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Unsupervised processing methods for motor imagery-based brain-computer interface

机译:基于运动图像的脑机接口的无监督处理方法

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Brain-computer interface (BCI) research is speedily growing and numerous innovative techniques are proposed for implementing BCI. One of the major drawbacks in BCI's application is the problem of searching out a response from one trial. Hence, many trials are performed for every element so as to decrease the error in prediction. This led to a long time before accurately predicting the user intent and intensive user training is needed. The objective of this paper is to investigate a new technique to process the signal from brain in a real time without any prior training. The new approach is applied to experimental data for motor imagery-based BCI and is compared to the classification results of the same data using the conventional processing techniques requiring prior calibration. Different classification methodologies were used as in time and frequency domain. It is concluded that wavelet transform get best performance reaches 82.14%. Therefore, these promising results recommend that this approach can reach accuracies not extremely far from those got with training.
机译:脑机接口(BCI)研究正在迅速发展,并且提出了许多创新技术来实施BCI。 BCI应用程序的主要缺点之一是要从一项试验中寻找答案。因此,对每个元素进行了许多试验,以减少预测误差。这导致需要很长时间才能准确预测用户意图,因此需要进行大量的用户培训。本文的目的是研究一种无需事先培训即可实时处理来自大脑的信号的新技术。将该新方法应用于基于运动图像的BCI的实验数据,并使用需要事先校准的常规处理技术将其与相同数据的分类结果进行比较。在时域和频域中使用了不同的分类方法。结论表明,小波变换的最佳性能达到82.14%。因此,这些有希望的结果表明,这种方法所能达到的精度与经过培训的人相差无几。

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