Ultra-Low-Power Digital Filtering for Insulated EMG Sensing

Myoelectric prostheses help amputees to regain independence and a higher quality of life. These prostheses are controlled by state-of-the-art electromyography sensors, which use a conductive connection to the skin and are therefore sensitive to sweat. They are applied with some pressure to ensure a...

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Main Authors: Theresa Roland, Sebastian Amsuess, Michael F. Russold, Werner Baumgartner
Format: Article
Language:English
Published: MDPI AG 2019-02-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/19/4/959
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spelling doaj-a568c486b6654e329dbbdee2fdbf6f2a2020-11-25T01:01:12ZengMDPI AGSensors1424-82202019-02-0119495910.3390/s19040959s19040959Ultra-Low-Power Digital Filtering for Insulated EMG SensingTheresa Roland0Sebastian Amsuess1Michael F. Russold2Werner Baumgartner3Institute of Biomedical Mechatronics, Johannes Kepler University Linz, 4040 Linz, AustriaResearch and Development, Otto Bock Healthcare Products GmbH, 1110 Vienna, AustriaResearch and Development, Otto Bock Healthcare Products GmbH, 1110 Vienna, AustriaInstitute of Biomedical Mechatronics, Johannes Kepler University Linz, 4040 Linz, AustriaMyoelectric prostheses help amputees to regain independence and a higher quality of life. These prostheses are controlled by state-of-the-art electromyography sensors, which use a conductive connection to the skin and are therefore sensitive to sweat. They are applied with some pressure to ensure a conductive connection, which may result in pressure marks and can be problematic for patients with circulatory disorders, who constitute a major group of amputees. Here, we present ultra-low-power digital signal processing algorithms for an insulated EMG sensor which couples the EMG signal capacitively. These sensors require neither conductive connection to the skin nor electrolytic paste or skin preparation. Capacitive sensors allow straightforward application. However, they make a sophisticated signal amplification and noise suppression necessary. A low-cost sensor has been developed for real-time myoelectric prostheses control. The major hurdles in measuring the EMG are movement artifacts and external noise. We designed various digital filters to attenuate this noise. Optimal system setup and filter parameters for the trade-off between attenuation of this noise and sufficient EMG signal power for high signal quality were investigated. Additionally, an algorithm for movement artifact suppression, enabling robust application in real-world environments, is presented. The algorithms, which require minimal calculation resources and memory, are implemented on an ultra-low-power microcontroller.https://www.mdpi.com/1424-8220/19/4/959EMG signal processingbiosignal processinginsulated/capacitive EMGlow power filteringmyoelectric upper-limb prosthesis
collection DOAJ
language English
format Article
sources DOAJ
author Theresa Roland
Sebastian Amsuess
Michael F. Russold
Werner Baumgartner
spellingShingle Theresa Roland
Sebastian Amsuess
Michael F. Russold
Werner Baumgartner
Ultra-Low-Power Digital Filtering for Insulated EMG Sensing
Sensors
EMG signal processing
biosignal processing
insulated/capacitive EMG
low power filtering
myoelectric upper-limb prosthesis
author_facet Theresa Roland
Sebastian Amsuess
Michael F. Russold
Werner Baumgartner
author_sort Theresa Roland
title Ultra-Low-Power Digital Filtering for Insulated EMG Sensing
title_short Ultra-Low-Power Digital Filtering for Insulated EMG Sensing
title_full Ultra-Low-Power Digital Filtering for Insulated EMG Sensing
title_fullStr Ultra-Low-Power Digital Filtering for Insulated EMG Sensing
title_full_unstemmed Ultra-Low-Power Digital Filtering for Insulated EMG Sensing
title_sort ultra-low-power digital filtering for insulated emg sensing
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2019-02-01
description Myoelectric prostheses help amputees to regain independence and a higher quality of life. These prostheses are controlled by state-of-the-art electromyography sensors, which use a conductive connection to the skin and are therefore sensitive to sweat. They are applied with some pressure to ensure a conductive connection, which may result in pressure marks and can be problematic for patients with circulatory disorders, who constitute a major group of amputees. Here, we present ultra-low-power digital signal processing algorithms for an insulated EMG sensor which couples the EMG signal capacitively. These sensors require neither conductive connection to the skin nor electrolytic paste or skin preparation. Capacitive sensors allow straightforward application. However, they make a sophisticated signal amplification and noise suppression necessary. A low-cost sensor has been developed for real-time myoelectric prostheses control. The major hurdles in measuring the EMG are movement artifacts and external noise. We designed various digital filters to attenuate this noise. Optimal system setup and filter parameters for the trade-off between attenuation of this noise and sufficient EMG signal power for high signal quality were investigated. Additionally, an algorithm for movement artifact suppression, enabling robust application in real-world environments, is presented. The algorithms, which require minimal calculation resources and memory, are implemented on an ultra-low-power microcontroller.
topic EMG signal processing
biosignal processing
insulated/capacitive EMG
low power filtering
myoelectric upper-limb prosthesis
url https://www.mdpi.com/1424-8220/19/4/959
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AT sebastianamsuess ultralowpowerdigitalfilteringforinsulatedemgsensing
AT michaelfrussold ultralowpowerdigitalfilteringforinsulatedemgsensing
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