Finger movements recognition using minimally redundant features of wavelet denoised EMG
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N. M. Kakoty | John Q. Gan | Nayan M. Kakoty | J. Q. Gan | Prastuti Shivam | Nabasmita Phukan | Nabasmita Phukan | Prastuti Shivam
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