The Role of Features Types and Personalized Assessment in Detecting Affective State Using Dry Electrode EEG

Sensors (Basel). 2020 Nov 28;20(23):6810. doi: 10.3390/s20236810.

Abstract

Assessing the human affective state using electroencephalography (EEG) have shown good potential but failed to demonstrate reliable performance in real-life applications. Especially if one applies a setup that might impact affective processing and relies on generalized models of affect. Additionally, using subjective assessment of ones affect as ground truth has often been disputed. To shed the light on the former challenge we explored the use of a convenient EEG system with 20 participants to capture their reaction to affective movie clips in a naturalistic setting. Employing state-of-the-art machine learning approach demonstrated that the highest performance is reached when combining linear features, namely symmetry features and single-channel features, with nonlinear ones derived by a multiscale entropy approach. Nevertheless, the best performance, reflected in the highest F1-score achieved in a binary classification task for valence was 0.71 and for arousal 0.62. The performance was 10-20% better compared to using ratings provided by 13 independent raters. We argue that affective self-assessment might be underrated and it is crucial to account for personal differences in both perception and physiological response to affective cues.

Keywords: EEG; arousal; dry electrodes; human affect; machine learning; valence; wearable EEG.

MeSH terms

  • Arousal
  • Electrodes
  • Electroencephalography*
  • Emotions*
  • Entropy
  • Humans