Online Mental Stress Detection Using Frontal-channel EEG Recordings in a Classroom Scenario
Chi-Yuan Chang, Chieh Hsu, Ying Choon Wu, Siwen Wang, Darin Tsui,, Tzyy-Ping Jung

TL;DR
This study develops and evaluates an online EEG-based mental stress detection method suitable for classroom settings, demonstrating comparable performance to offline methods and robustness across different channel configurations.
Contribution
It introduces a real-time artifact removal pipeline and compares classifier architectures, showing effective stress detection with minimal channels in a classroom scenario.
Findings
Online artifact removal performs comparably to offline ICA.
Achieved 77-78% balanced accuracy with 11 frontal channels.
Optimal online performance with 20s window and 1s step.
Abstract
Objective: To investigate the effects of different approaches to EEG preprocessing, channel montage selection, and model architecture on the performance of an online-capable stress detection algorithm in a classroom scenario. Methods: This analysis used EEG data from a longitudinal stress and fatigue study conducted among university students. Their self-reported stress ratings during each class session were the basis for classifying EEG recordings into either normal or elevated stress states. We used a data-processing pipeline that combined Artifact Subspace Reconstruction (ASR)and an Independent Component Analysis (ICA)-based method to achieve online artifact removal. We compared the performance of a Linear Discriminant Analysis (LDA) and a 4-layer neural network as classifiers. We opted for accuracy, balanced accuracy, and F1 score as the metrics for assessing performance. We examined…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Emotion and Mood Recognition
MethodsIndependent Component Analysis · Linear Discriminant Analysis
