The rapid advancement of robotics poses the problem of a deep integration of robotic systems in human environments. In order to achieve this symbiosis between humans and robots, the artificial systems have to take into account one of the most important aspects in human life: emotions. The recognition and understanding of human emotions is crucial for robotic systems to behave in appropriate ways according to the situation and smoothly integrate with all the different aspects of human life. This paper proposes a novel algorithm which uses state-of-the-art techniques in Machine Learning, in particular Recurrent Neural Networks, to automatically infer emotional clues from non-stylized motions (i.e. motions which are not supposed to convey emot...
We propose a mechanism to communicate emotions to hu-mans by using head, torso and arm movements of ...
This paper presents a parallel real time framework for emotion extraction from video fragments of hu...
In this paper a radial basis function network architecture is developed that learns the correlation ...
This paper is the first step of an attempt to equip social robots with emotion recognition capabilit...
A fascinating challenge in the field of human–robot interaction is the possibility to endow robots w...
This paper presents a parallel real time framework for emotions and mental states extraction and rec...
This paper proposes a solution for the problem of continuous prediction in real-time of the emotiona...
Recently, Facial Emotion Recognition (FER) has been one of the most promising and growing field in c...
The robot starts to play a prominent role in the modern world. They can be used in different areas l...
One of the main aims of current social robotic research is to improve the robots’ abilities to inter...
Companion robots are becoming more common in home environments, as such a greater emphasis is requir...
Nowadays, social robotics is a very recent topic of research. Aiming for futuristic scenarios, its o...
Human affective state extracted from touch interaction takes advantage of natural communication of e...
Abstract – Given the importance of implicit communication in human interactions, it would be valuabl...
Human facial and bodily expressions play a crucial role in human-human interaction to convey the com...
We propose a mechanism to communicate emotions to hu-mans by using head, torso and arm movements of ...
This paper presents a parallel real time framework for emotion extraction from video fragments of hu...
In this paper a radial basis function network architecture is developed that learns the correlation ...
This paper is the first step of an attempt to equip social robots with emotion recognition capabilit...
A fascinating challenge in the field of human–robot interaction is the possibility to endow robots w...
This paper presents a parallel real time framework for emotions and mental states extraction and rec...
This paper proposes a solution for the problem of continuous prediction in real-time of the emotiona...
Recently, Facial Emotion Recognition (FER) has been one of the most promising and growing field in c...
The robot starts to play a prominent role in the modern world. They can be used in different areas l...
One of the main aims of current social robotic research is to improve the robots’ abilities to inter...
Companion robots are becoming more common in home environments, as such a greater emphasis is requir...
Nowadays, social robotics is a very recent topic of research. Aiming for futuristic scenarios, its o...
Human affective state extracted from touch interaction takes advantage of natural communication of e...
Abstract – Given the importance of implicit communication in human interactions, it would be valuabl...
Human facial and bodily expressions play a crucial role in human-human interaction to convey the com...
We propose a mechanism to communicate emotions to hu-mans by using head, torso and arm movements of ...
This paper presents a parallel real time framework for emotion extraction from video fragments of hu...
In this paper a radial basis function network architecture is developed that learns the correlation ...