Abstract

Digital processing of electroencephalography (EEG) signals has now been popularly used in a wide variety of applications such as seizure detection/prediction, motor imagery classification, mental task classification, emotion classification, sleep state classification, and drug effects diagnosis. With the large number of EEG channels acquired, it has become apparent that efficient channel selection algorithms are needed with varying importance from one application to another. The main purpose of the channel selection process is threefold: (i) to reduce the computational complexity of any processing task performed on EEG signals by selecting the relevant channels and hence extracting the features of major importance, (ii) to reduce the amount of overfitting that may arise due to the utilization of unnecessary channels, for the purpose of improving the performance, and (iii) to reduce the setup time in some applications. Signal processing tools such as time-domain analysis, power spectral estimation, and wavelet transform have been used for feature extraction and hence for channel selection in most of channel selection algorithms. In addition, different evaluation approaches such as filtering, wrapper, embedded, hybrid, and human-based techniques have been widely used for the evaluation of the selected subset of channels. In this paper, we survey the recent developments in the field of EEG channel selection methods along with their applications and classify these methods according to the evaluation approach.

Highlights

  • Introduction Digital processing ofEEG signals plays an important role in a variety of applications, e.g., seizure detection/prediction, sleep state classification, and motor imagery classification

  • The results showed that the robust sparse common spatial pattern (RSCSP) algorithm outperformed other algorithms like SCSP, common spatial pattern (CSP), MI, Fisher criterion (FC), and support vector machine (SVM) by an average accuracy of 0.88, 2.85, 2.69, 4.85, and 4.58 %, respectively

  • 9 Conclusion and future research directions This paper explored some EEG channel selection techniques for different applications taking into consideration the different criteria developed in the literature for channel selection evaluation and search strategy

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Summary

Di footscore and

Jatupaiboon et al [69] proposed a method to classify two emotions based on EEG signals, which are positive and negative emotions elicited by pictures They extracted the power spectrum from five bands and used SVM as a classifier in a wrapper channel selection evaluation approach. The comprehensive study in this paper has revealed that it is possible, without much loss in the performance of the classification/detection tasks, to make use of a small set of EEG channels ranging from 10 to 30 % of the available channels This will in turn reduce the processing complexity with less setup time and maintain the subject’s convenience by having less electrodes. Hybrid, and embedded channel selection techniques, the performance

Sequential search Wrapper
Channel weighting
Genetic algorithm
Random search
Complete search Filtering
Findings
Mental task classification
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