In the last decades numerous researches have revealed a strong link between emotions and several physiological responses. However, the automatic recognition of emotions still remains a challenge. In this work we describe a novel approach to estimate valence, arousal and dominance values from various biological parameters (derived from electrodermal activity, heart rate variability signal and electroencephalography), by means of multiple linear regression models. The models training was performed by using a set of pictures pre-evaluated in terms of valence, arousal and dominance, selected from the International Affective Picture System (IAPS) database. By using the step-wise regression method, all the possible combinations of considered biol...
Valence-arousal evaluation using physiological signals in an emotion recall paradigm CHANEL, Guillau...
International audienceWith the development of wearable physiological sensors, emotion estimation bec...
A real-time user-independent emotion detection system using physiological signals has been developed...
In the last decades numerous researches have revealed a strong link between emotions and several phy...
This paper reports on a new methodology for the automatic assessment of emotional responses. More sp...
The arousal dimension of human emotions is assessed from two different physiological sources: periph...
The work presented in this paper aims at assessing human emotions using peripheral as well as electr...
Many studies in literature successfully use classification algorithms to classify emotions by means ...
Electrodermal response (EDR) shows characteristic signal patterns that correspond to different emoti...
This work addresses the still unsolved problem of stimulus- and subject-independent emotion identifi...
Abstract: Our project focused on recognizing emotion from human brain activity, measured by EEG sign...
This paper aims at evaluating the performance of various emotion classification approaches from psyc...
Affective computing is an exciting and transformative field that is gaining in popularity among psyc...
This study reports on the recognition of different arousal levels, elicited by affective sounds, per...
This paper reports on how emotional states elicited by affective sounds can be effectively recognize...
Valence-arousal evaluation using physiological signals in an emotion recall paradigm CHANEL, Guillau...
International audienceWith the development of wearable physiological sensors, emotion estimation bec...
A real-time user-independent emotion detection system using physiological signals has been developed...
In the last decades numerous researches have revealed a strong link between emotions and several phy...
This paper reports on a new methodology for the automatic assessment of emotional responses. More sp...
The arousal dimension of human emotions is assessed from two different physiological sources: periph...
The work presented in this paper aims at assessing human emotions using peripheral as well as electr...
Many studies in literature successfully use classification algorithms to classify emotions by means ...
Electrodermal response (EDR) shows characteristic signal patterns that correspond to different emoti...
This work addresses the still unsolved problem of stimulus- and subject-independent emotion identifi...
Abstract: Our project focused on recognizing emotion from human brain activity, measured by EEG sign...
This paper aims at evaluating the performance of various emotion classification approaches from psyc...
Affective computing is an exciting and transformative field that is gaining in popularity among psyc...
This study reports on the recognition of different arousal levels, elicited by affective sounds, per...
This paper reports on how emotional states elicited by affective sounds can be effectively recognize...
Valence-arousal evaluation using physiological signals in an emotion recall paradigm CHANEL, Guillau...
International audienceWith the development of wearable physiological sensors, emotion estimation bec...
A real-time user-independent emotion detection system using physiological signals has been developed...