P300拼写BCI的实时分布式计算机制

Wei Huang, Zhihua Huang
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引用次数: 2

摘要

在多种脑机接口(BCI)模式中,P300拼写器以其可靠性和稳定性而备受关注。然而,P300拼写器的信息传输速率(ITR)较低。提出了一种基于Storm的P300拼字器实时分布式计算机制。该机制可以减少P300拼写器处理信号、构建特征向量和分类的时间,从而有助于提高P300拼写器的ITR。该机制基于Storm,包括脑电图数据分割策略、并行特征提取策略、并行分类策略和分类综合策略。实验表明,使用该机制的P300拼写算法的计算速度比不使用该机制的算法要快,并且该机制可以显著提高P300拼写算法的ITR。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A real-time distributed computing mechanism for P300 speller BCI
Among the diverse paradigms of Brain-Computer Interface (BCI), P300 Speller is underlined by its reliability and stability. However, the Information Transfer Rate (ITR) of P300 Speller is low. This paper proposes a real-time distributed computing mechanism based on Storm for P300 Speller. This mechanism can reduce the time of processing signals, building feature vectors and classifying them for P300 Speller, so that it could help improve the ITR of P300 Speller. This mechanism, built on Storm, includes electroencephalogram (EEG) data segmentation strategy, parallel feature extraction strategy, parallel classification strategy and classification synthesization strategy. The experiments showed that the algorithm for P300 Speller could be computed faster on this mechanism than it is done without this mechanism and ITR of P300 Speller could be improved significantly by this mechanism.
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