This paper addresses the limitation of current multilinear PCA based techniques, in terms of prohibitive computational cost of testing and poor generalisation in some scenarios, when applied to large training databases. We define person-specific eigenmodes to obtain a set of projection bases, wherein a particular basis captures variation across lightings and viewpoints for a particular person. A new recognition approach is developed utilizing these bases. The proposed approach performs on a par with the existing multilinear approaches, whilst significantly reducing the complexity order of the testing algorithm
Linear dimensionality reduction techniques have been widely used in pattern recognition and computer...
At present there are many methods that could deal well with frontal view face recognition. However, ...
Currently there is no complete face recognition system that is invariant to all facial expressions. ...
This paper addresses the limitation of current multilinear PCA based techniques, in terms of pro-hib...
This paper addresses the limitation of current multilinear techniques (multilinear PCA, multilinear ...
A novel tensor based method is prepared to solve the supervised dimensionality reduction problem. In...
Machine based face recognition is an important area of research that has attracted significant atten...
Natural images are the composite consequence of multiple factors related to scene structure, illumin...
In the field of computer vision, multilinear (tensor) algebraic approaches to image-based face recog...
Abstract—There is a growing interest in subspace learning tech-niques for face recognition; however,...
In this paper we address the robust face recognition problem for color faces with large variations i...
Abstract—There is a growing interest in subspace learning tech-niques for face recognition; however,...
Linear dimensionality reduction techniques have been widely used in pattern recognition and computer...
We proposed a face recognition algorithm based on both the multilinear principal component analysis ...
In practical applications of pattern recognition and computer vision, the performance of many approa...
Linear dimensionality reduction techniques have been widely used in pattern recognition and computer...
At present there are many methods that could deal well with frontal view face recognition. However, ...
Currently there is no complete face recognition system that is invariant to all facial expressions. ...
This paper addresses the limitation of current multilinear PCA based techniques, in terms of pro-hib...
This paper addresses the limitation of current multilinear techniques (multilinear PCA, multilinear ...
A novel tensor based method is prepared to solve the supervised dimensionality reduction problem. In...
Machine based face recognition is an important area of research that has attracted significant atten...
Natural images are the composite consequence of multiple factors related to scene structure, illumin...
In the field of computer vision, multilinear (tensor) algebraic approaches to image-based face recog...
Abstract—There is a growing interest in subspace learning tech-niques for face recognition; however,...
In this paper we address the robust face recognition problem for color faces with large variations i...
Abstract—There is a growing interest in subspace learning tech-niques for face recognition; however,...
Linear dimensionality reduction techniques have been widely used in pattern recognition and computer...
We proposed a face recognition algorithm based on both the multilinear principal component analysis ...
In practical applications of pattern recognition and computer vision, the performance of many approa...
Linear dimensionality reduction techniques have been widely used in pattern recognition and computer...
At present there are many methods that could deal well with frontal view face recognition. However, ...
Currently there is no complete face recognition system that is invariant to all facial expressions. ...