Analysis And Interpretation Of Electro-Encephalogram (EEG) Signals Under Various Physiological Conditions
This research study discusses the application of chaotic parameters such as correlation dimension, Lyapunov exponent and Hurst exponent for studying EEG signals under different physiological conditions. EEG data sets obtained under conditions such as 1. Normal 2. Epilepsy 3. Different anesthetic dep...
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2010
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my-mmu-ep.35092012-04-18T03:57:47Z Analysis And Interpretation Of Electro-Encephalogram (EEG) Signals Under Various Physiological Conditions 2010-02 Venkataraman, Lalitha RC1200 Sports Medicine This research study discusses the application of chaotic parameters such as correlation dimension, Lyapunov exponent and Hurst exponent for studying EEG signals under different physiological conditions. EEG data sets obtained under conditions such as 1. Normal 2. Epilepsy 3. Different anesthetic depth levels 4. Alcoholic and non-alcoholic state are considered and chaos features are extracted. The extracted features are then used to classify the different physiological conditions using artificial neural network based classifier. 2010-02 Thesis http://shdl.mmu.edu.my/3509/ http://vlib.mmu.edu.my/diglib/login/dlusr/login.php masters University of Multimedia Research Library |
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RC1200 Sports Medicine |
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RC1200 Sports Medicine Venkataraman, Lalitha Analysis And Interpretation Of Electro-Encephalogram (EEG) Signals Under Various Physiological Conditions |
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This research study discusses the application of chaotic parameters such as correlation dimension, Lyapunov exponent and Hurst exponent for studying EEG signals under different physiological conditions. EEG data sets obtained under conditions such as 1. Normal 2. Epilepsy 3. Different anesthetic depth levels 4. Alcoholic and non-alcoholic state are considered and chaos features are extracted. The extracted features are then used to classify the different physiological conditions using artificial neural network based classifier. |
format |
Thesis |
qualification_level |
Master's degree |
author |
Venkataraman, Lalitha |
author_facet |
Venkataraman, Lalitha |
author_sort |
Venkataraman, Lalitha |
title |
Analysis And Interpretation Of Electro-Encephalogram (EEG) Signals Under Various Physiological Conditions |
title_short |
Analysis And Interpretation Of Electro-Encephalogram (EEG) Signals Under Various Physiological Conditions |
title_full |
Analysis And Interpretation Of Electro-Encephalogram (EEG) Signals Under Various Physiological Conditions |
title_fullStr |
Analysis And Interpretation Of Electro-Encephalogram (EEG) Signals Under Various Physiological Conditions |
title_full_unstemmed |
Analysis And Interpretation Of Electro-Encephalogram (EEG) Signals Under Various Physiological Conditions |
title_sort |
analysis and interpretation of electro-encephalogram (eeg) signals under various physiological conditions |
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University of Multimedia |
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Research Library |
publishDate |
2010 |
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1747829513069264896 |