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Emotional stress recognition using a new fusion link between electroencephalogram and peripheral signals

Background: This paper proposes a new emotional stress assessment system using multi-modal bio-signals. Electroencephalogram (EEG) is the reflection of brain activity and is widely used in clinical diagnosis and biomedical research. Methods: We design an efficient acquisition protocol to acquire the...

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Autores principales: Hosseini, Seyyed Abed, Khalilzadeh, Mohammad Ali, Naghibi-Sistani, Mohammad Bagher, Homam, Seyyed Mehran
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Tehran University of Medical Sciences 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4662687/
https://www.ncbi.nlm.nih.gov/pubmed/26622979
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author Hosseini, Seyyed Abed
Khalilzadeh, Mohammad Ali
Naghibi-Sistani, Mohammad Bagher
Homam, Seyyed Mehran
author_facet Hosseini, Seyyed Abed
Khalilzadeh, Mohammad Ali
Naghibi-Sistani, Mohammad Bagher
Homam, Seyyed Mehran
author_sort Hosseini, Seyyed Abed
collection PubMed
description Background: This paper proposes a new emotional stress assessment system using multi-modal bio-signals. Electroencephalogram (EEG) is the reflection of brain activity and is widely used in clinical diagnosis and biomedical research. Methods: We design an efficient acquisition protocol to acquire the EEG signals in five channels (FP1, FP2, T3, T4 and Pz) and peripheral signals such as blood volume pulse, skin conductance (SC) and respiration, under images induction (calm-neutral and negatively excited) for the participants. The visual stimuli images are selected from the subset International Affective Picture System database. The qualitative and quantitative evaluation of peripheral signals are used to select suitable segments of EEG signals for improving the accuracy of signal labeling according to emotional stress states. After pre-processing, wavelet coefficients, fractal dimension, and Lempel-Ziv complexity are used to extract the features of the EEG signals. The vast number of features leads to the problem of dimensionality, which is solved using the genetic algorithm as a feature selection method. Results: The results show that the average classification accuracy is 89.6% for two categories of emotional stress states using the support vector machine (SVM). Conclusion: This is a great improvement in results compared to other similar researches. We achieve a noticeable improvement of 11.3% in accuracy using SVM classifier, in compared to previous studies. Therefore, a new fusion between EEG and peripheral signals are more robust in comparison to the separate signals.
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spelling pubmed-46626872015-11-30 Emotional stress recognition using a new fusion link between electroencephalogram and peripheral signals Hosseini, Seyyed Abed Khalilzadeh, Mohammad Ali Naghibi-Sistani, Mohammad Bagher Homam, Seyyed Mehran Iran J Neurol Original Article Background: This paper proposes a new emotional stress assessment system using multi-modal bio-signals. Electroencephalogram (EEG) is the reflection of brain activity and is widely used in clinical diagnosis and biomedical research. Methods: We design an efficient acquisition protocol to acquire the EEG signals in five channels (FP1, FP2, T3, T4 and Pz) and peripheral signals such as blood volume pulse, skin conductance (SC) and respiration, under images induction (calm-neutral and negatively excited) for the participants. The visual stimuli images are selected from the subset International Affective Picture System database. The qualitative and quantitative evaluation of peripheral signals are used to select suitable segments of EEG signals for improving the accuracy of signal labeling according to emotional stress states. After pre-processing, wavelet coefficients, fractal dimension, and Lempel-Ziv complexity are used to extract the features of the EEG signals. The vast number of features leads to the problem of dimensionality, which is solved using the genetic algorithm as a feature selection method. Results: The results show that the average classification accuracy is 89.6% for two categories of emotional stress states using the support vector machine (SVM). Conclusion: This is a great improvement in results compared to other similar researches. We achieve a noticeable improvement of 11.3% in accuracy using SVM classifier, in compared to previous studies. Therefore, a new fusion between EEG and peripheral signals are more robust in comparison to the separate signals. Tehran University of Medical Sciences 2015-07-06 /pmc/articles/PMC4662687/ /pubmed/26622979 Text en Copyright © 2015 Iranian Neurological Association, and Tehran University of Medical Sciences This is an Open Access article distributed under the terms of the Creative Commons Attribution License, (http://creativecommons.org/licenses/by/3.0/) which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Article
Hosseini, Seyyed Abed
Khalilzadeh, Mohammad Ali
Naghibi-Sistani, Mohammad Bagher
Homam, Seyyed Mehran
Emotional stress recognition using a new fusion link between electroencephalogram and peripheral signals
title Emotional stress recognition using a new fusion link between electroencephalogram and peripheral signals
title_full Emotional stress recognition using a new fusion link between electroencephalogram and peripheral signals
title_fullStr Emotional stress recognition using a new fusion link between electroencephalogram and peripheral signals
title_full_unstemmed Emotional stress recognition using a new fusion link between electroencephalogram and peripheral signals
title_short Emotional stress recognition using a new fusion link between electroencephalogram and peripheral signals
title_sort emotional stress recognition using a new fusion link between electroencephalogram and peripheral signals
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4662687/
https://www.ncbi.nlm.nih.gov/pubmed/26622979
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