CLASSIFICATION OF ARM MOVEMENT BASED ON UPPER LIMB MUSCLE SIGNAL FOR REHABILITATION DEVICE
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Mashood Nasir | Z. H. Bohari | Mohd Hafiz Jali | Mohamad Fani Sulaima | M. F. Sulaima | Iffah Masturah Ibrahim | M. Nasir | I. Ibrahim | M. Jali
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