Face and gait recognition problems are challenging due to largely varying appearances, highly complex pattern distributions, and insufficient training samples. This dissertation focuses on multilinear subspace learning for face and gait recognition, where low-dimensional representations are learned directly from tensorial face or gait objects. This research introduces a unifying multilinear subspace learning framework for systematic treatment of the multilinear subspace learning problem. Three multilinear projections are categorized according to the input-output space mapping as: vector-to-vector projection, tensor-to-tensor projection, and tensor-to-vector projection. Techniques for subspace learning from tensorial data are then...
2016 International Joint Conference on Neural Networks, IJCNN 2016, Vancouver, Canada, 24-29 July 20...
Previous work has demonstrated that the image variations of many objects (human faces in particular)...
Principal component analysis (PCA) is an unsu-pervised method for learning low-dimensional fea-tures...
Face and gait recognition problems are challenging due to largely varying appearances, highly comple...
Face and gait recognition problems are challenging due to largely varying appear-ances, highly compl...
Abstract. The small sample size problem and the difficulty in determining the optimal reduced dimens...
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,...
Abstract This paper proposes a boosted linear discriminant analysis (LDA) solution on ...
Abstract This paper proposes a boosted linear discriminant analysis (LDA) solution on ...
This paper proposes a boosted linear discriminant analysis (LDA) solution on features extracted by t...
© 2016 IEEE. Gait recognition is a rising biometric technology which aims to distinguish people pure...
Abstract—Recent research has demonstrated the success of tensor based subspace learning in both unsu...
Linear dimensionality reduction techniques have been widely used in pattern recognition and computer...
Linear dimensionality reduction techniques have been widely used in pattern recognition and computer...
2016 International Joint Conference on Neural Networks, IJCNN 2016, Vancouver, Canada, 24-29 July 20...
Previous work has demonstrated that the image variations of many objects (human faces in particular)...
Principal component analysis (PCA) is an unsu-pervised method for learning low-dimensional fea-tures...
Face and gait recognition problems are challenging due to largely varying appearances, highly comple...
Face and gait recognition problems are challenging due to largely varying appear-ances, highly compl...
Abstract. The small sample size problem and the difficulty in determining the optimal reduced dimens...
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,...
Abstract This paper proposes a boosted linear discriminant analysis (LDA) solution on ...
Abstract This paper proposes a boosted linear discriminant analysis (LDA) solution on ...
This paper proposes a boosted linear discriminant analysis (LDA) solution on features extracted by t...
© 2016 IEEE. Gait recognition is a rising biometric technology which aims to distinguish people pure...
Abstract—Recent research has demonstrated the success of tensor based subspace learning in both unsu...
Linear dimensionality reduction techniques have been widely used in pattern recognition and computer...
Linear dimensionality reduction techniques have been widely used in pattern recognition and computer...
2016 International Joint Conference on Neural Networks, IJCNN 2016, Vancouver, Canada, 24-29 July 20...
Previous work has demonstrated that the image variations of many objects (human faces in particular)...
Principal component analysis (PCA) is an unsu-pervised method for learning low-dimensional fea-tures...