Abstract

Recently Noninvasive Electroencephalogram (EEG) systems are gaining much attention. Brain-computer Interface (BCI) systems rely on EEG analysis to identify the mental state of the user, change in cognitive state and response to the events. Motor Execution (ME) is a very important control paradigm. This paper introduces a robust and useful User-Independent Hybrid Brain-computer Interface (UIHBCI) model to classify signals from fourteen EEG channels that are used to record the reactions of the brain neurons of nine subjects. Through this study the researchers identified relevant multisensory features of multi-channel EEG that represent the specific mental processes depending on two different evaluation models (Audio/Video) and (Male/Female). The Deep Belief Network (DBN) was applied independently on the two models where, the overall achieved classification rates were better in ME classification compared to the state of art. For evaluation four models were tested in addition to the proposed model, Linear Discriminant Analysis (LDA), Support Vector Machine (SVM), Brain-computer Interface Lower-Limb Motor Recovery (BCI LLMR) and Hybrid Steady-State Visual Evoked Potential Rapid Serial Visual Presentation Brain-computer Interface (Hybrid SSVEP-RSVP BCI). Results indicated the proposed model, LDA, SVM, BCI LLMR and Hybrid SSVEP-RSVP BCI accuracies for (A/V) model are 94.44%, 66.67%, 61.11%, 83.33% and 89.67% respectively, while for (M/F) model, the overall accuracies are 94.44%, 88.89%, 83.331%, 85.44% and 89.45%. Finally, the proposed model achieved superiority over the state of art algorithms in both (A/V) and (M/F) models.

Highlights

  • IntroductionA person can improve modeling, research, assisting, security, entertainment and identification by control brain waves as human computer interactions [3]

  • Two experiments for Brain-computer Interface (BCI) evaluation are presented for MEEEG classification models (A/V) and (M/F)

  • Signals are acquired for a combination of stimulations: Event-Related Potentials (ERP): P300 ((VEP) and (AEP)) and (ERD/ERS))

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Summary

Introduction

A person can improve modeling, research, assisting, security, entertainment and identification by control brain waves as human computer interactions [3] It can support useful applications for mobility impaired people such as sensory-motor tasks and wheelchairs. In addition to that BCIs can be useful in healthcare as is an efficient technology for individuals to communicate with the outside world based on real thoughts that a machine recognizes as a pattern which can be identifiable. These actions are performed by using external devices in many important fields as car drone and robots. These thoughts have specific neural patterns that are recorded by scalp electrodes its signals are applied by computer using algorithms [4]

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