Multi-ganglion ANN based feature learning with application to P300-BCI signal classification. (April 2015)
- Record Type:
- Journal Article
- Title:
- Multi-ganglion ANN based feature learning with application to P300-BCI signal classification. (April 2015)
- Main Title:
- Multi-ganglion ANN based feature learning with application to P300-BCI signal classification
- Authors:
- Gao, Wei
Guan, Jin-an
Gao, Junfeng
Zhou, Dao - Abstract:
- Highlights: The multi-ganglion ANN based feature learning (ANNFL) method is an unsupervised feature extraction method. This method can find an effective feature representation automatically for single-trial P300 signal. The ANNFL method reduces the training time of conventional three-layer auto-encoder and leads to better classification results in the P300-BCI paradigm of our study. Abstract: The feature extraction of event-related potentials (ERPs) is a significant prerequisite for many types of P300-BCIs. In this paper, we proposed a multi-ganglion artificial neural network based feature learning (ANNFL) method to extract a deep feature structure of single-trial multi-channel ERP signals and improve classification accuracy. Five subjects took part in the Imitating-Reading ERP experiments. We recorded the target electroencephalography (EEG) samples (elicited by target stimuli) and non-target samples (elicited by non-target stimuli) for each subjects. Then we applied ANNFL method to extract the feature vectors and classified them by using support vector machine (SVM). The ANNFL method outperforms the principal component analysis (PCA) method and conventional three-layer auto-encoder, and then leads to higher classification accuracies of five subjects' BCI signals than using the single-channel temporal features. ANNFL is an unsupervised feature learning method, which can automatically learn feature vector from EEG data and provide more effective feature representation thanHighlights: The multi-ganglion ANN based feature learning (ANNFL) method is an unsupervised feature extraction method. This method can find an effective feature representation automatically for single-trial P300 signal. The ANNFL method reduces the training time of conventional three-layer auto-encoder and leads to better classification results in the P300-BCI paradigm of our study. Abstract: The feature extraction of event-related potentials (ERPs) is a significant prerequisite for many types of P300-BCIs. In this paper, we proposed a multi-ganglion artificial neural network based feature learning (ANNFL) method to extract a deep feature structure of single-trial multi-channel ERP signals and improve classification accuracy. Five subjects took part in the Imitating-Reading ERP experiments. We recorded the target electroencephalography (EEG) samples (elicited by target stimuli) and non-target samples (elicited by non-target stimuli) for each subjects. Then we applied ANNFL method to extract the feature vectors and classified them by using support vector machine (SVM). The ANNFL method outperforms the principal component analysis (PCA) method and conventional three-layer auto-encoder, and then leads to higher classification accuracies of five subjects' BCI signals than using the single-channel temporal features. ANNFL is an unsupervised feature learning method, which can automatically learn feature vector from EEG data and provide more effective feature representation than PCA method and single-channel temporal feature extraction method. … (more)
- Is Part Of:
- Biomedical signal processing and control. Volume 18(2015)
- Journal:
- Biomedical signal processing and control
- Issue:
- Volume 18(2015)
- Issue Display:
- Volume 18, Issue 2015 (2015)
- Year:
- 2015
- Volume:
- 18
- Issue:
- 2015
- Issue Sort Value:
- 2015-0018-2015-0000
- Page Start:
- 127
- Page End:
- 137
- Publication Date:
- 2015-04
- Subjects:
- Imitating-Reading BCI -- Multi-channel signal feature extraction -- Multi-ganglion artificial neural network
Signal processing -- Periodicals
Biomedical engineering -- Periodicals
Signal Processing, Computer-Assisted -- Periodicals
Image Processing, Computer-Assisted -- Periodicals
Biomedical Engineering -- Periodicals
610.28 - Journal URLs:
- http://www.sciencedirect.com/science/journal/17468094 ↗
http://www.elsevier.com/journals ↗
http://www.sciencedirect.com/science?_ob=PublicationURL&_tockey=%23TOC%2329675%232006%23999989998%23626449%23FLA%23&_cdi=29675&_pubType=J&_auth=y&_acct=C000045259&_version=1&_urlVersion=0&_userid=836873&md5=664b5cf9a57fc91971a17faf20c32ec1 ↗ - DOI:
- 10.1016/j.bspc.2014.12.007 ↗
- Languages:
- English
- ISSNs:
- 1746-8094
- Deposit Type:
- Legaldeposit
- View Content:
- Available online (eLD content is only available in our Reading Rooms) ↗
- Physical Locations:
- British Library DSC - 2087.880400
British Library DSC - BLDSS-3PM
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