Back to Search
Journal ArticleOpen Access

Human emotion recognition using deep belief network architecture

Author Affiliations
King Saud University, BRAC University, University of Oslo, Deakin University, ...
Published InInformation Fusion
Year2018
Citations306

Abstract

Recently, deep learning methodologies have become popular to analyse physiological signals in multiple modalities via hierarchical architectures for human emotion recognition. In most of the state-of-the-arts of human emotion recognition, deep learning for emotion classification was used. However, deep learning is mostly effective for deep feature extraction. Therefore, in this research, we applied unsupervised deep belief network (DBN) for depth level feature extraction from fused observations of Electro-Dermal Activity (EDA), Photoplethysmogram (PPG) and Zygomaticus Electromyography (zEMG) sensors signals. Afterwards, the DBN produced features are combined with statistical features of EDA, PPG and zEMG to prepare a feature-fusion vector. The prepared feature vector is then used to classify five basic emotions namely Happy, Relaxed, Disgust, Sad and Neutral. As the emotion…
View at Publisher

BORR does not host full-text PDFs. The button above takes you to the original publisher.