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Determination and classification of human stress index using nonparametric analysis of EEG signals

Norizam, Sulaiman (2015) Determination and classification of human stress index using nonparametric analysis of EEG signals. PhD thesis, Universiti Teknologi MARA.

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Determination and classification of human stress index using nonparametric analysis of EEG signals - Table of contents.pdf - Accepted Version

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Determination and classification of human stress index using nonparametric analysis of EEG signals - Abstract.pdf - Accepted Version

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Determination and classification of human stress index using nonparametric analysis of EEG signals - References.pdf - Accepted Version

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Abstract

Regardless of type of stress, either mental stress, emotional stress or physical stress, it definitely affects human lifestyle and work performance. There are two prominent methods in assessing stress which are psychological assessment (qualitative method) and physiological assessment (quantitative method). This research proposes a new stress index based on Electroencephalogram (EEG) signals and non-parametric analysis of the signals. In non-parametric method, the EEG features that might relate to stress are extracted in term of Asymmetry Ratio (AR), Relative Energy Ratio (RER), Spectral Centroids (SC) and Spectral Entropy (SE). The selected features are fed to the k-Nearest Neighbor (k-NN) classifier to identify the stressed group among the four experimental groups being tested. The classification results are based on accuracy, sensitivity and specificity. To support the classification results using k-NN classifier, the clustering techniques using Fuzzy C-Means (FCM) and Fuzzy K-Means (FKM) are implemented. To ensure the robustness of the classifier, the crossvalidation technique using k-fold and leave-one-out is performed to the classifier. The assignment of the stress index is verified by applying Z-score technique to the selected EEG features. The experiments established a 3-level index (Index 1, Index 2 and Index 3) which represents the stress levels of low stress, moderate stress and high stress at overall classification accuracy of 88.89%, classification sensitivity of 86.67 % and classification specificity of 100%. The outcome of the research suggests that the stress level of human can be determined accurately by applying SC on the ratio of the Energy Spectral Density (ESD) of Beta and Alpha bands of the brain signals. The experimental results of this study also confirm that human stress level can be determined and classified precisely using physiological signal through the proposed stress index. The high accuracy, sensitivity and specificity of the classifier might also indicate the robustness of the proposed method.

Item Type: Thesis (PhD)
Additional Information: Thesis (Doctor of philosophy) -- Universiti Teknologi Mara - 2015
Uncontrolled Keywords: Transmission lines; Power lines
Subjects: T Technology > TK Electrical engineering. Electronics Nuclear engineering
Faculty/Division: Faculty of Electrical & Electronic Engineering
Depositing User: Mr. Norizam Sulaiman
Date Deposited: 15 Feb 2017 02:19
Last Modified: 25 Oct 2017 08:06
URI: http://umpir.ump.edu.my/id/eprint/16490
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