University of Bahrain
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Emotion Detection using Stack Auto Encoder, Deep Learning and LSTM Model

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dc.contributor.author Shah, Disha
dc.contributor.author Rane, Rashmi
dc.contributor.author Kinger, Shakti
dc.date.accessioned 2024-01-30T11:40:33Z
dc.date.available 2024-01-30T11:40:33Z
dc.date.issued 2024-02-01
dc.identifier.issn 2210-142X
dc.identifier.uri https://journal.uob.edu.bh:443/handle/123456789/5398
dc.description.abstract There is an increasing need for distress emotion acknowledgement and channeling the same is very important. There is an increasing need for machines to understand human and their complex emotions deeply. This research describes a unique framework for emotion detection that helps brain-computer interface/machine (BCI) to understand human emotions and brain complexity and working using multi-channel electroencephalograms (EEG). We have employed two datasets in our work, Database for Emotion Recognition Through EEG and ECG Signals from Wireless Low-Cost Off-the-Shelf Devices (DREAMER) and dataset for emotion analysis using EEG, physiological and video signals (DEAP) for LSTM model implementation and validation respectively. A linear model is considered for EEG signal mixing and an emotion timing model comprise the framework. Leveraging the contextual correlations within EEG feature sequences, our proposed methodology effectively recovers EEG source signals from the obtained EEG signals, thereby improving the accuracy rate of classification. Also, stress bins were set up for individual users to assess their degree of stress and calmness following exposure to external stimuli. DEAP dataset using LSTM framework was enforced for emotion recognition, and mean recognition accuracy using area under curve as evaluation matrix for valance and arousal was 82.02% and 76.52% respectively, validating competence of framework. Novelty of our work is it improved competency in feature extraction, use of context correlations increasing accuracy and use of spatio-temporal features in the proposed model framework. en_US
dc.language.iso en en_US
dc.publisher University of Bahrain en_US
dc.subject Electroencephalogram (EEG), Distress Emotions, Emotion Detection, OpenBCI, Stack Auto Encoder, LSTM, fully connected network. en_US
dc.title Emotion Detection using Stack Auto Encoder, Deep Learning and LSTM Model en_US
dc.identifier.doi 10.12785/ijcds/150141
dc.volume 15 en_US
dc.issue 1 en_US
dc.pagestart 1 en_US
dc.pageend 12 en_US
dc.contributor.authorcountry Pune, India en_US
dc.contributor.authorcountry Pune, India en_US
dc.contributor.authoraffiliation Department of Computer engineering and Technology, Dr. Vishwanath Karad MIT World Peace University en_US
dc.contributor.authoraffiliation Department of Computer engineering and Technology, Dr. Vishwanath Karad MIT World Peace University en_US
dc.contributor.authoraffiliation Department of Computer engineering and Technology, Dr. Vishwanath Karad MIT World Peace University en_US
dc.source.title International Journal of Computing and Digital Systems en_US
dc.abbreviatedsourcetitle IJCDS en_US


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