Classification of Desired Motion Force Based On Cerebral Hemoglobin Information*

Strength training using patients’ desired force level is helpful to improve training effect and promote rehabilitation. Generally, force levels are recognized by applying EMG or biomechanical information, these methods were not suitable for patients who lost important muscle groups or have weakened...

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Main Authors: Sui Yan-Xiang, Li Chun-Guang, Zhang Hong-Miao, Li Juan
Format: Article
Language:English
Published: EDP Sciences 2017-01-01
Series:ITM Web of Conferences
Online Access:https://doi.org/10.1051/itmconf/20171205005
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spelling doaj-f9f4795d2450429a8cf08ea9e2e49c0d2021-02-02T03:59:21ZengEDP SciencesITM Web of Conferences2271-20972017-01-01120500510.1051/itmconf/20171205005itmconf_ita2017_05005Classification of Desired Motion Force Based On Cerebral Hemoglobin Information*Sui Yan-Xiang0Li Chun-Guang1Zhang Hong-Miao2Li Juan3School of Mechanical and Electric Engineering, Soochow UniversitySchool of Mechanical and Electric Engineering, Soochow UniversitySchool of Mechanical and Electric Engineering, Soochow UniversitySchool of Mechanical and Electric Engineering, Soochow UniversityStrength training using patients’ desired force level is helpful to improve training effect and promote rehabilitation. Generally, force levels are recognized by applying EMG or biomechanical information, these methods were not suitable for patients who lost important muscle groups or have weakened muscle functions. This paper proposed a method for identifying force level based on cerebral hemoglobin information, rather than the information depending on limbs. Ten subjects performed pedaling movement in three force levels. Features were extracted in both the time-domain and frequency-domain, with deoxygenated hemoglobin (deoxy) and the difference between oxygenated hemoglobin (oxy) and deoxy as parameters. Important frequency bands (0.01-0.03Hz, 0.03-0.06Hz, 0.06-0.09Hz, 0.09-0.12Hz) were confirmed by performing power spectrum density analysis. And significant measure channels were selected by performing one-way analyses of variance on three time periods around the start of movement. Force level was recognized by applying extreme learning machine (ELM). The corresponding precision rate was up to 78.7%. The proposed identification method was not restricted to the existence of limbs or the strength of limb information. It was realized based on brain information recorded in a real movement environment; it is helpful to realize the desired force level of subjects and to provide a control command for rehabilitation training equipment.https://doi.org/10.1051/itmconf/20171205005
collection DOAJ
language English
format Article
sources DOAJ
author Sui Yan-Xiang
Li Chun-Guang
Zhang Hong-Miao
Li Juan
spellingShingle Sui Yan-Xiang
Li Chun-Guang
Zhang Hong-Miao
Li Juan
Classification of Desired Motion Force Based On Cerebral Hemoglobin Information*
ITM Web of Conferences
author_facet Sui Yan-Xiang
Li Chun-Guang
Zhang Hong-Miao
Li Juan
author_sort Sui Yan-Xiang
title Classification of Desired Motion Force Based On Cerebral Hemoglobin Information*
title_short Classification of Desired Motion Force Based On Cerebral Hemoglobin Information*
title_full Classification of Desired Motion Force Based On Cerebral Hemoglobin Information*
title_fullStr Classification of Desired Motion Force Based On Cerebral Hemoglobin Information*
title_full_unstemmed Classification of Desired Motion Force Based On Cerebral Hemoglobin Information*
title_sort classification of desired motion force based on cerebral hemoglobin information*
publisher EDP Sciences
series ITM Web of Conferences
issn 2271-2097
publishDate 2017-01-01
description Strength training using patients’ desired force level is helpful to improve training effect and promote rehabilitation. Generally, force levels are recognized by applying EMG or biomechanical information, these methods were not suitable for patients who lost important muscle groups or have weakened muscle functions. This paper proposed a method for identifying force level based on cerebral hemoglobin information, rather than the information depending on limbs. Ten subjects performed pedaling movement in three force levels. Features were extracted in both the time-domain and frequency-domain, with deoxygenated hemoglobin (deoxy) and the difference between oxygenated hemoglobin (oxy) and deoxy as parameters. Important frequency bands (0.01-0.03Hz, 0.03-0.06Hz, 0.06-0.09Hz, 0.09-0.12Hz) were confirmed by performing power spectrum density analysis. And significant measure channels were selected by performing one-way analyses of variance on three time periods around the start of movement. Force level was recognized by applying extreme learning machine (ELM). The corresponding precision rate was up to 78.7%. The proposed identification method was not restricted to the existence of limbs or the strength of limb information. It was realized based on brain information recorded in a real movement environment; it is helpful to realize the desired force level of subjects and to provide a control command for rehabilitation training equipment.
url https://doi.org/10.1051/itmconf/20171205005
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AT lichunguang classificationofdesiredmotionforcebasedoncerebralhemoglobininformation
AT zhanghongmiao classificationofdesiredmotionforcebasedoncerebralhemoglobininformation
AT lijuan classificationofdesiredmotionforcebasedoncerebralhemoglobininformation
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