Muse: a multimodal dataset of stressed emotion
Proceedings of the Twelfth Language Resources and Evaluation Conference, 2020•par.nsf.gov
Endowing automated agents with the ability to provide support, entertainment and
interaction with human beings requires sensing of the users' affective state. These affective
states are impacted by a combination of emotion inducers, current psychological state, and
various conversational factors. Although emotion classification in both singular and dyadic
settings is an established area, the effects of these additional factors on the production and
perception of emotion is understudied. This paper presents a new dataset, Multimodal …
interaction with human beings requires sensing of the users' affective state. These affective
states are impacted by a combination of emotion inducers, current psychological state, and
various conversational factors. Although emotion classification in both singular and dyadic
settings is an established area, the effects of these additional factors on the production and
perception of emotion is understudied. This paper presents a new dataset, Multimodal …
Endowing automated agents with the ability to provide support, entertainment and interaction with human beings requires sensing of the users’ affective state. These affective states are impacted by a combination of emotion inducers, current psychological state, and various conversational factors. Although emotion classification in both singular and dyadic settings is an established area, the effects of these additional factors on the production and perception of emotion is understudied. This paper presents a new dataset, Multimodal Stressed Emotion (MuSE), to study the multimodal interplay between the presence of stress and expressions of affect. We describe the data collection protocol, the possible areas of use, and the annotations for the emotional content of the recordings. The paper also presents several baselines to measure the performance of multimodal features for emotion and stress classification.
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