An important challenge in building automatic affective state recognition systems is establishing the ground truth. When the groundtruth is not available, observers are often used to label training and testing sets. Unfortunately, inter-rater reliability between observers tends to vary from fair to moderate when dealing with naturalistic expressions. Nevertheless, the most common approach used is to label each expression with the most frequent label assigned by the observers to that expression. In this paper, we propose a general pattern recognition framework that takes into account the variability between observers for automatic affect recognition. This leads to what we term a multi-score learning problem in which a single express...
Facial Expression Recognition (FER) is presently the aspect of cognitive and affective computing wit...
Emotion is expressed and perceived through multiple modalities. In this work, we model face, voice a...
For dynamic emotions to be modelled in a natural and convincing way, systems must rely on accurate ...
The research presented in this thesis is centred in the rapidly growing field of affective computing...
We ran the first Affective Movement Recognition (AffectMove) challenge that brings together dataset...
To capture variation in categorical emotion recognition by human perceivers, we propose a multi-labe...
This paper illustrates our submission method to the fourth Affective Behavior Analysis in-the-Wild (...
The ability to recognise emotional expressions from non-verbal behaviour plays a key role in human-h...
In the wake of rapid advances in automatic affect analysis, commercial automatic classifiers for fac...
Automatic recognition of human emotions is not a trivial process. There are many factors affecting e...
Automatic recognition of human emotions is not a trivial process. There are many factors affecting e...
Affect modeling is viewed, traditionally, as the process of mapping measurable affect manifestation...
Naturalistic affective expressions change at a rate much slower than the typical rate at which video...
Facial expression is one of the most expressive ways to display human emotions. Facial expression an...
Over the past few years, deep learning methods have shown remarkable results in many face-related ta...
Facial Expression Recognition (FER) is presently the aspect of cognitive and affective computing wit...
Emotion is expressed and perceived through multiple modalities. In this work, we model face, voice a...
For dynamic emotions to be modelled in a natural and convincing way, systems must rely on accurate ...
The research presented in this thesis is centred in the rapidly growing field of affective computing...
We ran the first Affective Movement Recognition (AffectMove) challenge that brings together dataset...
To capture variation in categorical emotion recognition by human perceivers, we propose a multi-labe...
This paper illustrates our submission method to the fourth Affective Behavior Analysis in-the-Wild (...
The ability to recognise emotional expressions from non-verbal behaviour plays a key role in human-h...
In the wake of rapid advances in automatic affect analysis, commercial automatic classifiers for fac...
Automatic recognition of human emotions is not a trivial process. There are many factors affecting e...
Automatic recognition of human emotions is not a trivial process. There are many factors affecting e...
Affect modeling is viewed, traditionally, as the process of mapping measurable affect manifestation...
Naturalistic affective expressions change at a rate much slower than the typical rate at which video...
Facial expression is one of the most expressive ways to display human emotions. Facial expression an...
Over the past few years, deep learning methods have shown remarkable results in many face-related ta...
Facial Expression Recognition (FER) is presently the aspect of cognitive and affective computing wit...
Emotion is expressed and perceived through multiple modalities. In this work, we model face, voice a...
For dynamic emotions to be modelled in a natural and convincing way, systems must rely on accurate ...