Literature DB >> 33588868

Learning regularized representations of categorically labelled surface EMG enables simultaneous and proportional myoelectric control.

Alexander E Olsson1, Nebojša Malešević2, Anders Björkman3,4, Christian Antfolk5.   

Abstract

BACKGROUND: Processing the surface electromyogram (sEMG) to decode movement intent is a promising approach for natural control of upper extremity prostheses. To this end, this paper introduces and evaluates a new framework which allows for simultaneous and proportional myoelectric control over multiple degrees of freedom (DoFs) in real-time. The framework uses multitask neural networks and domain-informed regularization in order to automatically find nonlinear mappings from the forearm sEMG envelope to multivariate and continuous encodings of concurrent hand- and wrist kinematics, despite only requiring categorical movement instruction stimuli signals for calibration.
METHODS: Forearm sEMG with 8 channels was collected from healthy human subjects (N = 20) and used to calibrate two myoelectric control interfaces, each with two output DoFs. The interfaces were built from (I) the proposed framework, termed Myoelectric Representation Learning (MRL), and, to allow for comparisons, from (II) a standard pattern recognition framework based on Linear Discriminant Analysis (LDA). The online performances of both interfaces were assessed with a Fitts's law type test generating 5 quantitative performance metrics. The temporal stabilities of the interfaces were evaluated by conducting identical tests without recalibration 7 days after the initial experiment session.
RESULTS: Metric-wise two-way repeated measures ANOVA with factors method (MRL vs LDA) and session (day 1 vs day 7) revealed a significant ([Formula: see text]) advantage for MRL over LDA in 5 out of 5 performance metrics, with metric-wise effect sizes (Cohen's [Formula: see text]) separating MRL from LDA ranging from [Formula: see text] to [Formula: see text]. No significant effect on any metric was detected for neither session nor interaction between method and session, indicating that none of the methods deteriorated significantly in control efficacy during one week of intermission.
CONCLUSIONS: The results suggest that MRL is able to successfully generate stable mappings from EMG to kinematics, thereby enabling myoelectric control with real-time performance superior to that of the current commercial standard for pattern recognition (as represented by LDA). It is thus postulated that the presented MRL approach can be of practical utility for muscle-computer interfaces.

Entities:  

Keywords:  Deep learning; Electromyography; Multitask learning; Online performance; Prosthetic control; Regression; Regularization; Representation learning

Mesh:

Year:  2021        PMID: 33588868      PMCID: PMC7885418          DOI: 10.1186/s12984-021-00832-4

Source DB:  PubMed          Journal:  J Neuroeng Rehabil        ISSN: 1743-0003            Impact factor:   4.262


  50 in total

1.  Electromyogram pattern recognition for control of powered upper-limb prostheses: state of the art and challenges for clinical use.

Authors:  Erik Scheme; Kevin Englehart
Journal:  J Rehabil Res Dev       Date:  2011

2.  Prediction of handgrip forces using surface EMG of forearm muscles.

Authors:  Marco J M Hoozemans; Jaap H van Dieën
Journal:  J Electromyogr Kinesiol       Date:  2004-12-09       Impact factor: 2.368

3.  Adaptive pattern recognition of myoelectric signals: exploration of conceptual framework and practical algorithms.

Authors:  Jonathon W Sensinger; Blair A Lock; Todd A Kuiken
Journal:  IEEE Trans Neural Syst Rehabil Eng       Date:  2009-06-02       Impact factor: 3.802

4.  Real-time and simultaneous control of artificial limbs based on pattern recognition algorithms.

Authors:  Max Ortiz-Catalan; Bo Håkansson; Rickard Brånemark
Journal:  IEEE Trans Neural Syst Rehabil Eng       Date:  2014-02-19       Impact factor: 3.802

5.  Automatic discovery of resource-restricted Convolutional Neural Network topologies for myoelectric pattern recognition.

Authors:  Alexander E Olsson; Anders Björkman; Christian Antfolk
Journal:  Comput Biol Med       Date:  2020-03-25       Impact factor: 4.589

6.  A new strategy for multifunction myoelectric control.

Authors:  B Hudgins; P Parker; R N Scott
Journal:  IEEE Trans Biomed Eng       Date:  1993-01       Impact factor: 4.538

7.  Error rate in five-state myoelectric control systems.

Authors:  J E Paciga; P D Richard; R N Scott
Journal:  Med Biol Eng Comput       Date:  1980-05       Impact factor: 2.602

8.  Hidden multiplicity in exploratory multiway ANOVA: Prevalence and remedies.

Authors:  Angélique O J Cramer; Don van Ravenzwaaij; Dora Matzke; Helen Steingroever; Ruud Wetzels; Raoul P P P Grasman; Lourens J Waldorp; Eric-Jan Wagenmakers
Journal:  Psychon Bull Rev       Date:  2016-04

9.  Online mapping of EMG signals into kinematics by autoencoding.

Authors:  Ivan Vujaklija; Vahid Shalchyan; Ernest N Kamavuako; Ning Jiang; Hamid R Marateb; Dario Farina
Journal:  J Neuroeng Rehabil       Date:  2018-03-13       Impact factor: 4.262

10.  A novel attention-based hybrid CNN-RNN architecture for sEMG-based gesture recognition.

Authors:  Yu Hu; Yongkang Wong; Wentao Wei; Yu Du; Mohan Kankanhalli; Weidong Geng
Journal:  PLoS One       Date:  2018-10-30       Impact factor: 3.240

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  2 in total

1.  A Way of Bionic Control Based on EI, EMG, and FMG Signals.

Authors:  Andrey Briko; Vladislava Kapravchuk; Alexander Kobelev; Ahmad Hammoud; Steffen Leonhardt; Chuong Ngo; Yury Gulyaev; Sergey Shchukin
Journal:  Sensors (Basel)       Date:  2021-12-27       Impact factor: 3.576

2.  Myoelectric Control Performance of Two Degree of Freedom Hand-Wrist Prosthesis by Able-Bodied and Limb-Absent Subjects.

Authors:  Ziling Zhu; Jianan Li; William J Boyd; Carlos Martinez-Luna; Chenyun Dai; Haopeng Wang; He Wang; Xinming Huang; Todd R Farrell; Edward A Clancy
Journal:  IEEE Trans Neural Syst Rehabil Eng       Date:  2022-04-11       Impact factor: 4.528

  2 in total

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