Statistical learning theory explores ways of estimating functional dependency from a given collection of data. The specific sub-area of supervised statistical learning covers important models like Perceptron, Support Vector Machines (SVM) and Linear Discriminant Analysis (LDA). In this paper we review the theory of such models and compare their separating hypersurfaces for extracting group-differences between samples. Classification and reconstruction are the main goals of this comparison. We show recent advances in this topic of research illustrating their application on face and medical image databases.Statistical learning theory explores ways of estimating functional dependency from a given collection of data. The specific sub-area of su...
Learning a robust projection with a small number of training samples is still a challenging problem ...
Dimensionality reduction is the transformation of data from a high-dimensional space into a low-dime...
A key problem often encountered by many learning algorithms in computer vision dealing with high dim...
Statistical learning theory explores ways of estimating functional dependency from a given collectio...
Supervised statistical learning covers important models like Support Vector Machines (SVM) and Linea...
Linear discriminant analysis (LDA) as a dimension reduction method is widely used in classification ...
“The curse of dimensionality ” is pertinent to many learning algorithms, and it denotes the drastic ...
With rapid development of image recognition technology and increasing demand for a fast yet robust c...
Linear discriminant analysis (LDA) as a dimension reduction method is widely used in data mining and...
In this paper, our main aim is to show a better dimension reduction process of high dimensional imag...
Information explosion has occurred in most of the sciences and researches due to advances in data co...
Multivariate statistical approaches have played an important role of recognising face images and cha...
Objectives: To analyze the influence of the sparseness distribution characteristics of gradient-base...
Principal Component Analysis (PCA) is an example of a successful unsupervised statistical dimensiona...
This paper presents a novel dimensionality reduction algorithm for kernel based classification. In t...
Learning a robust projection with a small number of training samples is still a challenging problem ...
Dimensionality reduction is the transformation of data from a high-dimensional space into a low-dime...
A key problem often encountered by many learning algorithms in computer vision dealing with high dim...
Statistical learning theory explores ways of estimating functional dependency from a given collectio...
Supervised statistical learning covers important models like Support Vector Machines (SVM) and Linea...
Linear discriminant analysis (LDA) as a dimension reduction method is widely used in classification ...
“The curse of dimensionality ” is pertinent to many learning algorithms, and it denotes the drastic ...
With rapid development of image recognition technology and increasing demand for a fast yet robust c...
Linear discriminant analysis (LDA) as a dimension reduction method is widely used in data mining and...
In this paper, our main aim is to show a better dimension reduction process of high dimensional imag...
Information explosion has occurred in most of the sciences and researches due to advances in data co...
Multivariate statistical approaches have played an important role of recognising face images and cha...
Objectives: To analyze the influence of the sparseness distribution characteristics of gradient-base...
Principal Component Analysis (PCA) is an example of a successful unsupervised statistical dimensiona...
This paper presents a novel dimensionality reduction algorithm for kernel based classification. In t...
Learning a robust projection with a small number of training samples is still a challenging problem ...
Dimensionality reduction is the transformation of data from a high-dimensional space into a low-dime...
A key problem often encountered by many learning algorithms in computer vision dealing with high dim...