Motion Artifact Suppression for Insulated EMG to Control Myoelectric Prostheses
Myoelectric prostheses help amputees to regain independence and a higher quality of life. These prostheses are controlled by electromyography, which measures an electrical signal at the skin surface during muscle contractions. In this contribution, the electromyography is measured with innovative fl...
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doaj-ee9c72707ab947f8afad3cd8b557c6842020-11-24T21:45:05ZengMDPI AGSensors1424-82202020-02-01204103110.3390/s20041031s20041031Motion Artifact Suppression for Insulated EMG to Control Myoelectric ProsthesesTheresa Roland0Institute of Biomedical Mechatronics, Johannes Kepler University, 4040 Linz, AustriaMyoelectric prostheses help amputees to regain independence and a higher quality of life. These prostheses are controlled by electromyography, which measures an electrical signal at the skin surface during muscle contractions. In this contribution, the electromyography is measured with innovative flexible insulated sensors, which separate the skin and the sensor area by a dielectric layer. Electromyography sensors, and biosignal sensors in general, are striving for higher robustness against motion artifacts, which are a major obstacle in real-world environment. The motion artifact suppression algorithms presented in this article, prevent the activation of the prosthesis drive during artifacts, thereby achieving a substantial performance boost. These algorithms classify the signal into muscle contractions and artifacts. Therefore, new time domain features, such as Mean Crossing Rate are introduced and well-established time domain features (e.g., Zero-Crossing Rate, Slope Sign Change) are modified and implemented. Various artificial intelligence models, which require low calculation resources for an application in a wearable device, were investigated. These models are neural networks, recurrent neural networks, decision trees and logistic regressions. Although these models are designed for a low-power real-time embedded system, high accuracies in discriminating artifacts to contractions of up to 99.9% are achieved. The models were implemented and trained for fast response leading to a high performance in real-world environment. For highest accuracies, recurrent neural networks are suggested and for minimum runtime (0.99−1.15 <inline-formula> <math display="inline"> <semantics> <mi mathvariant="sans-serif">μ</mi> </semantics> </math> </inline-formula>s), decision trees are preferred.https://www.mdpi.com/1424-8220/20/4/1031motion artifactsinsulated/capacitive emgartificial intelligenceneural networktime domain featuresmyoelectric prosthesis |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Theresa Roland |
spellingShingle |
Theresa Roland Motion Artifact Suppression for Insulated EMG to Control Myoelectric Prostheses Sensors motion artifacts insulated/capacitive emg artificial intelligence neural network time domain features myoelectric prosthesis |
author_facet |
Theresa Roland |
author_sort |
Theresa Roland |
title |
Motion Artifact Suppression for Insulated EMG to Control Myoelectric Prostheses |
title_short |
Motion Artifact Suppression for Insulated EMG to Control Myoelectric Prostheses |
title_full |
Motion Artifact Suppression for Insulated EMG to Control Myoelectric Prostheses |
title_fullStr |
Motion Artifact Suppression for Insulated EMG to Control Myoelectric Prostheses |
title_full_unstemmed |
Motion Artifact Suppression for Insulated EMG to Control Myoelectric Prostheses |
title_sort |
motion artifact suppression for insulated emg to control myoelectric prostheses |
publisher |
MDPI AG |
series |
Sensors |
issn |
1424-8220 |
publishDate |
2020-02-01 |
description |
Myoelectric prostheses help amputees to regain independence and a higher quality of life. These prostheses are controlled by electromyography, which measures an electrical signal at the skin surface during muscle contractions. In this contribution, the electromyography is measured with innovative flexible insulated sensors, which separate the skin and the sensor area by a dielectric layer. Electromyography sensors, and biosignal sensors in general, are striving for higher robustness against motion artifacts, which are a major obstacle in real-world environment. The motion artifact suppression algorithms presented in this article, prevent the activation of the prosthesis drive during artifacts, thereby achieving a substantial performance boost. These algorithms classify the signal into muscle contractions and artifacts. Therefore, new time domain features, such as Mean Crossing Rate are introduced and well-established time domain features (e.g., Zero-Crossing Rate, Slope Sign Change) are modified and implemented. Various artificial intelligence models, which require low calculation resources for an application in a wearable device, were investigated. These models are neural networks, recurrent neural networks, decision trees and logistic regressions. Although these models are designed for a low-power real-time embedded system, high accuracies in discriminating artifacts to contractions of up to 99.9% are achieved. The models were implemented and trained for fast response leading to a high performance in real-world environment. For highest accuracies, recurrent neural networks are suggested and for minimum runtime (0.99−1.15 <inline-formula> <math display="inline"> <semantics> <mi mathvariant="sans-serif">μ</mi> </semantics> </math> </inline-formula>s), decision trees are preferred. |
topic |
motion artifacts insulated/capacitive emg artificial intelligence neural network time domain features myoelectric prosthesis |
url |
https://www.mdpi.com/1424-8220/20/4/1031 |
work_keys_str_mv |
AT theresaroland motionartifactsuppressionforinsulatedemgtocontrolmyoelectricprostheses |
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