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Mental Workload Classification on Two Frontal EEG Channels Using Artificial Neural Network With Peak Frequency Based Intrinsic Mode Function Selection /
紀錄類型:
書目-語言資料,印刷品 : Monograph/item
正題名/作者:
Mental Workload Classification on Two Frontal EEG Channels Using Artificial Neural Network With Peak Frequency Based Intrinsic Mode Function Selection // Mohd. Nurul Al Hafiz Bin Sha'abani.
作者:
Sha'abani, Mohd. Nurul Al Hafiz Bin,
面頁冊數:
1 electronic resource (148 pages)
附註:
Source: Dissertations Abstracts International, Volume: 86-03, Section: B.
Contained By:
Dissertations Abstracts International86-03B.
標題:
Experimental psychology. -
電子資源:
http://pqdd.sinica.edu.tw/twdaoapp/servlet/advanced?query=31619313
ISBN:
9798384021353
Mental Workload Classification on Two Frontal EEG Channels Using Artificial Neural Network With Peak Frequency Based Intrinsic Mode Function Selection /
Sha'abani, Mohd. Nurul Al Hafiz Bin,
Mental Workload Classification on Two Frontal EEG Channels Using Artificial Neural Network With Peak Frequency Based Intrinsic Mode Function Selection /
Mohd. Nurul Al Hafiz Bin Sha'abani. - 1 electronic resource (148 pages)
Source: Dissertations Abstracts International, Volume: 86-03, Section: B.
Recently, the cognitive neuroscience research community has been interested in measuring mental workload based on electroencephalogram (EEG) signals. In multichannel EEG studies, it is reported that the signal from the brain's frontal area is associated with mental workload. Hence, using a single or a few EEG channels could be feasible. However, the challenge is to remove the presence of artefact in the EEG signal since not all existing methods in multichannel EEG work well when using a single or a small number of channels due to the limited signal sources. To overcome the limitation, this thesis proposed using the ensemble empirical mode decomposition (EEMD) technique. The EEMD heuristically decomposed the EEG signal in the time domain into a series of intrinsic mode functions (IMF). Here, a new technique is proposed for selecting the significant IMFs based on the peak frequency of power spectral density. To evaluate the performance of the proposed method, a mental arithmetic task and a building structure task are designed to stimulate the mental workload of cognitive and psychomotor activities. A cross-task and a cross-subject classification based on the designed mental workload task have been done. Relative power, Shannon entropy, log energy entropy, skewness and kurtosis were extracted as features. Results show that the EEMD coupled with ANN provides the best overall performance compared to the other classifiers. In cross-task classification, the classification accuracy achieved 90.0% when using the log energy entropy feature. While in cross-subject classification, the accuracy achieved 76.7% and 86.7% for mental arithmetic and building structure tasks, respectively when the Shannon entropy feature was used. In a comparative study, the EEMDANN and log energy entropy features provide better accuracy in cross-task and cross-subject classification than the previous studies. In conclusion, this work has contributed to the EEG-based mental workload evaluation using a small number of EEG channels.
English
ISBN: 9798384021353Subjects--Topical Terms:
1180476
Experimental psychology.
Subjects--Index Terms:
Electroencephalogram
Mental Workload Classification on Two Frontal EEG Channels Using Artificial Neural Network With Peak Frequency Based Intrinsic Mode Function Selection /
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Recently, the cognitive neuroscience research community has been interested in measuring mental workload based on electroencephalogram (EEG) signals. In multichannel EEG studies, it is reported that the signal from the brain's frontal area is associated with mental workload. Hence, using a single or a few EEG channels could be feasible. However, the challenge is to remove the presence of artefact in the EEG signal since not all existing methods in multichannel EEG work well when using a single or a small number of channels due to the limited signal sources. To overcome the limitation, this thesis proposed using the ensemble empirical mode decomposition (EEMD) technique. The EEMD heuristically decomposed the EEG signal in the time domain into a series of intrinsic mode functions (IMF). Here, a new technique is proposed for selecting the significant IMFs based on the peak frequency of power spectral density. To evaluate the performance of the proposed method, a mental arithmetic task and a building structure task are designed to stimulate the mental workload of cognitive and psychomotor activities. A cross-task and a cross-subject classification based on the designed mental workload task have been done. Relative power, Shannon entropy, log energy entropy, skewness and kurtosis were extracted as features. Results show that the EEMD coupled with ANN provides the best overall performance compared to the other classifiers. In cross-task classification, the classification accuracy achieved 90.0% when using the log energy entropy feature. While in cross-subject classification, the accuracy achieved 76.7% and 86.7% for mental arithmetic and building structure tasks, respectively when the Shannon entropy feature was used. In a comparative study, the EEMDANN and log energy entropy features provide better accuracy in cross-task and cross-subject classification than the previous studies. In conclusion, this work has contributed to the EEG-based mental workload evaluation using a small number of EEG channels.
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