Phantom motion intent decoding for transhumeral prosthesis control with fused neuromuscular and brain wave signals

Abstract In recent years, the electroencephalography (EEG) brain–computer interface (BCI) has been researched in the area of upper‐limb prosthesis control due to the promise of being able to record neurological signals which follow activation patterns in the cortex directly from the brain with non‐i...

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Main Authors: Ejay Nsugbe, Oluwarotimi Williams Samuel, Mojisola Grace Asogbon, Guanglin Li
Format: Article
Language:English
Published: Wiley 2021-03-01
Series:IET Cyber-systems and Robotics
Online Access:https://doi.org/10.1049/csy2.12009
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spelling doaj-fdac84f481cb4d219a6b17d027cfc4322021-04-20T13:45:14ZengWileyIET Cyber-systems and Robotics2631-63152021-03-0131778810.1049/csy2.12009Phantom motion intent decoding for transhumeral prosthesis control with fused neuromuscular and brain wave signalsEjay Nsugbe0Oluwarotimi Williams Samuel1Mojisola Grace Asogbon2Guanglin Li3Independent ResearcherChinese Academy of Sciences (CAS) Key Laboratory of Human‐Machine Intelligence‐Synergy System, Shenzhen Institutes of Advanced Technology Shenzhen ChinaChinese Academy of Sciences (CAS) Key Laboratory of Human‐Machine Intelligence‐Synergy System, Shenzhen Institutes of Advanced Technology Shenzhen ChinaChinese Academy of Sciences (CAS) Key Laboratory of Human‐Machine Intelligence‐Synergy System, Shenzhen Institutes of Advanced Technology Shenzhen ChinaAbstract In recent years, the electroencephalography (EEG) brain–computer interface (BCI) has been researched in the area of upper‐limb prosthesis control due to the promise of being able to record neurological signals which follow activation patterns in the cortex directly from the brain with non‐invasive electrodes. This is seen as a way of bypassing the limitation posed by acquiring neuromuscular signals predominantly with electromyography (EMG) directly from the stump, which possesses residual limb anatomy post‐amputation. In this study, the sequential forward selection algorithm to form a 10‐optimal‐channel representation, alongside an extended signal feature vector was applied, to investigate the motion intent decoding performance of EMG‐only, EEG‐only, and a fused EMG–EEG sensing configuration for four transhumeral amputees with varying stump lengths. The results showed a considerable improvement for the EMG‐only configuration with the advanced feature vector, but only a small increase for the EEG‐only, and thus a marginal improvement when information from both signals was fused together. This is likely due to the EEG requiring a greater number of channels spread across the skull to provide a reliable intent decoding. Further work will now involve optimisation studies to find a greater representation of electrode representation and parsimony, to minimise the number of channels while boosting motion intent decoding accuracy.https://doi.org/10.1049/csy2.12009
collection DOAJ
language English
format Article
sources DOAJ
author Ejay Nsugbe
Oluwarotimi Williams Samuel
Mojisola Grace Asogbon
Guanglin Li
spellingShingle Ejay Nsugbe
Oluwarotimi Williams Samuel
Mojisola Grace Asogbon
Guanglin Li
Phantom motion intent decoding for transhumeral prosthesis control with fused neuromuscular and brain wave signals
IET Cyber-systems and Robotics
author_facet Ejay Nsugbe
Oluwarotimi Williams Samuel
Mojisola Grace Asogbon
Guanglin Li
author_sort Ejay Nsugbe
title Phantom motion intent decoding for transhumeral prosthesis control with fused neuromuscular and brain wave signals
title_short Phantom motion intent decoding for transhumeral prosthesis control with fused neuromuscular and brain wave signals
title_full Phantom motion intent decoding for transhumeral prosthesis control with fused neuromuscular and brain wave signals
title_fullStr Phantom motion intent decoding for transhumeral prosthesis control with fused neuromuscular and brain wave signals
title_full_unstemmed Phantom motion intent decoding for transhumeral prosthesis control with fused neuromuscular and brain wave signals
title_sort phantom motion intent decoding for transhumeral prosthesis control with fused neuromuscular and brain wave signals
publisher Wiley
series IET Cyber-systems and Robotics
issn 2631-6315
publishDate 2021-03-01
description Abstract In recent years, the electroencephalography (EEG) brain–computer interface (BCI) has been researched in the area of upper‐limb prosthesis control due to the promise of being able to record neurological signals which follow activation patterns in the cortex directly from the brain with non‐invasive electrodes. This is seen as a way of bypassing the limitation posed by acquiring neuromuscular signals predominantly with electromyography (EMG) directly from the stump, which possesses residual limb anatomy post‐amputation. In this study, the sequential forward selection algorithm to form a 10‐optimal‐channel representation, alongside an extended signal feature vector was applied, to investigate the motion intent decoding performance of EMG‐only, EEG‐only, and a fused EMG–EEG sensing configuration for four transhumeral amputees with varying stump lengths. The results showed a considerable improvement for the EMG‐only configuration with the advanced feature vector, but only a small increase for the EEG‐only, and thus a marginal improvement when information from both signals was fused together. This is likely due to the EEG requiring a greater number of channels spread across the skull to provide a reliable intent decoding. Further work will now involve optimisation studies to find a greater representation of electrode representation and parsimony, to minimise the number of channels while boosting motion intent decoding accuracy.
url https://doi.org/10.1049/csy2.12009
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