4.6 Article

Fear Level Classification Based on Emotional Dimensions and Machine Learning Techniques

Journal

SENSORS
Volume 19, Issue 7, Pages -

Publisher

MDPI
DOI: 10.3390/s19071738

Keywords

fear classification; emotional assessment; feature selection; affective computing

Funding

  1. UEFISCDI [PN-III-P1-1.2-PCCDI2017-0734, 1/2018]
  2. UPB CRC

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There has been steady progress in the field of affective computing over the last two decades that has integrated artificial intelligence techniques in the construction of computational models of emotion. Having, as a purpose, the development of a system for treating phobias that would automatically determine fear levels and adapt exposure intensity based on the user's current affective state, we propose a comparative study between various machine and deep learning techniques (four deep neural network models, a stochastic configuration network, Support Vector Machine, Linear Discriminant Analysis, Random Forest and k-Nearest Neighbors), with and without feature selection, for recognizing and classifying fear levels based on the electroencephalogram (EEG) and peripheral data from the DEAP (Database for Emotion Analysis using Physiological signals) database. Fear was considered an emotion eliciting low valence, high arousal and low dominance. By dividing the ratings of valence/arousal/dominance emotion dimensions, we propose two paradigms for fear level estimationthe two-level (0no fear and 1fear) and the four-level (0no fear, 1low fear, 2medium fear, 3high fear) paradigms. Although all the methods provide good classification accuracies, the highest F scores have been obtained using the Random Forest Classifier89.96% and 85.33% for the two-level and four-level fear evaluation modality.

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