The integration of multimodal data presents a challenge in cases when the study of a given phenomena by different instruments or conditions generates distinct but related domains. Many existing data integration methods assume a known one-to-one correspondence between domains of the entire dataset, which may be unrealistic. Furthermore, existing manifold alignment methods are not suited for cases where the data contains domain-specific regions, i.e., there is not a counterpart for a certain portion of the data in the other domain. We propose Diffusion Transport Alignment (DTA), a semi-supervised manifold alignment method that exploits prior correspondence knowledge between only a few points to align the domains. By building a diffusion proce...
Anatomical alignment in neuroimaging studies is of such importance that considerable effort is put i...
In Diffusion Tensor (DT) MRI [1], local diffusion properties are described via a 3x3 symmetric diffu...
Current manifold alignment methods can effectively align data sets that are drawn from a non-interse...
The wealth of sensory data coming from different modalities has opened numerous opportu- nities for ...
The wealth of sensory data coming from different modalities has opened numerous opportunities for da...
The high dimensionality of modern data introduces significant challenges in descriptive and explorat...
In this paper, we study a family of semisupervised learning algorithms for "aligning" di...
Diffusion magnetic resonance imaging (dMRI) offers a unique approach to study the structural connect...
Many machine learning problems involve dealing with a large amount of high-dimensional data across d...
Abstract. We introduce vector diffusion maps (VDM), a new mathematical framework for orga-nizing and...
The advancement of various modalities within magnetic resonance imaging (MRI) techniques has generat...
We introduce Joint Multidimensional Scaling, a novel approach for unsupervised manifold alignment, w...
High dimensional data is usually produced by the source that only enjoys a limited number of degrees...
We introduce Joint Multidimensional Scaling, a novel approach for unsupervised manifold alignment, w...
Several nonrigid registration algorithms have been proposed for inter-subject alignment, used to con...
Anatomical alignment in neuroimaging studies is of such importance that considerable effort is put i...
In Diffusion Tensor (DT) MRI [1], local diffusion properties are described via a 3x3 symmetric diffu...
Current manifold alignment methods can effectively align data sets that are drawn from a non-interse...
The wealth of sensory data coming from different modalities has opened numerous opportu- nities for ...
The wealth of sensory data coming from different modalities has opened numerous opportunities for da...
The high dimensionality of modern data introduces significant challenges in descriptive and explorat...
In this paper, we study a family of semisupervised learning algorithms for "aligning" di...
Diffusion magnetic resonance imaging (dMRI) offers a unique approach to study the structural connect...
Many machine learning problems involve dealing with a large amount of high-dimensional data across d...
Abstract. We introduce vector diffusion maps (VDM), a new mathematical framework for orga-nizing and...
The advancement of various modalities within magnetic resonance imaging (MRI) techniques has generat...
We introduce Joint Multidimensional Scaling, a novel approach for unsupervised manifold alignment, w...
High dimensional data is usually produced by the source that only enjoys a limited number of degrees...
We introduce Joint Multidimensional Scaling, a novel approach for unsupervised manifold alignment, w...
Several nonrigid registration algorithms have been proposed for inter-subject alignment, used to con...
Anatomical alignment in neuroimaging studies is of such importance that considerable effort is put i...
In Diffusion Tensor (DT) MRI [1], local diffusion properties are described via a 3x3 symmetric diffu...
Current manifold alignment methods can effectively align data sets that are drawn from a non-interse...