학술논문

Emotion Recognition and EEG Analysis Using ADMM-Based Sparse Group Lasso
Document Type
Periodical
Source
IEEE Transactions on Affective Computing IEEE Trans. Affective Comput. Affective Computing, IEEE Transactions on. 13(1):199-210 Jan, 2022
Subject
Computing and Processing
Robotics and Control Systems
Signal Processing and Analysis
Electroencephalography
Feature extraction
Emotion recognition
Brain modeling
Physiology
Atmospheric measurements
multi-modal emotion processing
supervised learning
feature selection
electroencephalogram
EEG
group structure learning
Language
ISSN
1949-3045
2371-9850
Abstract
This study presents an efficient sparse learning-based pattern recognition framework to recognize the discrete states of three emotions—happy, angry, and neutral emotion—using electroencephalogram (EEG) signals. In affective computing with massive spatiotemporal brainwave signals, a large number of features can be extracted to capture various information from multivariate brain data. However, it is often a challenge to model high-dimensional features efficiently in consideration of the intrinsic structure, such as channel location, feature group, time epoch, etc. In this study, features were extensively extracted from EEG signals and were applied on a structured sparse learning model to perform feature selection and classification simultaneously. An efficient ADMM-based algorithm with a closed-form solution was developed to solve the sparse group model. Experimental results show that the proposed method is capable of selecting a small number of important neural features to discriminate the three emotion states with high classification accuracy. With greatly enhanced interpretability and efficiency to learn neural signatures of brain activity from high-dimensional-feature, low-sample-size brain imaging data, the presented computational framework is promising for handling emotion recognition problems with high-dimensional brain imaging data.