We introduce Feature Dependent Kernel Entropy Component Analysis (FDKECA) as a new extension to Kernel Entropy Component Analysis (KECA) for data transformation and dimensionality reduction in Image-based recognition systems such as face and finger vein recognition. FDKECA reveals structure related to a new mapping space, where the most optimized feature vectors are obtained and used for feature extraction and dimensionality reduction. Indeed, the proposed method uses a new space, which is feature wisely dependent and related to the input data space, to obtain significant PCA axes. We show that FDKECA produces strikingly different transformed data sets compared to KECA and PCA. Furthermore a new spectral clustering algorithm utilizing FDKEC...
In order to solve the problem that principal component analysis (PCA) algorithm can??t deal with the...
AbstractIn this paper, the performance of a variety of different methods of dimensionality reduction...
In this paper, a novel algorithm for feature extraction, named supervised kernel locally principle c...
We introduce Feature Dependent Kernel Entropy Component Analysis (FDKECA) as a new extension to Kern...
We introduce Feature Dependent Kernel Entropy Component Analysis (FDKECA) as a new extension to Kern...
Kernel entropy component analysis (KECA) is a newly proposed dimensionality reduction (DR) method, w...
In this paper, we introduce a new method of data transformation for finger vein recognition system. ...
Dimensionality reduction is ubiquitous in biomedical applications. A newly proposed spectral dimensi...
The classic principal components analysis (PCA), kernel PCA (KPCA) and linear discriminant analysis ...
A kernel principal component analysis (PCA) was previously proposed as a nonlinear extension of a PC...
Kernel functions have been very useful in data classification for the purpose of identification and ...
In this paper the issue of dimensionality reduction is investigated in finger vein recognition syste...
This paper presents a novel dimensionality reduction algorithm for kernel based classification. In t...
Clustering as unsupervised learning method is the mission of dividing data objects into clusters wit...
We study non-linear data-dimension reduction. We are motivated by the classical linear framework of ...
In order to solve the problem that principal component analysis (PCA) algorithm can??t deal with the...
AbstractIn this paper, the performance of a variety of different methods of dimensionality reduction...
In this paper, a novel algorithm for feature extraction, named supervised kernel locally principle c...
We introduce Feature Dependent Kernel Entropy Component Analysis (FDKECA) as a new extension to Kern...
We introduce Feature Dependent Kernel Entropy Component Analysis (FDKECA) as a new extension to Kern...
Kernel entropy component analysis (KECA) is a newly proposed dimensionality reduction (DR) method, w...
In this paper, we introduce a new method of data transformation for finger vein recognition system. ...
Dimensionality reduction is ubiquitous in biomedical applications. A newly proposed spectral dimensi...
The classic principal components analysis (PCA), kernel PCA (KPCA) and linear discriminant analysis ...
A kernel principal component analysis (PCA) was previously proposed as a nonlinear extension of a PC...
Kernel functions have been very useful in data classification for the purpose of identification and ...
In this paper the issue of dimensionality reduction is investigated in finger vein recognition syste...
This paper presents a novel dimensionality reduction algorithm for kernel based classification. In t...
Clustering as unsupervised learning method is the mission of dividing data objects into clusters wit...
We study non-linear data-dimension reduction. We are motivated by the classical linear framework of ...
In order to solve the problem that principal component analysis (PCA) algorithm can??t deal with the...
AbstractIn this paper, the performance of a variety of different methods of dimensionality reduction...
In this paper, a novel algorithm for feature extraction, named supervised kernel locally principle c...