Literature DB >> 10356879

Probability density of the surface electromyogram and its relation to amplitude detectors.

E A Clancy1, N Hogan.   

Abstract

When the surface electromyogram (EMG) generated from constant-force, constant-angle, nonfatiguing contractions is modeled as a random process, its density is typically assumed to be Gaussian. This assumption leads to root-mean-square (RMS) processing as the maximum likelihood estimator of the EMG amplitude (where EMG amplitude is defined as the standard deviation of the random process). Contrary to this theoretical formulation, experimental work has found the signal-to-noise-ratio [(SNR), defined as the mean of the amplitude estimate divided by its standard deviation] using mean-absolute-value (MAV) processing to be superior to RMS. This paper reviews RMS processing with the Gaussian model and then derives the expected (inferior) SNR performance of MAV processing with the Gaussian model. Next, a new model for the surface EMG signal, using a Laplacian density, is presented. It is shown that the MAV processor is the maximum likelihood estimator of the EMG amplitude for the Laplacian model. SNR performance based on a Laplacian model is predicted to be inferior to that of the Gaussian model by approximately 32%. Thus, minor variations in the probability distribution of the EMG may result in large decrements in SNR performance. Lastly, experimental data from constant-force, constant-angle, nonfatiguing contractions were examined. The experimentally observed densities fell in between the theoretic Gaussian and Laplacian densities. On average, the Gaussian density best fit the experimental data, although results varied with subject. For amplitude estimation, MAV processing had a slightly higher SNR than RMS processing.

Mesh:

Year:  1999        PMID: 10356879     DOI: 10.1109/10.764949

Source DB:  PubMed          Journal:  IEEE Trans Biomed Eng        ISSN: 0018-9294            Impact factor:   4.538


  17 in total

1.  Man-machine interface system for neuromuscular training and evaluation based on EMG and MMG signals.

Authors:  Ramon de la Rosa; Alonso Alonso; Albano Carrera; Ramon Durán; Patricia Fernández
Journal:  Sensors (Basel)       Date:  2010-12-07       Impact factor: 3.576

2.  Correlation-based decomposition of surface electromyograms at low contraction forces.

Authors:  A Holobar; D Zazula
Journal:  Med Biol Eng Comput       Date:  2004-07       Impact factor: 2.602

3.  Properties of rectified averaging of an evoked-type signal: theory and application to the vestibular-evoked myogenic potential.

Authors:  J G Colebatch
Journal:  Exp Brain Res       Date:  2009-11       Impact factor: 1.972

4.  Evaluation of muscle force classification using shape analysis of the sEMG probability density function: a simulation study.

Authors:  F S Ayachi; S Boudaoud; C Marque
Journal:  Med Biol Eng Comput       Date:  2014-06-25       Impact factor: 2.602

5.  Comparison of speed-accuracy tradeoff between linear and nonlinear filtering algorithms for myocontrol.

Authors:  Cassie N Borish; Adam Feinman; Matteo Bertucco; Natalie G Ramsy; Terence D Sanger
Journal:  J Neurophysiol       Date:  2018-01-31       Impact factor: 2.714

6.  Inference of Upcoming Human Grasp Using EMG During Reach-to-Grasp Movement.

Authors:  Mo Han; Mehrshad Zandigohar; Sezen Yağmur Günay; Gunar Schirner; Deniz Erdoğmuş
Journal:  Front Neurosci       Date:  2022-06-03       Impact factor: 5.152

7.  Quantifying muscle alterations in a Parkinson's disease animal model using electromyographic biomarkers.

Authors:  Pablo Y Teruya; Fernando D Farfán; Álvaro G Pizá; Jorge H Soletta; Facundo A Lucianna; Ana L Albarracín
Journal:  Med Biol Eng Comput       Date:  2021-07-23       Impact factor: 2.602

8.  Prediction of Optimal Facial Electromyographic Sensor Configurations for Human-Machine Interface Control.

Authors:  Jennifer M Vojtech; Gabriel J Cler; Cara E Stepp
Journal:  IEEE Trans Neural Syst Rehabil Eng       Date:  2018-06-20       Impact factor: 3.802

9.  Human facial neural activities and gesture recognition for machine-interfacing applications.

Authors:  M Hamedi; Sh-Hussain Salleh; T S Tan; K Ismail; J Ali; C Dee-Uam; C Pavaganun; P P Yupapin
Journal:  Int J Nanomedicine       Date:  2011-12-16

10.  Effects of the physiological parameters on the signal-to-noise ratio of single myoelectric channel.

Authors:  Heather T Ma; Y T Zhang
Journal:  J Neuroeng Rehabil       Date:  2007-08-08       Impact factor: 4.262

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