Automated analysis of facial expressions has been gaining significant attention over the past years. This stems from the fact that it constitutes the primal step toward developing some of the next-generation computer technologies that can make an impact in many domains, ranging from medical imaging and health assessment to marketing and education. No matter the target application, the need to deploy systems under demanding, real-world conditions that can generalize well across the population is urgent. Hence, careful consideration of numerous factors has to be taken prior to designing such a system. The work presented in this thesis focuses on tackling two important problems in automated analysis of facial expressions: (i) view-invariant fa...
Machine analysis of human facial and body language is a challenging topic in computer vision, impact...
We present a novel approach for supervised domain adaptation that is based upon the probabilistic fr...
Abstract We present a Bayesian recognition framework in which a model of the whole face is enhanced ...
Automated analysis of facial expressions paves the way for numerous next-generation computing tools ...
We present a novel framework for the recognition of facial expressions at arbitrary poses that is ba...
Abstract—We propose a method for head-pose invariant facial expression recognition that is based on ...
Images of facial expressions are often captured from various views as a result of either head moveme...
Abstract—Images of facial expressions are often captured from various views as a result of either he...
This work deals with facial expression recognition from various face representations. The key contri...
We propose a novel approach for modeling, tracking and recognizing facial expressions. Our method wo...
Abstract. Facial-expression data often appear in multiple views either due to head-movements or the ...
We present a novel approach for supervised domain adaptation that is based upon the probabilistic fr...
We present a regression-based scheme for facialexpression-invariant head pose normalization. We addr...
Most of existing models for facial behavior analysis rely on generic classifiers, which fail to gene...
Most of existing models for facial behavior analysis rely on generic classifiers, which fail to gene...
Machine analysis of human facial and body language is a challenging topic in computer vision, impact...
We present a novel approach for supervised domain adaptation that is based upon the probabilistic fr...
Abstract We present a Bayesian recognition framework in which a model of the whole face is enhanced ...
Automated analysis of facial expressions paves the way for numerous next-generation computing tools ...
We present a novel framework for the recognition of facial expressions at arbitrary poses that is ba...
Abstract—We propose a method for head-pose invariant facial expression recognition that is based on ...
Images of facial expressions are often captured from various views as a result of either head moveme...
Abstract—Images of facial expressions are often captured from various views as a result of either he...
This work deals with facial expression recognition from various face representations. The key contri...
We propose a novel approach for modeling, tracking and recognizing facial expressions. Our method wo...
Abstract. Facial-expression data often appear in multiple views either due to head-movements or the ...
We present a novel approach for supervised domain adaptation that is based upon the probabilistic fr...
We present a regression-based scheme for facialexpression-invariant head pose normalization. We addr...
Most of existing models for facial behavior analysis rely on generic classifiers, which fail to gene...
Most of existing models for facial behavior analysis rely on generic classifiers, which fail to gene...
Machine analysis of human facial and body language is a challenging topic in computer vision, impact...
We present a novel approach for supervised domain adaptation that is based upon the probabilistic fr...
Abstract We present a Bayesian recognition framework in which a model of the whole face is enhanced ...