Abstract

Averaging electromyographic activity prior to muscle synergy computation is a common method employed to compensate for the inter-repetition variability usually associated with this kind of physiological recording. Capturing muscle synergies requires the preservation of accurate temporal and spatial information for muscle activity. The natural variation in electromyography data across consecutive repetitions of the same task raises several related challenges that make averaging a non-trivial process. Duration and triggering times of muscle activity generally vary across different repetitions of the same task. Therefore, it is necessary to define a robust methodology to segment and average muscle activity that deals with these issues. Emerging from this need, the present work proposes a standard protocol for segmenting and averaging muscle activations from periodic motions in a way that accurately preserves the temporal and spatial information contained in the original data and enables the isolation of a single averaged motion period. This protocol has been validated with muscle activity data recorded from 15 participants performing elbow flexion/extension motions, a series of actions driven by well-established muscle synergies. Using the averaged data, muscle synergies were computed, permitting their behavior to be compared with previous results related to the evaluated task. The comparison between the method proposed and a widely used methodology based on motion flags, shown the benefits of our system maintaining the consistency of muscle activation timings and synergies.

Highlights

  • Nowadays, surface electromyography(sEMG) measurement has been indispensable in human behavior researches

  • The sEMG signal is applied to further understanding of our motion control principle, to wearable device controls such as myoelectric prosthesis, to quantification of rehabilitations and so on

  • The muscle-skin shifting is the serial issue of the sEMG analysis from the aspect of changing the sEMG waveform in response to the postural change

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Summary

INTRODUCTION

Surface electromyography(sEMG) measurement has been indispensable in human behavior researches. By combining the sEMG signals and machine learning methods, the myoelectric prosthesis arm with five fingers have been developed to realize more complex motions like human beings [9]–[11]. These analyses and controls are conducted based on the sEMG signals. It suggests that even though putting the electrodes on specific point of the skin, the relative position of the muscle and the electrodes will be shifted depending on the posture This phenomenon will affect the waveform of the sEMG signal because some muscles approach the sensor and get away from the sensor with the postural changes.

Problems with conventional high-density sEMG sensors
Configuration of proposed sensor
Experiment setting
Experiment result
TRAVERSAL SEMG ANALYSIS QUANTIFYING MUSCLE-SKIN SHIFTING
CONCLUSION
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