are trained with mean squares or...
Maximization of mutual information of voxel intensities has been demonstrated to be a very powerful ...
International audienceIn perfusion MRI (p-MRI) exams, short-axis (SA) image sequences are captured a...
International audienceCompensating for cardio-thoracic motion artifacts in contrast-enhanced cardiac...
International audienceNonrigid image registration methods based on the optimization of information-t...
International audienceThis paper presents a novel methodology for the non-rigid registration of card...
Nowadays, information-theoretic similarity measures, especially the mutual information and its deriv...
A new approach to the problem of multimodality medical image registration is proposed, using a basic...
This paper presents a generic probabilistic framework for estimating the statistical dependency and ...
We propose a joint segmentation and groupwise registration method for dynamic cardiac perfusion imag...
PhD thesisThe field of medical image analysis has been rapidly growing for the past two decades. Bes...
We propose two information theoretic similarity measures that allow to incorporate tissue class info...
Mutual information has developed into an accurate measure for rigid and affine monomodality and mult...
In this paper, a novel spatial feature, namely maximum distance-gradient-magnitude (MDGM), is define...
In this thesis, we propose a multi-modal image registration method based on the a priori knowledge o...
Current unsupervised deep learning-based image registration methods are trained with mean squares or...
Maximization of mutual information of voxel intensities has been demonstrated to be a very powerful ...
International audienceIn perfusion MRI (p-MRI) exams, short-axis (SA) image sequences are captured a...
International audienceCompensating for cardio-thoracic motion artifacts in contrast-enhanced cardiac...
International audienceNonrigid image registration methods based on the optimization of information-t...
International audienceThis paper presents a novel methodology for the non-rigid registration of card...
Nowadays, information-theoretic similarity measures, especially the mutual information and its deriv...
A new approach to the problem of multimodality medical image registration is proposed, using a basic...
This paper presents a generic probabilistic framework for estimating the statistical dependency and ...
We propose a joint segmentation and groupwise registration method for dynamic cardiac perfusion imag...
PhD thesisThe field of medical image analysis has been rapidly growing for the past two decades. Bes...
We propose two information theoretic similarity measures that allow to incorporate tissue class info...
Mutual information has developed into an accurate measure for rigid and affine monomodality and mult...
In this paper, a novel spatial feature, namely maximum distance-gradient-magnitude (MDGM), is define...
In this thesis, we propose a multi-modal image registration method based on the a priori knowledge o...
Current unsupervised deep learning-based image registration methods are trained with mean squares or...
Maximization of mutual information of voxel intensities has been demonstrated to be a very powerful ...