Abstract

Brain computer interface (BCI) systems are used in a wide range of applications such as communication, neuro-prosthetic and environmental control for disabled persons using robots and manipulators. A typical BCI system uses different types of inputs; however, Electroencephalography (EEG) signals are most widely used due to their non-invasive EEG electrodes, portability, and cost efficiency. The signals generated by the brain while performing or imagining a motor related task [motor imagery (MI)] signals are one of the important inputs for BCI applications. EEG data is usually recorded from more than 100 locations across the brain, so efficient channel selection algorithms are of great importance to identify optimal channels related to a particular application. The main purpose of applying channel selection is to reduce computational complexity while analysing EEG signals, improve classification accuracy by reducing over-fitting, and decrease setup time. Different channel selection evaluation algorithms such as filtering, wrapper, and hybrid methods have been used for extracting optimal channel subsets by using predefined criteria. After extensively reviewing the literature in the field of EEG channel selection, we can conclude that channel selection algorithms provide a possibility to work with fewer channels without affecting the classification accuracy. In some cases, channel selection increases the system performance by removing the noisy channels. The research in the literature shows that the same performance can be achieved using a smaller channel set, with 10–30 channels in most cases. In this paper, we present a survey of recent development in filtering channel selection techniques along with their feature extraction and classification methods for MI-based EEG applications.

Highlights

  • The EEG signals provide information about the electrical activity in the brain which plays a vital role in many useful applications/systems designed to improve quality of life for the disabled people (Wolpaw et al 2000)

  • This paper focuses on filtering techniques for channel selection because wrapper and hybrid selection techniques heavily rely on the selection of classifier and the subject

  • The results showed that SCSP outperformed the existing channel selection algorithms including Fisher Discriminant (FD), Mutual Information, Support vector machine (SVM), Common Spatial Pattern (CSP) and RCSP

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Summary

Introduction

The EEG signals provide information about the electrical activity in the brain which plays a vital role in many useful applications/systems designed to improve quality of life for the disabled people (Wolpaw et al 2000). Examples of such applications are communication, neuro-prosthetic, seizure detection, sleep state classification and environmental control for disabled persons using robots and manipulators. In a typical EEG signal acquisition system, a number of electrodes are used as sensors to record the voltage level These electrodes can be invasive, mounted into the skull, or non-invasive, mounted on the surface of the skull. Once the data is recorded it is processed to remove noise and artefacts resulting from body movement of the subjects, outside electrical interference and electrodes pop, contact and movement (Shao et al 2009)

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