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Brain-computer interface speller using hybrid P300 and motor imagery signals

机译:使用混合P300和运动图像信号的脑机接口拼写器

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In this paper we propose a fast brain computer interface speller based on electroencephalography (EEG). The slow performance of conventional BCI spellers is overcome by combining the fast motor evoked potentials (MEPs) with the accuracy of P300 event related potentials. The μ rhythms associated with motor imagery are extracted using morlet wavalet based time-frequency analysis. Selected features were subsequently classified using minimum Mahalanobis distance. A hybrid MEP-P300 algorithm incorporating text prediction was proposed and experiments were conducted to gauge its accuracy and speed. Results show significantly faster performance when compared with conventional P300 spellers while comparable, but reduced accuracy was also noted.
机译:在本文中,我们提出了一种基于脑电图(EEG)的快速大脑计算机接口拼写器。通过将快速的电机诱发电位(MEP)与P300事件相关电位的准确性相结合,可以克服常规BCI拼写器的慢速性能。使用基于Morlet Wavalet的时频分析提取与运动图像相关的μ节律。随后使用最小马氏距离对选定的特征进行分类。提出了一种结合文本预测的混合式MEP-P300算法,并进行了实验以评估其准确性和速度。与传统的P300拼写器相比,结果显示出明显更快的性能,但可比较,但精度也有所降低。

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