International audienceA new divergence measure for rigid image registration is proposed that uses the properties of the Arimoto entropy. This Jensen-Arimoto divergence allows designing a novel registration method by minimizing a dissimilarity measure through the steepest gradient descent optimization method. Preliminary experiments on simulated magnetic resonance images with partial overlap and different degrees of noise have been carried out and a comparison has been conducted with other relevant information theoretic measures such as the normalized mutual information and the cross cumulative residual entropy. The results show that the proposed registration approach has better robustness to noise and can provide better registration accurac...
To make up for the lack of concern on the spatial information in the conventional mutual information...
International audienceThis work presents a novel method for multimodal medical registration based on...
Much biomedical and medical research relies on the collection of ever-larger amounts of image data (...
International audienceThis work presents a novel method for the nonrigid registration of medical ima...
As the use of registration packages spreads, the number of the aligned image pairs in image database...
A new type of divergence measure for the registration of medical images is introduced that exploits ...
Image registration is a fundamental problem that can be found in a diverse range of fields within th...
Two new similarity measures for rigid image registration, based on the normalization of Jensen'...
Mutual information has developed into an accurate measure for rigid and affine monomodality and mult...
Mutual information (MI) is a popular entropy-based similarity measure used in the medical imaging fi...
Image registration is widely used in different areas, including medical image analysis and image pro...
In this paper we introduce a two step method to refine the entropy based regis-tration approaches us...
International audienceWe propose to use a recently introduced optimisation method in the context of ...
A new approach to the problem of multimodality medical image registration is proposed, using a basic...
Image registration is an important topic for many imaging systems and computer vision applications. ...
To make up for the lack of concern on the spatial information in the conventional mutual information...
International audienceThis work presents a novel method for multimodal medical registration based on...
Much biomedical and medical research relies on the collection of ever-larger amounts of image data (...
International audienceThis work presents a novel method for the nonrigid registration of medical ima...
As the use of registration packages spreads, the number of the aligned image pairs in image database...
A new type of divergence measure for the registration of medical images is introduced that exploits ...
Image registration is a fundamental problem that can be found in a diverse range of fields within th...
Two new similarity measures for rigid image registration, based on the normalization of Jensen'...
Mutual information has developed into an accurate measure for rigid and affine monomodality and mult...
Mutual information (MI) is a popular entropy-based similarity measure used in the medical imaging fi...
Image registration is widely used in different areas, including medical image analysis and image pro...
In this paper we introduce a two step method to refine the entropy based regis-tration approaches us...
International audienceWe propose to use a recently introduced optimisation method in the context of ...
A new approach to the problem of multimodality medical image registration is proposed, using a basic...
Image registration is an important topic for many imaging systems and computer vision applications. ...
To make up for the lack of concern on the spatial information in the conventional mutual information...
International audienceThis work presents a novel method for multimodal medical registration based on...
Much biomedical and medical research relies on the collection of ever-larger amounts of image data (...