We propose an automated way of determining the optimal number of low-rank components in dimension reduction of image data. The method is based on the combination of two-dimensional principal component analysis and an augmentation estimator proposed recently in the literature. Intuitively, the main idea is to combine a scree plot with information extracted from the eigenvectors of a variation matrix. Simulation studies show that the method provides accurate estimates and a demonstration with a finger data set showcases its performance in practice.peerReviewe
Two-dimensional principle component analysis (2DPCA) has been widely used for face image representat...
The identification of a reduced dimensional representation of the data is among the main issues of e...
AbstractIn this article, we propose a new estimation methodology to deal with PCA for high-dimension...
Principal components analysis (PCA) is a process of identifying image sequences in an effective way ...
Estimating intrinsic dimension of data is an important problem in feature extraction and feature sel...
The principal component analysis (PCA), or the eigenfaces method, is a de facto standard in human fa...
The objectives of this research are to analyze and develop a modified Principal Component Analysis (...
The analysis of high-dimensional data often begins with the identification of lower dimensional subs...
We analyze an algorithm based on principal component analysis (PCA) for detecting the dimension k of...
The aim of this paper is to present a comparative study of two linear dimension reduction methods na...
Principal component analysis (PCA) and linear discriminant analysis (LDA) are two important feature ...
Principal Component Analysis (PCA) is an example of a successful unsupervised statistical dimensiona...
In undersampled problems where the number of samples is smaller than the di-mension of data space, i...
In undersampled problems where the number of samples is smaller than the dimension of data space, it...
Any data in an implicit form contain information of interest to the researcher. The purpose of data ...
Two-dimensional principle component analysis (2DPCA) has been widely used for face image representat...
The identification of a reduced dimensional representation of the data is among the main issues of e...
AbstractIn this article, we propose a new estimation methodology to deal with PCA for high-dimension...
Principal components analysis (PCA) is a process of identifying image sequences in an effective way ...
Estimating intrinsic dimension of data is an important problem in feature extraction and feature sel...
The principal component analysis (PCA), or the eigenfaces method, is a de facto standard in human fa...
The objectives of this research are to analyze and develop a modified Principal Component Analysis (...
The analysis of high-dimensional data often begins with the identification of lower dimensional subs...
We analyze an algorithm based on principal component analysis (PCA) for detecting the dimension k of...
The aim of this paper is to present a comparative study of two linear dimension reduction methods na...
Principal component analysis (PCA) and linear discriminant analysis (LDA) are two important feature ...
Principal Component Analysis (PCA) is an example of a successful unsupervised statistical dimensiona...
In undersampled problems where the number of samples is smaller than the di-mension of data space, i...
In undersampled problems where the number of samples is smaller than the dimension of data space, it...
Any data in an implicit form contain information of interest to the researcher. The purpose of data ...
Two-dimensional principle component analysis (2DPCA) has been widely used for face image representat...
The identification of a reduced dimensional representation of the data is among the main issues of e...
AbstractIn this article, we propose a new estimation methodology to deal with PCA for high-dimension...