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Applying Weightless Neural Networks to a P300-Based Brain-Computer Interface

机译:将无失重神经网络应用于基于P300的脑电电脑界面

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P300-based Brain Computer Interfaces (BCI) are one of the most used types of BCIs in the literature that make use of the electroencephalogram (EEG) signal to convey commands to the computer. The efficiency of such systems depends drastically on the ability of correctly identifying the P300 wave in the EEG signal. Due to high inter-subject and inter-session variability, single-subject classifiers must be trained every session. In order to achieve fast setup times of the system, only a few trials are available each session for training the classifier. In this scenario, the capacity to learn from few examples is crucial for the performance of the BCI and, therefore, the use of weightless neural networks (WNN) is promising. Despite its possible added value, there are no studies, to our knowledge, applying WNNs to P300 classification. Here we compare the performance of a WNN against the state-of-the-art algorithms when applied to a P300-based BCI for joint-attention training in autism. Our results show that the WNN performs as good as its competitors, outperforming them several times. We also perform an analysis of the WNN hyperparameters, showing that smaller memories achieve better results most of the times. This study demonstrates that the adoption of this type of classifiers might help increase the prediction accuracy of P300-based BCI systems, and should be a valid option for future studies to consider.
机译:基于P300的大脑电脑接口(BCI)是使用脑电图(EEG)信号来传达到计算机的脑电图(EEG)信号的文献中最使用类型的BCI之一。这种系统的效率急剧地取决于正确识别EEG信号中P300波的能力。由于高级间和会话间变异性,必须每次会话培训单个主题分类器。为了实现系统的快速设置时间,每个会话只有少量试验才能训练分类器。在这种情况下,从少数示例中学习的能力对于BCI的性能至关重要,因此,使用无失重神经网络(WNN)是有前途的。尽管有可能的附加值,但我们的知识没有研究,将WNN应用于P300分类。在这里,我们在应用于基于P300的BCI的基于P300的BCI中,我们将Wnn对现有算法的性能进行比较,以便在自闭症中进行关注培训。我们的研究结果表明,WNN执行与竞争对手一样好,优于它们多次。我们还对WNN超公数进行了分析,表明大部分时间都达到了更好的效果。本研究表明,采用这种类型的分类器可能有助于提高基于P300的BCI系统的预测准确性,并且应该是未来研究考虑的有效选择。

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