An enhanced discrete wavelet packet transform for feature extraction in electroencephalogram signals
Extracting features from electroencephalogram (EEG) is a challenging task because the signals are complex and chaotic in nature. EEG signals are time varying as human brain produces different frequency bands within different period of time. Due to this reason, several time-frequency methods have bee...
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my.uum.repo.256502019-02-24T07:46:30Z http://repo.uum.edu.my/25650/ An enhanced discrete wavelet packet transform for feature extraction in electroencephalogram signals Al-Qammaz, Abdullah Yousef Yusof, Yuhanis Ahmad, Farzana Kabir QA75 Electronic computers. Computer science Extracting features from electroencephalogram (EEG) is a challenging task because the signals are complex and chaotic in nature. EEG signals are time varying as human brain produces different frequency bands within different period of time. Due to this reason, several time-frequency methods have been used to extract features, and this includes the Discrete Wavelet Packet Transform (DWPT). DWPT was introduced to provide efficient localization of frequency bands, however, the decomposition of DWPT produces noises in the data points of sub-signals which in return affected the quality of the extracted features. Moreover, when the decomposition of DWPT happens, the length of sequences is decreased by half at every level. If it occurs at the last level, the sequence length will become very short and some frequency bands (i.e. alpha, beta, gamma) will be scattered in several location in the decomposition tree. Hence, this study introduces eDWPT which is the enhanced of DWPT. This method has been evaluated on a preprocessed EEG dataset of 6 subjects (i.e DEAP database) and compared against the standard DWPT. Two experiments of emotion recognition were performed and it is learned that the proposed feature extraction method (i.e eDWPT) produce a higher classification accuracy. Such a result indicates that the proposed eDWPT has the potential to be used as a feature of extraction method in other signal processing. 2017 Conference or Workshop Item PeerReviewed Al-Qammaz, Abdullah Yousef and Yusof, Yuhanis and Ahmad, Farzana Kabir (2017) An enhanced discrete wavelet packet transform for feature extraction in electroencephalogram signals. In: International Conference on Imaging, Signal Processing and Communication, July 26 - 28, 2017, Penang, Malaysia. http://doi.org/10.1145/3132300.3132303 doi:10.1145/3132300.3132303 |
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QA75 Electronic computers. Computer science Al-Qammaz, Abdullah Yousef Yusof, Yuhanis Ahmad, Farzana Kabir An enhanced discrete wavelet packet transform for feature extraction in electroencephalogram signals |
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Extracting features from electroencephalogram (EEG) is a challenging task because the signals are complex and chaotic in nature. EEG signals are time varying as human brain produces different frequency bands within different period of time. Due to this reason, several time-frequency methods have been used to extract features, and this includes the Discrete Wavelet Packet Transform (DWPT). DWPT was introduced to provide efficient localization of frequency bands, however, the decomposition of DWPT produces noises in the data points of sub-signals which in return affected the quality of the extracted features. Moreover, when the decomposition of DWPT happens, the length of sequences is decreased by half at every level. If it occurs at the last level, the sequence length will become very short and some frequency bands (i.e. alpha, beta, gamma) will be scattered in several location in the decomposition tree. Hence, this study introduces eDWPT which is the enhanced of DWPT. This method has been evaluated on a preprocessed EEG dataset of 6 subjects (i.e DEAP database) and compared against the standard DWPT. Two experiments of emotion recognition were performed and it is learned that the proposed feature extraction method (i.e eDWPT) produce a higher classification accuracy. Such a result indicates that the proposed eDWPT has the potential to be used as a feature of extraction method in other signal processing. |
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Conference or Workshop Item |
author |
Al-Qammaz, Abdullah Yousef Yusof, Yuhanis Ahmad, Farzana Kabir |
author_facet |
Al-Qammaz, Abdullah Yousef Yusof, Yuhanis Ahmad, Farzana Kabir |
author_sort |
Al-Qammaz, Abdullah Yousef |
title |
An enhanced discrete wavelet packet transform for feature extraction in electroencephalogram signals |
title_short |
An enhanced discrete wavelet packet transform for feature extraction in electroencephalogram signals |
title_full |
An enhanced discrete wavelet packet transform for feature extraction in electroencephalogram signals |
title_fullStr |
An enhanced discrete wavelet packet transform for feature extraction in electroencephalogram signals |
title_full_unstemmed |
An enhanced discrete wavelet packet transform for feature extraction in electroencephalogram signals |
title_sort |
enhanced discrete wavelet packet transform for feature extraction in electroencephalogram signals |
publishDate |
2017 |
url |
http://repo.uum.edu.my/25650/ http://doi.org/10.1145/3132300.3132303 |
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1644284386452963328 |