Topological EEG Nonlinear Dynamics Analysis for Emotion Recognition
Yan Yan, Xuankun Wu, Chengdong Li, Yini He, Zhicheng Zhang, Huihui Li,, Ang Li, and Lei Wang

TL;DR
This paper introduces a novel topological data analysis method using phase space reconstruction and persistent homology to extract features from EEG signals, significantly improving emotion recognition accuracy on benchmark datasets.
Contribution
It is the first to apply topological EEG nonlinear dynamics analysis for emotion recognition, enhancing feature extraction and classification performance.
Findings
Achieved over 99% accuracy in emotion classification tasks.
Outperformed current state-of-the-art methods in the DREAMER dataset.
Provided new insights into brain nonlinear dynamics for emotion recognition.
Abstract
Emotional recognition through exploring the electroencephalography (EEG) characteristics has been widely performed in recent studies. Nonlinear analysis and feature extraction methods for understanding the complex dynamical phenomena are associated with the EEG patterns of different emotions. The phase space reconstruction is a typical nonlinear technique to reveal the dynamics of the brain neural system. Recently, the topological data analysis (TDA) scheme has been used to explore the properties of space, which provides a powerful tool to think over the phase space. In this work, we proposed a topological EEG nonlinear dynamics analysis approach using the phase space reconstruction (PSR) technique to convert EEG time series into phase space, and the persistent homology tool explores the topological properties of the phase space. We perform the topological analysis of EEG signals in…
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