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title

EEG SIGNALS AND MACHINE LEARNING BASED FACIAL EMOTION RECOGNITION

Author(s):

V Dyana Christilda

Keywords:

electroencephalogram, facial expression, Deep learning, Continuous Conditional Random Fields

Abstract

Emotions are time varying affective phenomena that are elicited as a result of stimuli. Videos and movies in particular are made to elicit emotions in their audiences. Detecting the viewers’ emotions instantaneously can be used to find the emotional traces of videos. Here, proposed approach in instantaneously detecting the emotions of video viewers’ emotions from electroencephalogram (EEG) signals and facial expressions. A set of emotion inducing videos were shown to participants while their facial expressions and physiological responses were recorded. The expressed valence (negative to positive emotions) in the videos of participants’ faces were annotated by five annotators. The stimuli videos were also continuously annotated on valence and arousal dimensions. Deep learning based neural network and Continuous Conditional Random Fields (CCRF) were utilized in detecting emotions automatically and continuously. Here found the results from facial expressions to be superior to the results from EEG signals. Analyzed the effect of the contamination of facial muscle activities on EEG signals and found that most of the emotionally valuable content in EEG features are as a result of this contamination. However, our statistical analysis showed that EEG signals still carry complementary information in presence of facial expressions.

Other Details

Paper ID: IJSARTV
Published in: Volume : 8, Issue : 8
Publication Date: 8/4/2022

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