Repository logo

Infoscience

  • English
  • French
Log In
Logo EPFL, École polytechnique fédérale de Lausanne

Infoscience

  • English
  • French
Log In
  1. Home
  2. Academic and Research Output
  3. Journal articles
  4. Kernel Density Estimation of Electromyographic Signals and Ensemble Learning for Highly Accurate Classification of a Large Set of Hand/Wrist Motions
 
research article

Kernel Density Estimation of Electromyographic Signals and Ensemble Learning for Highly Accurate Classification of a Large Set of Hand/Wrist Motions

Ghaderi, Parviz  
•
Nosouhi, Marjan
•
Jordanic, Mislav
Show more
March 9, 2022
Frontiers In Neuroscience

The performance of myoelectric control highly depends on the features extracted from surface electromyographic (sEMG) signals. We propose three new sEMG features based on the kernel density estimation. The trimmed mean of density (TMD), the entropy of density, and the trimmed mean absolute value of derivative density were computed for each sEMG channel. These features were tested for the classification of single tasks as well as of two tasks concurrently performed. For single tasks, correlation-based feature selection was used, and the features were then classified using linear discriminant analysis (LDA), non-linear support vector machines, and multi-layer perceptron. The eXtreme gradient boosting (XGBoost) classifier was used for the classification of two movements simultaneously performed. The second and third versions of the Ninapro dataset (conventional control) and Ameri's movement dataset (simultaneous control) were used to test the proposed features. For the Ninapro dataset, the overall accuracy of LDA using the TMD feature was 98.99 +/- 1.36% and 92.25 +/- 9.48% for able-bodied and amputee subjects, respectively. Using ensemble learning of the three classifiers, the average macro and micro-F-score, macro recall, and precision on the validation sets were 98.23 +/- 2.02, 98.32 +/- 1.93, 98.32 +/- 1.93, and 98.88 +/- 1.31%, respectively, for the intact subjects. The movement misclassification percentage was 1.75 +/- 1.73 and 3.44 +/- 2.23 for the intact subjects and amputees. The proposed features were significantly correlated with the movement classes [Generalized Linear Model (GLM); P-value < 0.05]. An accurate online implementation of the proposed algorithm was also presented. For the simultaneous control, the overall accuracy was 99.71 +/- 0.08 and 97.85 +/- 0.10 for the XGBoost and LDA classifiers, respectively. The proposed features are thus promising for conventional and simultaneous myoelectric control.

  • Files
  • Details
  • Metrics
Type
research article
DOI
10.3389/fnins.2022.796711
Web of Science ID

WOS:000783640800001

Author(s)
Ghaderi, Parviz  
Nosouhi, Marjan
Jordanic, Mislav
Marateb, Hamid Reza
Mananas, Miguel Angel
Farina, Dario
Date Issued

2022-03-09

Publisher

FRONTIERS MEDIA SA

Published in
Frontiers In Neuroscience
Volume

16

Article Number

796711

Subjects

Neurosciences

•

Neurosciences & Neurology

•

electromyography

•

ensemble learning

•

kernel density estimation

•

machine learning

•

myoelectric control

•

prosthetics

•

bandwidth selection

•

surface emg

•

progress

•

force

•

time

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
LSENS  
Available on Infoscience
May 9, 2022
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/187769
Logo EPFL, École polytechnique fédérale de Lausanne
  • Contact
  • infoscience@epfl.ch

  • Follow us on Facebook
  • Follow us on Instagram
  • Follow us on LinkedIn
  • Follow us on X
  • Follow us on Youtube
AccessibilityLegal noticePrivacy policyCookie settingsEnd User AgreementGet helpFeedback

Infoscience is a service managed and provided by the Library and IT Services of EPFL. © EPFL, tous droits réservés