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A Spatiotemporal Feature Extraction Technique Using Superlet-CNN Fusion for Improved Motor Imagery Classification

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A Spatiotemporal Feature Extraction Technique Using Superlet-CNN Fusion for Improved Motor Imagery Classification

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Additional information

Journal

IEEE Access

Authors

NEHA SHARMA
MANOJ SHARMA
AMIT SINGHAL
NUZHAT FATEMA
VINAY KUMAR JADOUN
HASMAT MALIK
ASYRAF AFTHANORHAN

Keywords

Motor imagery (MI), deep neural network (DNN), superlet transform (SLT),
brain–computer interface (BCI)

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