The Gabor feature is effective for facial image representation, while linear discriminant analysis (LDA) can extract the most discriminant information from the Gabor feature for face recognition. In practice, the dimension of a Gabor feature vector is so high that the computation and memory requirements are prohibitively large. To reduce the dimension, one simple scheme is to extract the Gabor feature at sub-sampled positions, usually in a regular grid, in a face region. However, this scheme is not effective enough and degrades the recognition performance. In this paper, we propose a method to determine the optimal position for extracting the Gabor feature such that the number of feature points is as small as possible while the representati...
Abstract – In face recognition, LDA often encounters the so-called small sample size (SSS) problem, ...
A discriminative and robust feature- kernel enhanced informative Gabor feature is proposed in this p...
Gabor features have been widely employed in solving face recognition problems in controlled scenario...
AbstractFace recognition is one of the challenging applications of image processing. Robust face rec...
Face representation based on Gabor features has attracted much attention and achieved great success ...
Face representation based on Gabor features have attracted much attention and achieved great success...
The face plays an essential role in identifying people and showing their emotions in society. The hu...
In this paper, we present a new approach for face recognition system. The method is based on 2D face...
iii In this thesis, we studied the use of Principal Component Analysis (PCA), Linear Discriminant An...
karena potensi aplikasinya. Pengenalan wajah yang akurat masih merupakan pekerjaan yang sulit, terut...
Abstract — Feature extraction based on different types of signal filters has received a lot of atten...
Abstract: By representing the input testing image as a sparse linear combination of the training sam...
The Gabor wavelets are used to extract facial features, and then a doubly nonlinear mapping kernel P...
Face recognition has been an active research topic in the past few decades due to its po...
Feature selection for face representation is one of the central issues for any face recognition syst...
Abstract – In face recognition, LDA often encounters the so-called small sample size (SSS) problem, ...
A discriminative and robust feature- kernel enhanced informative Gabor feature is proposed in this p...
Gabor features have been widely employed in solving face recognition problems in controlled scenario...
AbstractFace recognition is one of the challenging applications of image processing. Robust face rec...
Face representation based on Gabor features has attracted much attention and achieved great success ...
Face representation based on Gabor features have attracted much attention and achieved great success...
The face plays an essential role in identifying people and showing their emotions in society. The hu...
In this paper, we present a new approach for face recognition system. The method is based on 2D face...
iii In this thesis, we studied the use of Principal Component Analysis (PCA), Linear Discriminant An...
karena potensi aplikasinya. Pengenalan wajah yang akurat masih merupakan pekerjaan yang sulit, terut...
Abstract — Feature extraction based on different types of signal filters has received a lot of atten...
Abstract: By representing the input testing image as a sparse linear combination of the training sam...
The Gabor wavelets are used to extract facial features, and then a doubly nonlinear mapping kernel P...
Face recognition has been an active research topic in the past few decades due to its po...
Feature selection for face representation is one of the central issues for any face recognition syst...
Abstract – In face recognition, LDA often encounters the so-called small sample size (SSS) problem, ...
A discriminative and robust feature- kernel enhanced informative Gabor feature is proposed in this p...
Gabor features have been widely employed in solving face recognition problems in controlled scenario...