Abstract—The regularization principals [31] lead approximation schemes to deal with various learning problems, e.g., the regularization of the norm in a reproducing kernel Hilbert space for the ill-posed problem. In this paper, we present a family of subspace learning algorithms based on a new form of regularization, which transfers the knowledge gained in training samples to testing samples. In particular, the new regularization minimizes the Bregman divergence between the distribution of training samples and that of testing samples in the selected subspace, so it boosts the performance when training and testing samples are not independent and identically distributed. To test the effectiveness of the proposed regularization, we introduce i...
Previous works have demonstrated that the face recognition performance can be improved significantly...
For image recognition, an extensive number of subspace-learning methods have been proposed to overco...
Despite over 30 years of research, face recognition is still one of the most difficult problems in t...
The regularization principals [31] lead approximation schemes to deal with various learning problems...
The regularization principals [31] lead approximation schemes to deal with various learning problems...
Abstract In this paper, we propose a general framework for transfer learning, referred to as transfe...
© Springer Science+Business Media New York 2013. In the past decades, a large number of subspace lea...
In this paper, we focus on face recognition over image sets, where each set is represented by a line...
In some large-scale face recognition task, such as driver license identification and law enforcement...
73 p.Face and facial expression recognition research has been motivated by wide and potential applic...
In some large-scale face recognition task, such as driver license identification and law enforcement...
The state-of-the-art metric-learning algorithms cannot perform well for domain adaptation settings, ...
With rapid development of image recognition technology and increasing demand for a fast yet robust c...
The state-of-the-art metric-learning algorithms cannot perform well for domain adaptation settings, ...
Linear discriminant analysis (LDA) as a dimension reduction method is widely used in classification ...
Previous works have demonstrated that the face recognition performance can be improved significantly...
For image recognition, an extensive number of subspace-learning methods have been proposed to overco...
Despite over 30 years of research, face recognition is still one of the most difficult problems in t...
The regularization principals [31] lead approximation schemes to deal with various learning problems...
The regularization principals [31] lead approximation schemes to deal with various learning problems...
Abstract In this paper, we propose a general framework for transfer learning, referred to as transfe...
© Springer Science+Business Media New York 2013. In the past decades, a large number of subspace lea...
In this paper, we focus on face recognition over image sets, where each set is represented by a line...
In some large-scale face recognition task, such as driver license identification and law enforcement...
73 p.Face and facial expression recognition research has been motivated by wide and potential applic...
In some large-scale face recognition task, such as driver license identification and law enforcement...
The state-of-the-art metric-learning algorithms cannot perform well for domain adaptation settings, ...
With rapid development of image recognition technology and increasing demand for a fast yet robust c...
The state-of-the-art metric-learning algorithms cannot perform well for domain adaptation settings, ...
Linear discriminant analysis (LDA) as a dimension reduction method is widely used in classification ...
Previous works have demonstrated that the face recognition performance can be improved significantly...
For image recognition, an extensive number of subspace-learning methods have been proposed to overco...
Despite over 30 years of research, face recognition is still one of the most difficult problems in t...