Affective computing is becoming more and more popular, and the need to find a user-friendly and reliable method of estimating people’s emotions, in their everyday life, is growing. Traditional methods have reached their limits, and this thesis presents a new system of emotion recognition, though physiological signals. With a user-friendly, wearable device, the system can be deployed in a number of fields. A model for our emotion classification is presented and includes the following emotions: cheerfulness, sadness, erotic, horror, and neutral. An experiment of emotion elicitation is also described in this work. Three analysis models applied in our system in order to recognize emotions, including nearest neighbor, discriminant analysis, and ...
Emotions characterize everyone's life. Emotions are states and signals that allow us to pay more att...
In recent years, the rapid growth of human computer interaction research has accelerated the improvi...
Little attention has been paid so far to physiological sig-nals for emotion recognition compared to ...
Emotions are affective states related to physiological responses. This study proposes a model for re...
We discuss the strong relationship between affect and cognition and the importance of emotions in m...
Emotions play a vital role in people’s everyday life. It is a mental state that does not arise throu...
Emotion recognition systems (ERS) have become a popular research field to contribute to human-machin...
Emotions influence physiological processes in humans and are controlled by the autonomous nervous sy...
Recognizing emotional states is becoming a major part of a user's context for wearable computing app...
Most of the existing studies focus on physical activities recognition, such as running, cycling, swi...
The present research proposes a novel emotion recognition framework for the computer prediction of h...
Novel systems and algorithms have been designed and built to recognize affective patterns in physiol...
Abstract. Interest in emotion detection is increasing significantly. For research and development in...
Emotion recognition based on physiological signals has been a hot topic and applied in many areas su...
Affective computing is an exciting and transformative field that is gaining in popularity among psyc...
Emotions characterize everyone's life. Emotions are states and signals that allow us to pay more att...
In recent years, the rapid growth of human computer interaction research has accelerated the improvi...
Little attention has been paid so far to physiological sig-nals for emotion recognition compared to ...
Emotions are affective states related to physiological responses. This study proposes a model for re...
We discuss the strong relationship between affect and cognition and the importance of emotions in m...
Emotions play a vital role in people’s everyday life. It is a mental state that does not arise throu...
Emotion recognition systems (ERS) have become a popular research field to contribute to human-machin...
Emotions influence physiological processes in humans and are controlled by the autonomous nervous sy...
Recognizing emotional states is becoming a major part of a user's context for wearable computing app...
Most of the existing studies focus on physical activities recognition, such as running, cycling, swi...
The present research proposes a novel emotion recognition framework for the computer prediction of h...
Novel systems and algorithms have been designed and built to recognize affective patterns in physiol...
Abstract. Interest in emotion detection is increasing significantly. For research and development in...
Emotion recognition based on physiological signals has been a hot topic and applied in many areas su...
Affective computing is an exciting and transformative field that is gaining in popularity among psyc...
Emotions characterize everyone's life. Emotions are states and signals that allow us to pay more att...
In recent years, the rapid growth of human computer interaction research has accelerated the improvi...
Little attention has been paid so far to physiological sig-nals for emotion recognition compared to ...