A High-Speed SSVEP-Based BCI Using Dry EEG Electrodes
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Yijun Wang | Hongda Chen | Qiang Gui | Gege Ming | Weihua Pei | Xiao Xing | Xuhong Guo | Fei Wang | Zhiduo Liu | Hongze Zhao | Hongda Chen | Weihua Pei | Xiao Xing | Xuhong Guo | Q. Gui | Zhiduo Liu | Fei Wang | Gege Ming | Yijun Wang | Hongze Zhao
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