The canonical correlation analysis (CCA) aims at measuring linear relationships between two sets of variables (views) that can be used for feature extraction in classification problems with multiview data. However, the correlated features extracted by the CCA may not be class discriminative, since CCA does not utilize the class labels in its traditional formulation. Although there is a method called discriminative CCA (DCCA) that aims to increase the discriminative ability of CCA inspired from the linear discriminant analysis (LDA), it has been shown that the extracted features with this method are identical to those by the LDA with respect to an orthogonal transformation. Therefore, DCCA is simply equivalent to applying single-view (regula...
Information fusion is a key step in multimodal biometric systems. The fusion of information can occu...
This work investigates the role of canonical correlations analysis in image recognition and classifi...
Feature fusion aims to provide enhancements of data authenticity in both traditional and deep learni...
Dimension reduction is an important topic in data mining and machine learning. Especially dimension ...
Hotelling's Canonical Correlation Analysis (CCA) works with two sets of related variables, also call...
In multi-view learning, massive literature is devoted to exploring the intrinsic structure between c...
In this paper we address the problem of matching sets of vectors embedded in the same input space. W...
We introduce Deep Canonical Correlation Analysis (DCCA), a method to learn com-plex nonlinear transf...
Canonical Correlation Analysis (CCA) aims at identifying linear dependencies between two different b...
This paper presents a novel learning algorithm that finds the linear combination of one set of multi...
Abstract: In this paper, it presents a novel approach for selecting discriminative features in multi...
Canonical Correlation Analysis (CCA) is a classic multivariate statistical technique, which can be u...
This paper presents a novel learning algorithm that nds the linear combination of one set of multi-d...
Multi-view feature learning is an attractive research topic with great practical success. Canonical ...
In this paper, we present Discriminant Correlation Analysis (DCA), a feature level fusion technique ...
Information fusion is a key step in multimodal biometric systems. The fusion of information can occu...
This work investigates the role of canonical correlations analysis in image recognition and classifi...
Feature fusion aims to provide enhancements of data authenticity in both traditional and deep learni...
Dimension reduction is an important topic in data mining and machine learning. Especially dimension ...
Hotelling's Canonical Correlation Analysis (CCA) works with two sets of related variables, also call...
In multi-view learning, massive literature is devoted to exploring the intrinsic structure between c...
In this paper we address the problem of matching sets of vectors embedded in the same input space. W...
We introduce Deep Canonical Correlation Analysis (DCCA), a method to learn com-plex nonlinear transf...
Canonical Correlation Analysis (CCA) aims at identifying linear dependencies between two different b...
This paper presents a novel learning algorithm that finds the linear combination of one set of multi...
Abstract: In this paper, it presents a novel approach for selecting discriminative features in multi...
Canonical Correlation Analysis (CCA) is a classic multivariate statistical technique, which can be u...
This paper presents a novel learning algorithm that nds the linear combination of one set of multi-d...
Multi-view feature learning is an attractive research topic with great practical success. Canonical ...
In this paper, we present Discriminant Correlation Analysis (DCA), a feature level fusion technique ...
Information fusion is a key step in multimodal biometric systems. The fusion of information can occu...
This work investigates the role of canonical correlations analysis in image recognition and classifi...
Feature fusion aims to provide enhancements of data authenticity in both traditional and deep learni...