Comparison of six electromyography acquisition setups on hand movement classification tasks.
Hand prostheses controlled by surface electromyography are promising due to the non-invasive approach and the control capabilities offered by machine learning. Nevertheless, dexterous prostheses are still scarcely spread due to control difficulties, low robustness and often prohibitive costs. Severa...
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doaj-f22304d1859f4efd8b656a659ea6f42f2020-11-24T21:30:02ZengPublic Library of Science (PLoS)PLoS ONE1932-62032017-01-011210e018613210.1371/journal.pone.0186132Comparison of six electromyography acquisition setups on hand movement classification tasks.Stefano PizzolatoLuca TagliapietraMatteo CognolatoMonica ReggianiHenning MüllerManfredo AtzoriHand prostheses controlled by surface electromyography are promising due to the non-invasive approach and the control capabilities offered by machine learning. Nevertheless, dexterous prostheses are still scarcely spread due to control difficulties, low robustness and often prohibitive costs. Several sEMG acquisition setups are now available, ranging in terms of costs between a few hundred and several thousand dollars. The objective of this paper is the relative comparison of six acquisition setups on an identical hand movement classification task, in order to help the researchers to choose the proper acquisition setup for their requirements. The acquisition setups are based on four different sEMG electrodes (including Otto Bock, Delsys Trigno, Cometa Wave + Dormo ECG and two Thalmic Myo armbands) and they were used to record more than 50 hand movements from intact subjects with a standardized acquisition protocol. The relative performance of the six sEMG acquisition setups is compared on 41 identical hand movements with a standardized feature extraction and data analysis pipeline aimed at performing hand movement classification. Comparable classification results are obtained with three acquisition setups including the Delsys Trigno, the Cometa Wave and the affordable setup composed of two Myo armbands. The results suggest that practical sEMG tests can be performed even when costs are relevant (e.g. in small laboratories, developing countries or use by children). All the presented datasets can be used for offline tests and their quality can easily be compared as the data sets are publicly available.http://europepmc.org/articles/PMC5638457?pdf=render |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Stefano Pizzolato Luca Tagliapietra Matteo Cognolato Monica Reggiani Henning Müller Manfredo Atzori |
spellingShingle |
Stefano Pizzolato Luca Tagliapietra Matteo Cognolato Monica Reggiani Henning Müller Manfredo Atzori Comparison of six electromyography acquisition setups on hand movement classification tasks. PLoS ONE |
author_facet |
Stefano Pizzolato Luca Tagliapietra Matteo Cognolato Monica Reggiani Henning Müller Manfredo Atzori |
author_sort |
Stefano Pizzolato |
title |
Comparison of six electromyography acquisition setups on hand movement classification tasks. |
title_short |
Comparison of six electromyography acquisition setups on hand movement classification tasks. |
title_full |
Comparison of six electromyography acquisition setups on hand movement classification tasks. |
title_fullStr |
Comparison of six electromyography acquisition setups on hand movement classification tasks. |
title_full_unstemmed |
Comparison of six electromyography acquisition setups on hand movement classification tasks. |
title_sort |
comparison of six electromyography acquisition setups on hand movement classification tasks. |
publisher |
Public Library of Science (PLoS) |
series |
PLoS ONE |
issn |
1932-6203 |
publishDate |
2017-01-01 |
description |
Hand prostheses controlled by surface electromyography are promising due to the non-invasive approach and the control capabilities offered by machine learning. Nevertheless, dexterous prostheses are still scarcely spread due to control difficulties, low robustness and often prohibitive costs. Several sEMG acquisition setups are now available, ranging in terms of costs between a few hundred and several thousand dollars. The objective of this paper is the relative comparison of six acquisition setups on an identical hand movement classification task, in order to help the researchers to choose the proper acquisition setup for their requirements. The acquisition setups are based on four different sEMG electrodes (including Otto Bock, Delsys Trigno, Cometa Wave + Dormo ECG and two Thalmic Myo armbands) and they were used to record more than 50 hand movements from intact subjects with a standardized acquisition protocol. The relative performance of the six sEMG acquisition setups is compared on 41 identical hand movements with a standardized feature extraction and data analysis pipeline aimed at performing hand movement classification. Comparable classification results are obtained with three acquisition setups including the Delsys Trigno, the Cometa Wave and the affordable setup composed of two Myo armbands. The results suggest that practical sEMG tests can be performed even when costs are relevant (e.g. in small laboratories, developing countries or use by children). All the presented datasets can be used for offline tests and their quality can easily be compared as the data sets are publicly available. |
url |
http://europepmc.org/articles/PMC5638457?pdf=render |
work_keys_str_mv |
AT stefanopizzolato comparisonofsixelectromyographyacquisitionsetupsonhandmovementclassificationtasks AT lucatagliapietra comparisonofsixelectromyographyacquisitionsetupsonhandmovementclassificationtasks AT matteocognolato comparisonofsixelectromyographyacquisitionsetupsonhandmovementclassificationtasks AT monicareggiani comparisonofsixelectromyographyacquisitionsetupsonhandmovementclassificationtasks AT henningmuller comparisonofsixelectromyographyacquisitionsetupsonhandmovementclassificationtasks AT manfredoatzori comparisonofsixelectromyographyacquisitionsetupsonhandmovementclassificationtasks |
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