We proposed a face recognition algorithm based on both the multilinear principal component analysis (MPCA) and linear discriminant analysis (LDA). Compared with current traditional existing face recognition methods, our approach treats face images as multidimensional tensor in order to find the optimal tensor subspace for accomplishing dimension reduction. The LDA is used to project samples to a new discriminant feature space, while the K nearest neighbor (KNN) is adopted for sample set classification. The results of our study and the developed algorithm are validated with face databases ORL, FERET, and YALE and compared with PCA, MPCA, and PCA + LDA methods, which demonstrates an improvement in face recognition accuracy
In undersampled problems where the number of samples is smaller than the di-mension of data space, i...
Abstract – In face recognition, LDA often encounters the so-called small sample size (SSS) problem, ...
Principal component analysis (PCA) has long been a simple, efficient technique for dimensionality re...
A novel tensor based method is prepared to solve the supervised dimensionality reduction problem. In...
In this paper, we conduct a comprehensive study on dimensionality reduction (DR) techniques and disc...
Abstract—There is a growing interest in subspace learning tech-niques for face recognition; however,...
Abstract—There is a growing interest in subspace learning tech-niques for face recognition; however,...
In this paper we describe a holistic face recognition method based on subspace Linear Discriminant A...
This paper presents study of face recognition system which is based on Principal Component Analysis ...
Linear Discriminant Analysis (LDA) has been successfully used as a dimensionality reduction techniqu
Face recognition has recently received significant attention as one of the challenging and promising...
Face recognition has recently received significant attention as one of the challenging and promising...
Abstract Recently, many dimensionality reduction algorithms, including local methods and global meth...
Face recognition system should be able to automatically detect a face in images. This involves extra...
In this paper, a new face recognition method based on PCA (principal Component Analysis), LDA (Linea...
In undersampled problems where the number of samples is smaller than the di-mension of data space, i...
Abstract – In face recognition, LDA often encounters the so-called small sample size (SSS) problem, ...
Principal component analysis (PCA) has long been a simple, efficient technique for dimensionality re...
A novel tensor based method is prepared to solve the supervised dimensionality reduction problem. In...
In this paper, we conduct a comprehensive study on dimensionality reduction (DR) techniques and disc...
Abstract—There is a growing interest in subspace learning tech-niques for face recognition; however,...
Abstract—There is a growing interest in subspace learning tech-niques for face recognition; however,...
In this paper we describe a holistic face recognition method based on subspace Linear Discriminant A...
This paper presents study of face recognition system which is based on Principal Component Analysis ...
Linear Discriminant Analysis (LDA) has been successfully used as a dimensionality reduction techniqu
Face recognition has recently received significant attention as one of the challenging and promising...
Face recognition has recently received significant attention as one of the challenging and promising...
Abstract Recently, many dimensionality reduction algorithms, including local methods and global meth...
Face recognition system should be able to automatically detect a face in images. This involves extra...
In this paper, a new face recognition method based on PCA (principal Component Analysis), LDA (Linea...
In undersampled problems where the number of samples is smaller than the di-mension of data space, i...
Abstract – In face recognition, LDA often encounters the so-called small sample size (SSS) problem, ...
Principal component analysis (PCA) has long been a simple, efficient technique for dimensionality re...