Two Dimensional Linear Discrimination Analysis (2DLDA) is an effective feature extraction approach for face recognition, which manipulates on the two dimensional image matrices directly. However, some between-class distances in the projected space are too small and this may produce a large erroneous classification rate. In this paper we propose a new 2DLDA-based approach that can overcome such drawback for the existing 2DLDA. The proposed approach redefines the between-class scatter matrix by putting a weighting function based on the between-class distances, and this will balance the between-class distances in the projected space iteratively. In order to design an effective weighting function, the between-class distances are calculated and ...
The one-sample-per-person problem has become an active research topic for face recognition in recent...
This paper presents a novel approach for face recognition based on the fusion of the appearance and...
The one-sample-per-person problem has become an active research topic for face recognition in recent...
Two Dimensional Linear Discrimination Analysis (2DLDA) is an effective feature extraction approach f...
Although 2DLDA algorithm obtains higher recognition accuracy, a vital unresolved problem of 2DLDA is...
This paper develops a new image feature extraction and recognition method coined two-dimensional lin...
Low-dimensional feature representation with enhanced discriminatory power of paramount importance to...
Several two-dimensional linear discriminant analysis LDA (2DLDA) methods have received much attentio...
Two Dimensional Linear Discriminant Analysis (2DLDA) has received much interest in recent years. How...
In this paper, we present a novel face recognition system that uses two-class linear discriminant an...
In this paper, a new similarity measure is developed for human face recognition, namely, weighted ma...
Two-dimensional fisher linear discriminant analysis (2DFLD or 2DLDA) has attracted much attention fr...
In this paper, new improvements for the linear discrimination technique are proposed. These improvem...
Abstract—A novel face recognition framework is proposed in this paper to alleviate "Small Sampl...
The one-sample-per-person problem has become an active research topic for face recognition in recent...
The one-sample-per-person problem has become an active research topic for face recognition in recent...
This paper presents a novel approach for face recognition based on the fusion of the appearance and...
The one-sample-per-person problem has become an active research topic for face recognition in recent...
Two Dimensional Linear Discrimination Analysis (2DLDA) is an effective feature extraction approach f...
Although 2DLDA algorithm obtains higher recognition accuracy, a vital unresolved problem of 2DLDA is...
This paper develops a new image feature extraction and recognition method coined two-dimensional lin...
Low-dimensional feature representation with enhanced discriminatory power of paramount importance to...
Several two-dimensional linear discriminant analysis LDA (2DLDA) methods have received much attentio...
Two Dimensional Linear Discriminant Analysis (2DLDA) has received much interest in recent years. How...
In this paper, we present a novel face recognition system that uses two-class linear discriminant an...
In this paper, a new similarity measure is developed for human face recognition, namely, weighted ma...
Two-dimensional fisher linear discriminant analysis (2DFLD or 2DLDA) has attracted much attention fr...
In this paper, new improvements for the linear discrimination technique are proposed. These improvem...
Abstract—A novel face recognition framework is proposed in this paper to alleviate "Small Sampl...
The one-sample-per-person problem has become an active research topic for face recognition in recent...
The one-sample-per-person problem has become an active research topic for face recognition in recent...
This paper presents a novel approach for face recognition based on the fusion of the appearance and...
The one-sample-per-person problem has become an active research topic for face recognition in recent...