Machine learning techniques for electroencephalogram based brain-computer interface: A systematic literature review

Measurement: Sensors - Tập 28 - Trang 100823 - 2023
Pawan1, Rohtash Dhiman1
1Department of Electrical Engineering, Deenbandhu Chhotu Ram University of Science and Technology, Murthal (Sonipat), Haryana, 131039, India

Tài liệu tham khảo

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