Abstract — Linear Discriminant Analysis (LDA) has been widely used in appearance-based face recognition. However, it requires lots of training samples for each person with respect to the large dimensionality of the image space, which is difficult to collect in reality. To overcome the severe constraint of training sample deficiency, approaches based on single training sample per person (SSPP) arise in the past decades. Though making great improvements for years, these methods still suffer from low accuracy when dealing with high dimensional image features. In this paper, we develop a new variant of LDA that addresses the SSPP problem especially and apply random projections to generate extra useful training samples on an ensemble of low-dime...
doi:10.4156/jdcta.vol4. issue9.29 The dimensionality of sample is often larger than the number of tr...
Single Sample Per Person (SSPP) Face Recognition is receiving a significant attention due to the cha...
In this paper, we propose a new algorithm to boost performance of traditional Linear Discriminant An...
A critical issue of applying Linear Discriminant Analysis (LDA) is both the singularity and instabil...
Abstract. Subspace face recognition often suffers from two problems: (1) the training sample set is ...
Linear Discriminant Analysis (LDA) is derived from the optimal Bayes classifier when classes are ass...
A critical issue of applying Linear Discriminant Analysis (LDA) is both the singularity and instabil...
In some large-scale face recognition task, such as driver license identification and law enforcement...
Linear discriminant analysis (LDA) as a dimension reduction method is widely used in classification ...
Abstract. Linear discriminant analysis (LDA) is a popular method in pattern recognition and is equiv...
Face recognition from Single Sample per Person (SSPP) is extremely challenging because only one samp...
In some large-scale face recognition task, such as driver license identification and law enforcement...
Linear Discriminant Analysis (LDA) has been successfully applied to face recognition which is based ...
In this paper we describe a holistic face recognition method based on subspace Linear Discriminant A...
A critical issue of applying Linear Discriminant Analysis (LDA) is both the singularity and instabil...
doi:10.4156/jdcta.vol4. issue9.29 The dimensionality of sample is often larger than the number of tr...
Single Sample Per Person (SSPP) Face Recognition is receiving a significant attention due to the cha...
In this paper, we propose a new algorithm to boost performance of traditional Linear Discriminant An...
A critical issue of applying Linear Discriminant Analysis (LDA) is both the singularity and instabil...
Abstract. Subspace face recognition often suffers from two problems: (1) the training sample set is ...
Linear Discriminant Analysis (LDA) is derived from the optimal Bayes classifier when classes are ass...
A critical issue of applying Linear Discriminant Analysis (LDA) is both the singularity and instabil...
In some large-scale face recognition task, such as driver license identification and law enforcement...
Linear discriminant analysis (LDA) as a dimension reduction method is widely used in classification ...
Abstract. Linear discriminant analysis (LDA) is a popular method in pattern recognition and is equiv...
Face recognition from Single Sample per Person (SSPP) is extremely challenging because only one samp...
In some large-scale face recognition task, such as driver license identification and law enforcement...
Linear Discriminant Analysis (LDA) has been successfully applied to face recognition which is based ...
In this paper we describe a holistic face recognition method based on subspace Linear Discriminant A...
A critical issue of applying Linear Discriminant Analysis (LDA) is both the singularity and instabil...
doi:10.4156/jdcta.vol4. issue9.29 The dimensionality of sample is often larger than the number of tr...
Single Sample Per Person (SSPP) Face Recognition is receiving a significant attention due to the cha...
In this paper, we propose a new algorithm to boost performance of traditional Linear Discriminant An...