Onset detection of action surface electromyography (sEMG) signals is important since it has great impact on the accuracy of subsequent sEMG analysis such as in prosthetic control
human computer interaction and clinical diagnosis and assessment
etc.This study presents a segment onset detection method based on sample entropy.Firstly
sEMG signals are framed by a fixed-length sliding window and the sample entropy of each frame is calculated.Afterwards
adaptive threshold is set to determine the starting point.Experimental results demonstrate the feasibility of sample entropy to characterize the switching property of action sEMG signals.Meanwhile
compared to moving average and Teager-Kaiser energy operator
the proposed method has advantages in better anti-jamming ability
not only in suppressing short muscular contraction relaxation intervals
but also in suppressing involuntary background spikes.