Exploration of reusing the pre-recorded training data set to improve the supervised classifier for EEG-based motor-imagery brain computer interfaces
Brain computer interface based on Electroencephalogram can be used to control the external devices through the motor imagery, and may be the next-generation user computer interface. However, this system requires a significant amount of data for the supervised algorithm training. The collection of tr...
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Format: | Tagungsbericht |
Sprache: | eng |
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Zusammenfassung: | Brain computer interface based on Electroencephalogram can be used to control the external devices through the motor imagery, and may be the next-generation user computer interface. However, this system requires a significant amount of data for the supervised algorithm training. The collection of training data is time-consuming, which may impede the usage in the daily life. In this paper, the trade-off between the training data size and algorithm accuracy is first analyzed. Then the reusing of the generalized pre-recorded training data set is explored to further improve this trade off. According to the simulation results, 63.8% training data collection time can first be saved with only 3% accuracy degradation. |
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ISSN: | 0271-4302 2158-1525 |
DOI: | 10.1109/ISCAS.2012.6271689 |