Please use this identifier to cite or link to this item: http://elar.urfu.ru/handle/10995/92284
Title: Feature extraction and selection for EEG and motion data in tasks of the mental status assessing pilot study using emotiv EPOC+ headset signals
Authors: Syskov, A.
Borisov, V.
Tetervak, V.
Kublanov, V.
Issue Date: 2018
Publisher: SciTePress
Citation: Syskov A. Feature extraction and selection for EEG and motion data in tasks of the mental status assessing pilot study using emotiv EPOC+ headset signals / A. Syskov, V. Borisov, V. Tetervak, V. Kublanov. — DOI 10.5220/0006593001640172 // BIODEVICES 2018 - 11th International Conference on Biomedical Electronics and Devices, Proceedings; Part of 11th International Joint Conference on Biomedical Engineering Systems and Technologies, BIOSTEC 2018. — 2018. — Iss. 1. — P. 164-172.
Abstract: In the paper the results of extracting and selection the features of EEG data and accelerometer for mental status evaluation are shown. We have used 14 channel wireless EEG-system Emotiv EPOC+ with accelerometer (motional data - MD) for short-term recording under several functional states for 10 healthy subjects: Functional rest (rest state), TOVA-test (mental load), Hyperventilation (physical load) and Aftereffect (after test state). We then extracted core features from EEG-only and MD-only data using principal component analysis. After that, supervised learning methods were used for mental state classification: EEG-only core features for AF3, T7, O1, T8, AF4 channels, MD-only core features and EEG- MD integrated core features. Experimental results showed that integrated core features for mental status evaluation have higher prediction accuracy 92,0% for decision tree method. Copyright © 2018 by SCITEPRESS – Science and Technology Publications, Lda. All rights reserved
Keywords: ACCELEROMETER
BRAIN-COMPUTER INTERFACE
ELECTROENCEPHALOGRAPHY
MACHINE LEARNING
MENTAL EVALUATION
PRINCIPAL COMPONENT ANALYSIS
TEST OF VARIABLES OF ATTENTION
ACCELEROMETERS
BIOMEDICAL ENGINEERING
BIOMEDICAL SIGNAL PROCESSING
DATA MINING
DECISION TREES
ELECTRONIC MEDICAL EQUIPMENT
LEARNING SYSTEMS
PRINCIPAL COMPONENT ANALYSIS
DECISION TREE METHOD
FEATURE EXTRACTION AND SELECTION
FUNCTIONAL STATE
HEALTHY SUBJECTS
INTEGRATED CORE
PREDICTION ACCURACY
STATUS EVALUATIONS
SUPERVISED LEARNING METHODS
FEATURE EXTRACTION
URI: http://elar.urfu.ru/handle/10995/92284
Access: info:eu-repo/semantics/openAccess
SCOPUS ID: 85051724034
PURE ID: 7768992
ISBN: 9789897582776
DOI: 10.5220/0006593001640172
Sponsorship: The work was supported by Act 211 Government of the Russian Federation, contract № 02.A03.21.0006.
Appears in Collections:Научные публикации ученых УрФУ, проиндексированные в SCOPUS и WoS CC

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