Classification of Surface Electromyogram Signals Acquired from the Forearm of a Healthy Volunteer
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D. N. Tibarewala | Suraj K. Nayak | Goutam Thakur | Kunal Pal | Biswajit Mohapatra | Biswajeet Champaty | K. Uvanesh | B. Champaty | K. Pal | S. Nayak | B. Mohapatra | G. Thakur | U. K.
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