Recognizing Affective State Patterns using Regularized Learning with Nonlinear Dynamical Features of EEG

Miaolin Fan1, Chun-An Chou

  • 1Northeastern University

Details

18:15 - 20:15 | Mon 5 Mar | Caribbean ABC | MoPO.28

Session: Poster Session # 1 and BSN Innovative Health Technology Demonstrations

Abstract

In the present work, we aim to classify human emotional states categorized based on the arousal-valence model by applying a regularized learning Approach with nonlinear features extracted from electroencephalographic (EEG) signals. Recurrence quantification analysis (RQA) was employed to effectively capture the underlying dynamics behind the complex responding activity corresponding to affective phenomenon. A benchmark dataset, DEAP, was used for our two-fold objectives: (1) to investigate the suitability of RQA measures and regularized learning method for emotion recognition, and (2) to compare the performances as well as topographic patterns of important channels for classifying emotional states with previous studies. The results demonstrated that our proposed method with selected RQA measures has better performance (test accuracy = 75.7% and F1 score = 78.1% on average) comparing to existing studies.