EEG Signal Classification: Introduction to the Problem

The contribution describes the design, optimization and verificationof the off-line single-trial movement classification system. Four typesof movements are used for the classification: the right index fingerextension vs. flexion as well as the right shoulder (proximal) vs.right index finger (distal)...

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Main Authors: A. Stancak, P. Sovka, J. Stastny
Format: Article
Language:English
Published: Spolecnost pro radioelektronicke inzenyrstvi 2003-09-01
Series:Radioengineering
Online Access:http://www.radioeng.cz/fulltexts/2003/03_03_51_55.pdf
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spelling doaj-8823fb55947f449992c790319899444b2020-11-25T01:24:47ZengSpolecnost pro radioelektronicke inzenyrstviRadioengineering1210-25122003-09-011235155EEG Signal Classification: Introduction to the ProblemA. StancakP. SovkaJ. StastnyThe contribution describes the design, optimization and verificationof the off-line single-trial movement classification system. Four typesof movements are used for the classification: the right index fingerextension vs. flexion as well as the right shoulder (proximal) vs.right index finger (distal) movement. The classification systemutilizes hidden information stored in the characteristic shapes ofhuman brain activity (EEG signal). The great variability of EEGpotentials requires using of context information and hence theclassifier based on Hidden Markov Models (HMM). The suitableparameterization, model structure as well as training andclassification process are suggested on the base of spectral analysisresults and experience with the speech recognition. The training andthe classification are performed with the disjoint sets of EEGrealizations. Classification experiments are performed with 10 randomlychosen sets of EEG realizations. The final average score of thedistal/proximal movement classification is 80%; the standard deviationof classification results is 9%. The classification of the extension /flexion gives comparable results.www.radioeng.cz/fulltexts/2003/03_03_51_55.pdf
collection DOAJ
language English
format Article
sources DOAJ
author A. Stancak
P. Sovka
J. Stastny
spellingShingle A. Stancak
P. Sovka
J. Stastny
EEG Signal Classification: Introduction to the Problem
Radioengineering
author_facet A. Stancak
P. Sovka
J. Stastny
author_sort A. Stancak
title EEG Signal Classification: Introduction to the Problem
title_short EEG Signal Classification: Introduction to the Problem
title_full EEG Signal Classification: Introduction to the Problem
title_fullStr EEG Signal Classification: Introduction to the Problem
title_full_unstemmed EEG Signal Classification: Introduction to the Problem
title_sort eeg signal classification: introduction to the problem
publisher Spolecnost pro radioelektronicke inzenyrstvi
series Radioengineering
issn 1210-2512
publishDate 2003-09-01
description The contribution describes the design, optimization and verificationof the off-line single-trial movement classification system. Four typesof movements are used for the classification: the right index fingerextension vs. flexion as well as the right shoulder (proximal) vs.right index finger (distal) movement. The classification systemutilizes hidden information stored in the characteristic shapes ofhuman brain activity (EEG signal). The great variability of EEGpotentials requires using of context information and hence theclassifier based on Hidden Markov Models (HMM). The suitableparameterization, model structure as well as training andclassification process are suggested on the base of spectral analysisresults and experience with the speech recognition. The training andthe classification are performed with the disjoint sets of EEGrealizations. Classification experiments are performed with 10 randomlychosen sets of EEG realizations. The final average score of thedistal/proximal movement classification is 80%; the standard deviationof classification results is 9%. The classification of the extension /flexion gives comparable results.
url http://www.radioeng.cz/fulltexts/2003/03_03_51_55.pdf
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AT psovka eegsignalclassificationintroductiontotheproblem
AT jstastny eegsignalclassificationintroductiontotheproblem
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