Features based on variational mode decomposition for identification of neuromuscular disorder using EMG signals

Sukumar Nagineni1, Sachin Taran1, Varun Bajaj1
1PDPM Indian Institute of Information Technology, Design and Manufacturing Jabalpur, Jabalpur, 452005, India

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