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Real-Time EMG Based Pattern Recognition Control for Hand Prostheses: A Review on Existing Methods, Challenges and Future Implementation

Upper limb amputation is a condition that significantly restricts the amputees from performing their daily activities. The myoelectric prosthesis, using signals from residual stump muscles, is aimed at restoring the function of such lost limbs seamlessly. Unfortunately, the acquisition and use of su...

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Autores principales: Parajuli, Nawadita, Sreenivasan, Neethu, Bifulco, Paolo, Cesarelli, Mario, Savino, Sergio, Niola, Vincenzo, Esposito, Daniele, Hamilton, Tara J., Naik, Ganesh R., Gunawardana, Upul, Gargiulo, Gaetano D.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6832440/
https://www.ncbi.nlm.nih.gov/pubmed/31652616
http://dx.doi.org/10.3390/s19204596
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author Parajuli, Nawadita
Sreenivasan, Neethu
Bifulco, Paolo
Cesarelli, Mario
Savino, Sergio
Niola, Vincenzo
Esposito, Daniele
Hamilton, Tara J.
Naik, Ganesh R.
Gunawardana, Upul
Gargiulo, Gaetano D.
author_facet Parajuli, Nawadita
Sreenivasan, Neethu
Bifulco, Paolo
Cesarelli, Mario
Savino, Sergio
Niola, Vincenzo
Esposito, Daniele
Hamilton, Tara J.
Naik, Ganesh R.
Gunawardana, Upul
Gargiulo, Gaetano D.
author_sort Parajuli, Nawadita
collection PubMed
description Upper limb amputation is a condition that significantly restricts the amputees from performing their daily activities. The myoelectric prosthesis, using signals from residual stump muscles, is aimed at restoring the function of such lost limbs seamlessly. Unfortunately, the acquisition and use of such myosignals are cumbersome and complicated. Furthermore, once acquired, it usually requires heavy computational power to turn it into a user control signal. Its transition to a practical prosthesis solution is still being challenged by various factors particularly those related to the fact that each amputee has different mobility, muscle contraction forces, limb positional variations and electrode placements. Thus, a solution that can adapt or otherwise tailor itself to each individual is required for maximum utility across amputees. Modified machine learning schemes for pattern recognition have the potential to significantly reduce the factors (movement of users and contraction of the muscle) affecting the traditional electromyography (EMG)-pattern recognition methods. Although recent developments of intelligent pattern recognition techniques could discriminate multiple degrees of freedom with high-level accuracy, their efficiency level was less accessible and revealed in real-world (amputee) applications. This review paper examined the suitability of upper limb prosthesis (ULP) inventions in the healthcare sector from their technical control perspective. More focus was given to the review of real-world applications and the use of pattern recognition control on amputees. We first reviewed the overall structure of pattern recognition schemes for myo-control prosthetic systems and then discussed their real-time use on amputee upper limbs. Finally, we concluded the paper with a discussion of the existing challenges and future research recommendations.
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spelling pubmed-68324402019-11-25 Real-Time EMG Based Pattern Recognition Control for Hand Prostheses: A Review on Existing Methods, Challenges and Future Implementation Parajuli, Nawadita Sreenivasan, Neethu Bifulco, Paolo Cesarelli, Mario Savino, Sergio Niola, Vincenzo Esposito, Daniele Hamilton, Tara J. Naik, Ganesh R. Gunawardana, Upul Gargiulo, Gaetano D. Sensors (Basel) Review Upper limb amputation is a condition that significantly restricts the amputees from performing their daily activities. The myoelectric prosthesis, using signals from residual stump muscles, is aimed at restoring the function of such lost limbs seamlessly. Unfortunately, the acquisition and use of such myosignals are cumbersome and complicated. Furthermore, once acquired, it usually requires heavy computational power to turn it into a user control signal. Its transition to a practical prosthesis solution is still being challenged by various factors particularly those related to the fact that each amputee has different mobility, muscle contraction forces, limb positional variations and electrode placements. Thus, a solution that can adapt or otherwise tailor itself to each individual is required for maximum utility across amputees. Modified machine learning schemes for pattern recognition have the potential to significantly reduce the factors (movement of users and contraction of the muscle) affecting the traditional electromyography (EMG)-pattern recognition methods. Although recent developments of intelligent pattern recognition techniques could discriminate multiple degrees of freedom with high-level accuracy, their efficiency level was less accessible and revealed in real-world (amputee) applications. This review paper examined the suitability of upper limb prosthesis (ULP) inventions in the healthcare sector from their technical control perspective. More focus was given to the review of real-world applications and the use of pattern recognition control on amputees. We first reviewed the overall structure of pattern recognition schemes for myo-control prosthetic systems and then discussed their real-time use on amputee upper limbs. Finally, we concluded the paper with a discussion of the existing challenges and future research recommendations. MDPI 2019-10-22 /pmc/articles/PMC6832440/ /pubmed/31652616 http://dx.doi.org/10.3390/s19204596 Text en © 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Review
Parajuli, Nawadita
Sreenivasan, Neethu
Bifulco, Paolo
Cesarelli, Mario
Savino, Sergio
Niola, Vincenzo
Esposito, Daniele
Hamilton, Tara J.
Naik, Ganesh R.
Gunawardana, Upul
Gargiulo, Gaetano D.
Real-Time EMG Based Pattern Recognition Control for Hand Prostheses: A Review on Existing Methods, Challenges and Future Implementation
title Real-Time EMG Based Pattern Recognition Control for Hand Prostheses: A Review on Existing Methods, Challenges and Future Implementation
title_full Real-Time EMG Based Pattern Recognition Control for Hand Prostheses: A Review on Existing Methods, Challenges and Future Implementation
title_fullStr Real-Time EMG Based Pattern Recognition Control for Hand Prostheses: A Review on Existing Methods, Challenges and Future Implementation
title_full_unstemmed Real-Time EMG Based Pattern Recognition Control for Hand Prostheses: A Review on Existing Methods, Challenges and Future Implementation
title_short Real-Time EMG Based Pattern Recognition Control for Hand Prostheses: A Review on Existing Methods, Challenges and Future Implementation
title_sort real-time emg based pattern recognition control for hand prostheses: a review on existing methods, challenges and future implementation
topic Review
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6832440/
https://www.ncbi.nlm.nih.gov/pubmed/31652616
http://dx.doi.org/10.3390/s19204596
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