Sparse coding is an active research subject in signal processing, computer vision, and pattern recognition. A novel method of facial expression recognition via non-negative least squares (NNLS) sparse coding is presented in this paper. The NNLS sparse coding is used to form a facial expression classifier. To testify the performance of the presented method, local binary patterns (LBP) and the raw pixels are extracted for facial feature representation. Facial expression recognition experiments are conducted on the Japanese Female Facial Expression (JAFFE) database. Compared with other widely used methods such as linear support vector machines (SVM), sparse representation-based classifier (SRC), nearest subspace classifier (NSC), K-nearest ne...
This paper compares the performances of linear and non-linear data projection techniques in classify...
Facial expression system has become an important and effective research area in many fields such as ...
Abstract: Automatic recognition of facial expression is an active research topic in computer vision ...
In this paper, a novel facial expression recognition method based on sparse representation is propos...
In this paper, we present a novel algorithm for representing fa-cial expressions. The algorithm is b...
In this paper, a novel graph-preserving sparse non-negative matrix factorization (GSNMF) algorithm i...
There is very limited literature currently on the use of Sparse Representation (SRC) for the recogni...
Neural networks in the visual system may be performing sparse coding of learnt local features that a...
International audienceFacial expression is the most natural means for human beings to communicate th...
Facial expression recognition applications demand accurate and fast algorithms that can run in real ...
How to get the proper combination of feature extraction and classification is still crucial in facia...
The objective of this work is to analyze which features are most important in the recognition of fac...
This paper presents a novel feature extraction technique called circular derivative local binary pat...
In automatic facial expression recognition, an increasing number of techniques had been proposed for...
The research discussed in this paper documents a comparative analysis of two nonlinear dimensionalit...
This paper compares the performances of linear and non-linear data projection techniques in classify...
Facial expression system has become an important and effective research area in many fields such as ...
Abstract: Automatic recognition of facial expression is an active research topic in computer vision ...
In this paper, a novel facial expression recognition method based on sparse representation is propos...
In this paper, we present a novel algorithm for representing fa-cial expressions. The algorithm is b...
In this paper, a novel graph-preserving sparse non-negative matrix factorization (GSNMF) algorithm i...
There is very limited literature currently on the use of Sparse Representation (SRC) for the recogni...
Neural networks in the visual system may be performing sparse coding of learnt local features that a...
International audienceFacial expression is the most natural means for human beings to communicate th...
Facial expression recognition applications demand accurate and fast algorithms that can run in real ...
How to get the proper combination of feature extraction and classification is still crucial in facia...
The objective of this work is to analyze which features are most important in the recognition of fac...
This paper presents a novel feature extraction technique called circular derivative local binary pat...
In automatic facial expression recognition, an increasing number of techniques had been proposed for...
The research discussed in this paper documents a comparative analysis of two nonlinear dimensionalit...
This paper compares the performances of linear and non-linear data projection techniques in classify...
Facial expression system has become an important and effective research area in many fields such as ...
Abstract: Automatic recognition of facial expression is an active research topic in computer vision ...