Affective computing is a subset of the larger field of human-computer interaction, having important connections with cognitive processes, influencing the learning process, decision-making and perception. Out of the multiple means of communication, facial expressions are one of the most widely accepted channels for emotion modulation, receiving an increased attention during the last few years. An important aspect, contributing to their recognition success, concerns modeling the temporal dimension. Therefore, this paper aims to investigate the applicability of current state-of-the-art action recognition techniques to the human emotion recognition task. In particular, two different architectures were investigated, a CNN-based model, named Temp...
Facial expression recognition has been an active topic in computer vision since 90s due to its wide...
This paper addresses the problem of automatic facial expression recognition in videos, where the goa...
This paper introduces a fusion convolutional architecture for efficient learning of spatio-temporal ...
Affective computing is a subset of the larger field of human-computer interaction, having important ...
Emotion recognition plays an important role in human–computer interactions. Recent studies have focu...
This thesis aims at investigating methodologies for recognizing human emotions, single human daily l...
Facial expressions are one of the most powerful ways to depict specific patterns in human behavior a...
This thesis focuses on video understanding for human action and interaction recognition. We start by...
Affective computing builds and evaluates systems that can recognize, interpret, and simulate human e...
Human action recognition plays a crucial role in various applications, including video surveillance,...
Automatic action and gesture recognition research field has growth in interest over the last few yea...
Humans express and perceive emotions in a multimodal manner. The multimodal information is intrinsic...
As an important branch of video analysis, human action recognition has attracted extensive research ...
In the digital age of communication, video as a means of communication becomes increasingly common. ...
As technological systems become more and more advanced, the need for including the human during the ...
Facial expression recognition has been an active topic in computer vision since 90s due to its wide...
This paper addresses the problem of automatic facial expression recognition in videos, where the goa...
This paper introduces a fusion convolutional architecture for efficient learning of spatio-temporal ...
Affective computing is a subset of the larger field of human-computer interaction, having important ...
Emotion recognition plays an important role in human–computer interactions. Recent studies have focu...
This thesis aims at investigating methodologies for recognizing human emotions, single human daily l...
Facial expressions are one of the most powerful ways to depict specific patterns in human behavior a...
This thesis focuses on video understanding for human action and interaction recognition. We start by...
Affective computing builds and evaluates systems that can recognize, interpret, and simulate human e...
Human action recognition plays a crucial role in various applications, including video surveillance,...
Automatic action and gesture recognition research field has growth in interest over the last few yea...
Humans express and perceive emotions in a multimodal manner. The multimodal information is intrinsic...
As an important branch of video analysis, human action recognition has attracted extensive research ...
In the digital age of communication, video as a means of communication becomes increasingly common. ...
As technological systems become more and more advanced, the need for including the human during the ...
Facial expression recognition has been an active topic in computer vision since 90s due to its wide...
This paper addresses the problem of automatic facial expression recognition in videos, where the goa...
This paper introduces a fusion convolutional architecture for efficient learning of spatio-temporal ...