The face is one of the most powerful channel of nonverbal communication. The most commonly used taxonomy to describe facial behaviour is the Facial Action Coding System (FACS). FACS segments the visible effects of facial muscle activation into 30+ action units (AUs). AUs, which may occur alone and in thousands of combinations, can describe nearly all-possible facial expressions. Most existing methods for automatic AU detection treat the problem using one-vs-all classifiers and fail to exploit dependencies among AU and facial features. We introduce joint-patch and multi-label learning (JPML) to address these issues. JPML leverages group sparsity by selecting a sparse subset of facial patcheswhile learning a multi-label classifier. In four of...
Within the context face expression classification using the facial action coding system (FACS), we a...
Within the context face expression classication using the facial action coding system (FACS), we add...
In this paper, we investigate to what extent modern computer vision and machine learning techniques ...
<p>The face is one of the most powerful channel of nonverbal communication. The most commonly used t...
The face is one of the most powerful channel of non-verbal communication. The most commonly used tax...
Within the context of facial expression classification using the facial action coding system (FACS),...
Within the context of facial expression classification using the facial action coding system (FACS),...
The face is an important source of information in multi-modal communication. Facial expressions are ...
This article describes a system for participation in the Facial Expression Recognition and Analysis ...
Automated analysis of facial expressions can benefit many domains, from marketing to clinical diagno...
Automated analysis of facial expressions can benefit many domains, from marketing to clinical diagno...
Facial action detection and facial expression recognition are two closely intertwined problems in be...
Action Unit (AU) Detection is the branch of affective computing that aims at recognizing unitary fac...
Automatic detection of Facial Action Units (AUs) is crucial for facial analysis systems. Due to the ...
Automated analysis of facial expressions can benefit many domains, from marketing to clinical diagno...
Within the context face expression classification using the facial action coding system (FACS), we a...
Within the context face expression classication using the facial action coding system (FACS), we add...
In this paper, we investigate to what extent modern computer vision and machine learning techniques ...
<p>The face is one of the most powerful channel of nonverbal communication. The most commonly used t...
The face is one of the most powerful channel of non-verbal communication. The most commonly used tax...
Within the context of facial expression classification using the facial action coding system (FACS),...
Within the context of facial expression classification using the facial action coding system (FACS),...
The face is an important source of information in multi-modal communication. Facial expressions are ...
This article describes a system for participation in the Facial Expression Recognition and Analysis ...
Automated analysis of facial expressions can benefit many domains, from marketing to clinical diagno...
Automated analysis of facial expressions can benefit many domains, from marketing to clinical diagno...
Facial action detection and facial expression recognition are two closely intertwined problems in be...
Action Unit (AU) Detection is the branch of affective computing that aims at recognizing unitary fac...
Automatic detection of Facial Action Units (AUs) is crucial for facial analysis systems. Due to the ...
Automated analysis of facial expressions can benefit many domains, from marketing to clinical diagno...
Within the context face expression classification using the facial action coding system (FACS), we a...
Within the context face expression classication using the facial action coding system (FACS), we add...
In this paper, we investigate to what extent modern computer vision and machine learning techniques ...