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ID 116447
Author
Orgil, Jargalsaikhan Tokushima University
Shagdar, Ganbold Mongolian University of Science Technology
Keywords
deep emotion recognition
emotion recognition
emotion
body language
intonation
Content Type
Journal Article
Description
Automatic understanding of human emotion in a wild setting using audiovisual signals is extremely challenging. Latent continuous dimensions can be used to accomplish the analysis of human emotional states, behaviors, and reactions displayed in real-world settings. Moreover, Valence and Arousal combinations constitute well-known and effective representations of emotions. In this paper, a new Non-inertial loss function is proposed to train emotion recognition deep learning models. It is evaluated in wild settings using four types of candidate networks with different pipelines and sequence lengths. It is then compared to the Concordance Correlation Coefficient (CCC) and Mean Squared Error (MSE) losses commonly used for training. To prove its effectiveness on efficiency and stability in continuous or non-continuous input data, experiments were performed using the Aff-Wild dataset. Encouraging results were obtained.
Journal Title
Journal of Signal Processing
ISSN
18801013
Publisher
Research Institute of Signal Processing
Volume
25
Issue
2
Start Page
73
End Page
85
Published Date
2021-03-01
Remark
利用は著作権の範囲内に限られる。
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DOI (Published Version)
URL ( Publisher's Version )
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language
eng
TextVersion
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departments
Science and Technology