The BCI Application of Visual Evoked Potential

碩士 === 南台科技大學 === 電機工程系 === 98 === EEG (Electroencephalogram, EEG) is an important tool used to record and observe the changes in brain activity. The clinical and neuroscience research community has been heading up research in this field. Brain Computer Interface (BCI), makes some people independent...

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Main Authors: Hong, Wei-Jhe, 洪煒哲
Other Authors: Chen, Shih-Chung
Format: Others
Language:zh-TW
Published: 2010
Online Access:http://ndltd.ncl.edu.tw/handle/44352885307882609878
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spelling ndltd-TW-098STUT84420572016-11-22T04:13:29Z http://ndltd.ncl.edu.tw/handle/44352885307882609878 The BCI Application of Visual Evoked Potential 視覺誘發電位之腦機介面應用 Hong, Wei-Jhe 洪煒哲 碩士 南台科技大學 電機工程系 98 EEG (Electroencephalogram, EEG) is an important tool used to record and observe the changes in brain activity. The clinical and neuroscience research community has been heading up research in this field. Brain Computer Interface (BCI), makes some people independent on peripheral nerves and muscles and is a novel communication and control technology. It is designed to help patients suffering from motor neuron disease (Amyotrophic Lateral Sclerosis) or patients suffering from an aftermath of major accidents leading to serious physical impairment. Using the brain and some external devices a link can be established to achieve communication with the outside world and let the patient gain control on some elements in their surrounding environment. In this study, LabVIEW software was used as the core of the BCI system. It made use of the world-famous NuAmps created by NeuroScan Company. In the process, EEG signals are retrieved simultaneously, and LabVIEW core signal processing was used to perform further mutual authentication. Off-line analysis in the BCI system utilized visual stimulation to induce the individual visual evoked potential(VEP) and adopted independent component analysis(ICA) method to resolve the interference caused by the background noise. In addition, EEG features are then extracted after off-line analysis of the data; EEG feature are then used for real-time BCI system. LEGO bricks were used to create the physical component of the page turner machine that uses the EEG signals to control the external environment. Results of these experiments taken from seventeen subjects through offline and real-time analysis of the BCI control system showed a recognition accuracy rate of 93.6% and average time around 4.95 seconds for controling the page turner robot. Regarding the bed control experiment, the results also showed a recognition accuracy rate of 88% and average time around 8.6 seconds. Chen, Shih-Chung 陳世中 2010 學位論文 ; thesis 56 zh-TW
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description 碩士 === 南台科技大學 === 電機工程系 === 98 === EEG (Electroencephalogram, EEG) is an important tool used to record and observe the changes in brain activity. The clinical and neuroscience research community has been heading up research in this field. Brain Computer Interface (BCI), makes some people independent on peripheral nerves and muscles and is a novel communication and control technology. It is designed to help patients suffering from motor neuron disease (Amyotrophic Lateral Sclerosis) or patients suffering from an aftermath of major accidents leading to serious physical impairment. Using the brain and some external devices a link can be established to achieve communication with the outside world and let the patient gain control on some elements in their surrounding environment. In this study, LabVIEW software was used as the core of the BCI system. It made use of the world-famous NuAmps created by NeuroScan Company. In the process, EEG signals are retrieved simultaneously, and LabVIEW core signal processing was used to perform further mutual authentication. Off-line analysis in the BCI system utilized visual stimulation to induce the individual visual evoked potential(VEP) and adopted independent component analysis(ICA) method to resolve the interference caused by the background noise. In addition, EEG features are then extracted after off-line analysis of the data; EEG feature are then used for real-time BCI system. LEGO bricks were used to create the physical component of the page turner machine that uses the EEG signals to control the external environment. Results of these experiments taken from seventeen subjects through offline and real-time analysis of the BCI control system showed a recognition accuracy rate of 93.6% and average time around 4.95 seconds for controling the page turner robot. Regarding the bed control experiment, the results also showed a recognition accuracy rate of 88% and average time around 8.6 seconds.
author2 Chen, Shih-Chung
author_facet Chen, Shih-Chung
Hong, Wei-Jhe
洪煒哲
author Hong, Wei-Jhe
洪煒哲
spellingShingle Hong, Wei-Jhe
洪煒哲
The BCI Application of Visual Evoked Potential
author_sort Hong, Wei-Jhe
title The BCI Application of Visual Evoked Potential
title_short The BCI Application of Visual Evoked Potential
title_full The BCI Application of Visual Evoked Potential
title_fullStr The BCI Application of Visual Evoked Potential
title_full_unstemmed The BCI Application of Visual Evoked Potential
title_sort bci application of visual evoked potential
publishDate 2010
url http://ndltd.ncl.edu.tw/handle/44352885307882609878
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