Modified CC-LR Algorithm for Identification of MI-Based EEG Signals

This chapter introduces a modified version of the CC-LR presented in Chap. 8. The CC-LR algorithm was proposed for the identification of MI signals where the ‘Fp1’ electrode signal was randomly considered as the reference signal in the CC technique.

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