Decoding subtle forearm flexions using fractal features of surface electromyogram from single and multiple sensors

<p>Abstract</p> <p>Background</p> <p>Identifying finger and wrist flexion based actions using a single channel surface electromyogram (sEMG) can lead to a number of applications such as sEMG based controllers for near elbow amputees, human computer interface (HCI) devic...

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Main Authors: Kumar Dinesh, Arjunan Sridhar
Format: Article
Language:English
Published: BMC 2010-10-01
Series:Journal of NeuroEngineering and Rehabilitation
Online Access:http://www.jneuroengrehab.com/content/7/1/53
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spelling doaj-d2aa7791b440485097a7a5e8365d90e22020-11-24T22:12:28ZengBMCJournal of NeuroEngineering and Rehabilitation1743-00032010-10-01715310.1186/1743-0003-7-53Decoding subtle forearm flexions using fractal features of surface electromyogram from single and multiple sensorsKumar DineshArjunan Sridhar<p>Abstract</p> <p>Background</p> <p>Identifying finger and wrist flexion based actions using a single channel surface electromyogram (sEMG) can lead to a number of applications such as sEMG based controllers for near elbow amputees, human computer interface (HCI) devices for elderly and for defence personnel. These are currently infeasible because classification of sEMG is unreliable when the level of muscle contraction is low and there are multiple active muscles. The presence of noise and cross-talk from closely located and simultaneously active muscles is exaggerated when muscles are weakly active such as during sustained wrist and finger flexion. This paper reports the use of fractal properties of sEMG to reliably identify individual wrist and finger flexion, overcoming the earlier shortcomings.</p> <p>Methods</p> <p>SEMG signal was recorded when the participant maintained pre-specified wrist and finger flexion movements for a period of time. Various established sEMG signal parameters such as root mean square (RMS), Mean absolute value (MAV), Variance (VAR) and Waveform length (WL) and the proposed fractal features: fractal dimension (FD) and maximum fractal length (MFL) were computed. Multi-variant analysis of variance (MANOVA) was conducted to determine the <it>p </it>value, indicative of the significance of the relationships between each of these parameters with the wrist and finger flexions. Classification accuracy was also computed using the trained artificial neural network (ANN) classifier to decode the desired subtle movements.</p> <p>Results</p> <p>The results indicate that the <it>p </it>value for the proposed feature set consisting of FD and MFL of single channel sEMG was 0.0001 while that of various combinations of the five established features ranged between 0.009 - 0.0172. From the accuracy of classification by the ANN, the average accuracy in identifying the wrist and finger flexions using the proposed feature set of <it>single </it>channel sEMG was 90%, while the average accuracy when using a combination of other features ranged between 58% and 73%.</p> <p>Conclusions</p> <p>The results show that the MFL and FD of a single channel sEMG recorded from the forearm can be used to accurately identify a set of finger and wrist flexions even when the muscle activity is very weak. A comparison with other features demonstrates that this feature set offers a dramatic improvement in the accuracy of identification of the wrist and finger movements. It is proposed that such a system could be used to control a prosthetic hand or for a human computer interface.</p> http://www.jneuroengrehab.com/content/7/1/53
collection DOAJ
language English
format Article
sources DOAJ
author Kumar Dinesh
Arjunan Sridhar
spellingShingle Kumar Dinesh
Arjunan Sridhar
Decoding subtle forearm flexions using fractal features of surface electromyogram from single and multiple sensors
Journal of NeuroEngineering and Rehabilitation
author_facet Kumar Dinesh
Arjunan Sridhar
author_sort Kumar Dinesh
title Decoding subtle forearm flexions using fractal features of surface electromyogram from single and multiple sensors
title_short Decoding subtle forearm flexions using fractal features of surface electromyogram from single and multiple sensors
title_full Decoding subtle forearm flexions using fractal features of surface electromyogram from single and multiple sensors
title_fullStr Decoding subtle forearm flexions using fractal features of surface electromyogram from single and multiple sensors
title_full_unstemmed Decoding subtle forearm flexions using fractal features of surface electromyogram from single and multiple sensors
title_sort decoding subtle forearm flexions using fractal features of surface electromyogram from single and multiple sensors
publisher BMC
series Journal of NeuroEngineering and Rehabilitation
issn 1743-0003
publishDate 2010-10-01
description <p>Abstract</p> <p>Background</p> <p>Identifying finger and wrist flexion based actions using a single channel surface electromyogram (sEMG) can lead to a number of applications such as sEMG based controllers for near elbow amputees, human computer interface (HCI) devices for elderly and for defence personnel. These are currently infeasible because classification of sEMG is unreliable when the level of muscle contraction is low and there are multiple active muscles. The presence of noise and cross-talk from closely located and simultaneously active muscles is exaggerated when muscles are weakly active such as during sustained wrist and finger flexion. This paper reports the use of fractal properties of sEMG to reliably identify individual wrist and finger flexion, overcoming the earlier shortcomings.</p> <p>Methods</p> <p>SEMG signal was recorded when the participant maintained pre-specified wrist and finger flexion movements for a period of time. Various established sEMG signal parameters such as root mean square (RMS), Mean absolute value (MAV), Variance (VAR) and Waveform length (WL) and the proposed fractal features: fractal dimension (FD) and maximum fractal length (MFL) were computed. Multi-variant analysis of variance (MANOVA) was conducted to determine the <it>p </it>value, indicative of the significance of the relationships between each of these parameters with the wrist and finger flexions. Classification accuracy was also computed using the trained artificial neural network (ANN) classifier to decode the desired subtle movements.</p> <p>Results</p> <p>The results indicate that the <it>p </it>value for the proposed feature set consisting of FD and MFL of single channel sEMG was 0.0001 while that of various combinations of the five established features ranged between 0.009 - 0.0172. From the accuracy of classification by the ANN, the average accuracy in identifying the wrist and finger flexions using the proposed feature set of <it>single </it>channel sEMG was 90%, while the average accuracy when using a combination of other features ranged between 58% and 73%.</p> <p>Conclusions</p> <p>The results show that the MFL and FD of a single channel sEMG recorded from the forearm can be used to accurately identify a set of finger and wrist flexions even when the muscle activity is very weak. A comparison with other features demonstrates that this feature set offers a dramatic improvement in the accuracy of identification of the wrist and finger movements. It is proposed that such a system could be used to control a prosthetic hand or for a human computer interface.</p>
url http://www.jneuroengrehab.com/content/7/1/53
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