This paper explores a new measure, based on the copula density functions, for image registration, especially for the multimodal image registration. The measure relies on determining the mutual information between images taken at different times from different viewpoints or by different sensors. The process aims to find the optimal spatial correspondence that offers maximal dependence between the grey levels of the images when they are correctly aligned. Misalignment results in a decrease in the measure. To this effect, this paper focuses on improving the estimation of mutual information. It is shown that copulas form an integral definition of mutual information, and lead to robust estimation tools. The paper includes new results on generali...
With all of the new remote sensing modalities available, with ever increasing capabilities, there is...
Image registration is an important topic for many imaging systems and computer vision applications. ...
Mutual information (MI) is one of the most popular and widely used similarity measures in image regi...
This paper explores a new measure, based on the copula density functions, for image registration, es...
A new type of divergence measure for the registration of medical images is introduced that exploits ...
This paper explores a new class of measures for the detection of changes in images, specially for im...
The dependence between random variables may be measured by mutual information. However, the estimati...
As the use of registration packages spreads, the number of the aligned image pairs in image database...
Sub-pixel image alignment estimation is desirable for co-registration of objects in multiple images ...
This paper explores a new measure for band selection of hyperspectral images using copulas-based mut...
International audienceA new divergence measure for rigid image registration is proposed that uses th...
Mutual information has developed into an accurate measure for rigid and affine monomodality and mult...
Image registration requires the transformation of one image to another so as to spatially align the ...
This work presents a novel method for multimodal medical registration based on histogram estimation ...
With all of the new remote sensing modalities available, with ever increasing capabilities, there is...
Image registration is an important topic for many imaging systems and computer vision applications. ...
Mutual information (MI) is one of the most popular and widely used similarity measures in image regi...
This paper explores a new measure, based on the copula density functions, for image registration, es...
A new type of divergence measure for the registration of medical images is introduced that exploits ...
This paper explores a new class of measures for the detection of changes in images, specially for im...
The dependence between random variables may be measured by mutual information. However, the estimati...
As the use of registration packages spreads, the number of the aligned image pairs in image database...
Sub-pixel image alignment estimation is desirable for co-registration of objects in multiple images ...
This paper explores a new measure for band selection of hyperspectral images using copulas-based mut...
International audienceA new divergence measure for rigid image registration is proposed that uses th...
Mutual information has developed into an accurate measure for rigid and affine monomodality and mult...
Image registration requires the transformation of one image to another so as to spatially align the ...
This work presents a novel method for multimodal medical registration based on histogram estimation ...
With all of the new remote sensing modalities available, with ever increasing capabilities, there is...
Image registration is an important topic for many imaging systems and computer vision applications. ...
Mutual information (MI) is one of the most popular and widely used similarity measures in image regi...