Inter Subject Emotion Recognition Using Spatio-Temporal Features From EEG Signal
May 27, 2023 Β· Declared Dead Β· π International Computer Science and Engineering Conference
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Authors
Mohammad Asif, Diya Srivastava, Aditya Gupta, Uma Shanker Tiwary
arXiv ID
2305.19379
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.LG,
eess.SP
Citations
5
Venue
International Computer Science and Engineering Conference
Last Checked
4 months ago
Abstract
Inter-subject or subject-independent emotion recognition has been a challenging task in affective computing. This work is about an easy-to-implement emotion recognition model that classifies emotions from EEG signals subject independently. It is based on the famous EEGNet architecture, which is used in EEG-related BCIs. We used the Dataset on Emotion using Naturalistic Stimuli (DENS) dataset. The dataset contains the Emotional Events -- the precise information of the emotion timings that participants felt. The model is a combination of regular, depthwise and separable convolution layers of CNN to classify the emotions. The model has the capacity to learn the spatial features of the EEG channels and the temporal features of the EEG signals variability with time. The model is evaluated for the valence space ratings. The model achieved an accuracy of 73.04%.
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