Leveraging deep learning for robust EEG analysis in mental health monitoring.

Journal: Frontiers in neuroinformatics
Published Date:

Abstract

INTRODUCTION: Mental health monitoring utilizing EEG analysis has garnered notable interest due to the non-invasive characteristics and rich temporal information encoded in EEG signals, which are indicative of cognitive and emotional conditions. Conventional methods for EEG-based mental health evaluation often depend on manually crafted features or basic machine learning approaches, like support vector classifiers or superficial neural networks. Despite the potential of these approaches, they often fall short in capturing the intricate spatiotemporal relationships within EEG data, leading to lower classification accuracy and poor adaptability across various populations and mental health scenarios.

Authors

  • Zixiang Liu
    Anhui Vocational College of Grain Engineering, Hefei, China.
  • Juan Zhao
    Hefei University, Hefei, China.

Keywords

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