Modeling and analysis tools for brain study

Many stress related studies and researches are springing up in attempt to diagnose stress accurately. Although stress is a familiar topic, it however is difficult to capture due to the different markers of stress that individual has. Several researches were done to venture into stress recognition mo...

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Main Author: Tan, Eileen Yun Rui
Other Authors: Olga Sourina
Format: Final Year Project
Language:English
Published: 2015
Subjects:
Online Access:http://hdl.handle.net/10356/64186
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-641862023-07-07T17:31:38Z Modeling and analysis tools for brain study Tan, Eileen Yun Rui Olga Sourina Wang Lipo School of Electrical and Electronic Engineering Fraunhofer Singapore DRNTU::Engineering::Electrical and electronic engineering Many stress related studies and researches are springing up in attempt to diagnose stress accurately. Although stress is a familiar topic, it however is difficult to capture due to the different markers of stress that individual has. Several researches were done to venture into stress recognition models. These models mostly look at physiological indicators such as heartbeat and blood pressure. There is however little research in developing integrated tool for stress monitoring and recognition through human’s electroencephalogram signals. With the advancement of electroencephalography detection tools, adaptable brain wave sensors have mature, and is increasing becoming affordable equipment. In this project, an experiment was designed and carried out with 9 subjects. The Stroop colour-word test was used as a stressor to induce stress in the subjects. The EEG data are recorded to propose an algorithm for stress monitoring. By using fractal dimension, statistical, and power features, with Support Vector Machine as the classifier, four levels of stress can be recognized with an average accuracy of 60.71 %, three levels of stress can be recognized with an accuracy of 69.82%, and two levels of stress can be recognized with an accuracy of 80.96%. The algorithm is integrated into a user interface CogniMeter for the stress state monitoring. Bachelor of Engineering 2015-05-25T05:39:39Z 2015-05-25T05:39:39Z 2015 2015 Final Year Project (FYP) http://hdl.handle.net/10356/64186 en Nanyang Technological University 92 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering::Electrical and electronic engineering
spellingShingle DRNTU::Engineering::Electrical and electronic engineering
Tan, Eileen Yun Rui
Modeling and analysis tools for brain study
description Many stress related studies and researches are springing up in attempt to diagnose stress accurately. Although stress is a familiar topic, it however is difficult to capture due to the different markers of stress that individual has. Several researches were done to venture into stress recognition models. These models mostly look at physiological indicators such as heartbeat and blood pressure. There is however little research in developing integrated tool for stress monitoring and recognition through human’s electroencephalogram signals. With the advancement of electroencephalography detection tools, adaptable brain wave sensors have mature, and is increasing becoming affordable equipment. In this project, an experiment was designed and carried out with 9 subjects. The Stroop colour-word test was used as a stressor to induce stress in the subjects. The EEG data are recorded to propose an algorithm for stress monitoring. By using fractal dimension, statistical, and power features, with Support Vector Machine as the classifier, four levels of stress can be recognized with an average accuracy of 60.71 %, three levels of stress can be recognized with an accuracy of 69.82%, and two levels of stress can be recognized with an accuracy of 80.96%. The algorithm is integrated into a user interface CogniMeter for the stress state monitoring.
author2 Olga Sourina
author_facet Olga Sourina
Tan, Eileen Yun Rui
format Final Year Project
author Tan, Eileen Yun Rui
author_sort Tan, Eileen Yun Rui
title Modeling and analysis tools for brain study
title_short Modeling and analysis tools for brain study
title_full Modeling and analysis tools for brain study
title_fullStr Modeling and analysis tools for brain study
title_full_unstemmed Modeling and analysis tools for brain study
title_sort modeling and analysis tools for brain study
publishDate 2015
url http://hdl.handle.net/10356/64186
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