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Instrumentation for Motor Imagery-based Brain Computer Interfaces relying on dry electrodes: a functional analysis

机译:基于电动机的脑电脑接口仪器依赖干电极:功能分析

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The functional analysis of a novel instrumentation for Brain-Computer Interfaces (BCI) is carried out. This consists of a wireless wearable helmet with only 8 dry electrodes. The brain signals to be measured through an electroencephalography are related to the sensorimotor cortex. The final aim is to distinguish between different motor imagery tasks. Furthermore, this analysis also takes into account the discrimination between two executed movements. Features are extracted from the brain signals by means of a Common Spatial Pattern algorithm. Then, two different classifiers are employed to process the brain signals, namely the Random Forest, and the Support Vector Machine with Gaussian kernel. Their performance was compared in terms of classification accuracy and the best accuracy resulted equal to about 80% when distinguishing between left and right imagined movement, classified by means of the Random Forest. The results of this study aim at giving a contribution to the building of wearable BCIs for daily life applications.
机译:进行了对脑电脑接口(BCI)进行新颖仪器的功能分析。这包括一个只有8个干电极的无线可穿戴头盔。通过脑电图测量的脑信号与传感器皮质有关。最终目标是区分不同的电动机图像任务。此外,该分析还考虑了两个执行的运动之间的歧视。通过公共空间模式算法从脑信号中提取特征。然后,采用两种不同的分类器来处理大脑信号,即随机森林,以及带高斯内核的支持向量机。在分类精度方面比较它们的性能,并且在区分左右想象的运动之间的最佳精度等于约为80%,通过随机森林分类。本研究的结果旨在为日常生活应用提供对可穿戴BCI的建设的贡献。

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