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A brain computer interface based on neural network with efficient pre-processing
- フォーマット:
- 論文
- 責任表示:
- Nakayama, Kenji ; Inagaki, Kiyoto
- 言語:
- 英語
- 出版情報:
- IEEE = Institute of Electrical and Electronics Engineers, 2006-12-01
- 著者名:
- 掲載情報:
- 2006 International Symposium on Intelligent Signal Processing and Communications,, ISPACS2006, Yonago, Japan
- 開始ページ:
- 673
- 終了ページ:
- 676
- バージョン:
- publisher
- 概要:
- Brain Computer Interface (BCI) is one of hopeful interface technologies between human and machine. However, brain waves are very weak and there exist many kinds of noises. Therefore, what kinds of features are useful, how to extract the useful features, how to suppress noises, and so on are very important. On the other hand, neural networks are very useful technology for pattern classification. Especially, multilayer neural networks trained through the error … back-propagation algorithm have been widely used in a wide variety of field. In this paper, the neural network is applied to the BCI. Amplitude of the FFT of the brain waves are used for the input data. Several kinds of techniques are introduced in this paper. Segmentation along the time axis for fast response, nonlinear normalization for emphasizing important information with small magnitude, averaging samples of the brain waves for suppressing noise effects and reduction in the number of the samples for achieving a small size network, and so on are newly introduced. Simulation was carried out by using the brain waves, which are available from the web site of Colorado state university. The number of mental tasks is five. Ten data sets for each mental task are prepared. Among them, 9 data sets are used for training, and the rest one data set is used for testing. Selection of the one data set for testing is changed and accuracy of the correct classifications are averaged over the possible selections. Approximately, 80% of correct classification of the brain waves is obtained, which is higher than the conventional. © 2006 IEEE. 続きを見る
- URL:
- http://hdl.handle.net/2297/18166
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IEEE = Institute of Electrical and Electronics Engineers |
IEEE = Institute of Electrical and Electronics Engineers |
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電子情報通信学会 = The Institute of Electronics, Information and Communication Engineers |
IEICE The Institute of Electronics, Information and Communication Engineers |
Springer-Verlag / ICANN '94 |
IEEE(Institute of Electrical and Electronics Engineers) | |
IEEE(Institute of Electrical and Electronics Engineers) |
Springer Verlag (Germany) |