Manual annotation of facial action units (AUs) is highly tedious and time-consuming. Various methods for automatic coding of AUs have been proposed, however, their performance is still far below of that attained by expert human coders. Several attempts have been made to leverage these methods to reduce the burden of manual coding of AU activations (presence/absence). Nevertheless, this has not been exploited in the context of AU intensity coding, which is a far more difficult task. To this end, we propose an expertdriven probabilistic approach for joint modeling and estimation of AU intensities. Specifically, we introduce a Conditional Random Field model for joint estimation of the AU intensity that updates its predictions in an iterative f...
Human face recognition has been widely used in many fields, including biorobots, driver fatigue moni...
We consider the task of automated estimation of facial expression intensity. This involves estimatio...
This paper presents a unified framework for robust and real-time recognition of a full set of Action...
Manual annotation of facial action units (AUs) is highly tedious and time-consuming. Various methods...
We present a novel Markov Random Field (MRF) structure-based approach to the problem of facial actio...
This dissertation presents a probabilistic state estimation framework for integrating data-driven ma...
This dissertation presents a probabilistic state estimation framework for integrating data-driven ma...
Facial expressions depend greatly on facial morphology and expressiveness of the observed person. Re...
Facial expressions depend greatly on facial morphology and expressiveness of the observed person. Re...
Automatic facial expression analysis has received great attention in different applications over the...
Automatic detection of Facial Action Units (AUs) is crucial for facial analysis systems. Due to the ...
Abstract — Most work in automatic facial expression analysis seeks to detect discrete facial actions...
The Facial Action Coding System describes a set of 44 ordinally scaled actions units (AUs), which ar...
Modeling intensity of facial action units from spontaneously displayed facial expressions is challen...
In this paper, we investigate to what extent modern computer vision and machine learning techniques ...
Human face recognition has been widely used in many fields, including biorobots, driver fatigue moni...
We consider the task of automated estimation of facial expression intensity. This involves estimatio...
This paper presents a unified framework for robust and real-time recognition of a full set of Action...
Manual annotation of facial action units (AUs) is highly tedious and time-consuming. Various methods...
We present a novel Markov Random Field (MRF) structure-based approach to the problem of facial actio...
This dissertation presents a probabilistic state estimation framework for integrating data-driven ma...
This dissertation presents a probabilistic state estimation framework for integrating data-driven ma...
Facial expressions depend greatly on facial morphology and expressiveness of the observed person. Re...
Facial expressions depend greatly on facial morphology and expressiveness of the observed person. Re...
Automatic facial expression analysis has received great attention in different applications over the...
Automatic detection of Facial Action Units (AUs) is crucial for facial analysis systems. Due to the ...
Abstract — Most work in automatic facial expression analysis seeks to detect discrete facial actions...
The Facial Action Coding System describes a set of 44 ordinally scaled actions units (AUs), which ar...
Modeling intensity of facial action units from spontaneously displayed facial expressions is challen...
In this paper, we investigate to what extent modern computer vision and machine learning techniques ...
Human face recognition has been widely used in many fields, including biorobots, driver fatigue moni...
We consider the task of automated estimation of facial expression intensity. This involves estimatio...
This paper presents a unified framework for robust and real-time recognition of a full set of Action...