Roman domination-based spiking neural network for optimized EEG signal classification of four class motor imagery.

Journal: Computers in biology and medicine
Published Date:

Abstract

The Spiking Neural Network (SNN) is a third-generation neural network recognized for its energy efficiency and ability to process spatiotemporal information, closely imitating the behavioral mechanisms of biological neurons in the brain. SNN exhibit rich neurodynamic features in the spatiotemporal domain, making them well-suited for processing brain signals, mainly those captured using the widely used non-invasive Electroencephalography (EEG) technique. However, the structural limitations of SNN hinder their feature extraction capabilities for motor imagery signal classification, which leads to under performance of the task. To address the aforementioned challenge, the proposed study introduces a novel model that incorporates Roman Domination within a Spiking Neural Network (RDSNN), where Roman domination identifies the most highly correlated channels or nodes. These channels generate an appropriate threshold for spike generation in the signals, which are then classified using the SNN. The model's performance was evaluated on three typically representative motor imagery datasets: PhysioNet, BCI Competition IV-2a, and BCI Competition IV-2b. RDSNN achieved 73.65% accuracy on PhysioNet, 81.75% on BCI IV-2a, and 84.56% on BCI IV-2b. The results demonstrate not only superior accuracy compared to State-Of-the-Art (SOTA) methods but also a 35% reduction in computation time, attributed to the application of Roman domination.

Authors

  • Raja Sekhar Banovoth
    Department of Computer Science and Engineering, National Institute of Technology Warangal, Telangana, 506004, India. Electronic address: br721086@student.nitw.ac.in.
  • Kadambari K V
    Department of Computer Science and Engineering, National Institute of Technology Warangal, Telangana, 506004, India. Electronic address: kadambari@nitw.ac.in.