Title
Simplified Optimal Estimation Of Time-Varying Electromyogram Standard Deviation (Emg Sigma): Evaluation On Two Datasets
Abstract
To facilitate the broader use of EMG signal whitening, we studied four whitening procedures of various complexities, as well as the roles of sampling rate and noise correction. We separately analyzed force-varying and constant-force contractions from 64 subjects who completed constant-posture tasks about the elbow over a range of forces from 0% to 50% maximum voluntary contraction (MVC). From the constant-force tasks, we found that noise correction via the root difference of squares (RDS) method consistently reduced EMG recording noise, often by a factor of 5-10. All other primary results were from the force-varying contractions. Sampling at 4096 Hz provided small and statistically significant improvements over sampling at 2048 Hz (similar to 3%), which, in turn, provided small improvements over sampling at 1024 Hz (similar to 4%). In comparing equivalent processing variants at a sampling rate of 4096 Hz, whitening filters calibrated to the EMG spectrum of each subject generally performed best (4.74% MVC EMG-force error), followed by one universal whitening filter for all subjects (4.83% MVC error), followed by a high-pass filter whitening method (4.89% MVC error) and then a first difference whitening filter (4.91% MVC error)-but none of these statistically differed. Each did significantly improve from EMG-force error without whitening (5.55% MVC). The first difference is an excellent whitening option over this range of contraction forces since no calibration or algorithm decisions are required.
Year
DOI
Venue
2021
10.3390/s21155165
SENSORS
Keywords
DocType
Volume
biological system modeling, biomedical signal processing, electromyogram, electromyogram (EMG) amplitude estimation, electromyography, advanced signal processing
Journal
21
Issue
ISSN
Citations 
15
1424-8220
0
PageRank 
References 
Authors
0.34
0
7
Name
Order
Citations
PageRank
He Wang100.34
Kiriaki J Rajotte200.34
Haopeng Wang300.34
Chenyun Dai487.61
Ziling Zhu500.34
Xin-ming Huang635646.91
Edward A Clancy700.34