Enhancement of SSVEP based BCI using cascade SVM and signal quality evaluation

碩士 === 國立清華大學 === 電機工程學系 === 103 === In recent years, Brain–computer interfaces (BCIs) have been widely studied and become popular research topics on the applications of many fields. Power spectral density analysis (PSDA) and canonical correlation analysis (CCA) are two of the most widely used detec...

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Main Authors: Chien, Hung Lun, 簡宏倫
Other Authors: Tang, Kea Tiong
Format: Others
Language:zh-TW
Published: 2015
Online Access:http://ndltd.ncl.edu.tw/handle/01371469834463174564
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spelling ndltd-TW-103NTHU54420722016-08-15T04:17:33Z http://ndltd.ncl.edu.tw/handle/01371469834463174564 Enhancement of SSVEP based BCI using cascade SVM and signal quality evaluation 以串級支持向量機與訊號品質評估改善基於穩態視覺誘發電位腦機介面之效能 Chien, Hung Lun 簡宏倫 碩士 國立清華大學 電機工程學系 103 In recent years, Brain–computer interfaces (BCIs) have been widely studied and become popular research topics on the applications of many fields. Power spectral density analysis (PSDA) and canonical correlation analysis (CCA) are two of the most widely used detection methods for SSVEP based brain computer interfaces. However, EEG signals are non-stationary, nonlinear and noisy so the recognition accuracy of a BCI usually decreases with time window getting shorter. And the length of time window is a tradeoff between recognition accuracy and operation speed for brain computer interfaces. Hence, it is an important issue to keep the brain computer interfaces with a high recognition accuracy when operated at short time window. In this study, we propose to combine both PSDA and CCA for SSVEP feature extraction in order to increase the information in the feature space. Cascade support vector machine is applied to classification so as to improve the recognition accuracy at short time window. Moreover, we present a signal quality evaluation method that cancels the decision of the classifier when signal quality is low and prone to be misclassified. A feedback alarm would be given to the user in order to increase user’s attention when data, which was prone to be misclassified, was detected by signal quality evaluation unit. Making no decision could reduce the cost of making a wrong decision so as to improve the error rate. Results show that our proposed method outperforms the standard CCA method in classifying SSVEP responses of five frequencies across four subjects. Above 80 % recognition accuracy is achieved when the time window is above three seconds. Tang, Kea Tiong 鄭桂忠 2015 學位論文 ; thesis 83 zh-TW
collection NDLTD
language zh-TW
format Others
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description 碩士 === 國立清華大學 === 電機工程學系 === 103 === In recent years, Brain–computer interfaces (BCIs) have been widely studied and become popular research topics on the applications of many fields. Power spectral density analysis (PSDA) and canonical correlation analysis (CCA) are two of the most widely used detection methods for SSVEP based brain computer interfaces. However, EEG signals are non-stationary, nonlinear and noisy so the recognition accuracy of a BCI usually decreases with time window getting shorter. And the length of time window is a tradeoff between recognition accuracy and operation speed for brain computer interfaces. Hence, it is an important issue to keep the brain computer interfaces with a high recognition accuracy when operated at short time window. In this study, we propose to combine both PSDA and CCA for SSVEP feature extraction in order to increase the information in the feature space. Cascade support vector machine is applied to classification so as to improve the recognition accuracy at short time window. Moreover, we present a signal quality evaluation method that cancels the decision of the classifier when signal quality is low and prone to be misclassified. A feedback alarm would be given to the user in order to increase user’s attention when data, which was prone to be misclassified, was detected by signal quality evaluation unit. Making no decision could reduce the cost of making a wrong decision so as to improve the error rate. Results show that our proposed method outperforms the standard CCA method in classifying SSVEP responses of five frequencies across four subjects. Above 80 % recognition accuracy is achieved when the time window is above three seconds.
author2 Tang, Kea Tiong
author_facet Tang, Kea Tiong
Chien, Hung Lun
簡宏倫
author Chien, Hung Lun
簡宏倫
spellingShingle Chien, Hung Lun
簡宏倫
Enhancement of SSVEP based BCI using cascade SVM and signal quality evaluation
author_sort Chien, Hung Lun
title Enhancement of SSVEP based BCI using cascade SVM and signal quality evaluation
title_short Enhancement of SSVEP based BCI using cascade SVM and signal quality evaluation
title_full Enhancement of SSVEP based BCI using cascade SVM and signal quality evaluation
title_fullStr Enhancement of SSVEP based BCI using cascade SVM and signal quality evaluation
title_full_unstemmed Enhancement of SSVEP based BCI using cascade SVM and signal quality evaluation
title_sort enhancement of ssvep based bci using cascade svm and signal quality evaluation
publishDate 2015
url http://ndltd.ncl.edu.tw/handle/01371469834463174564
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