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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Selecting features for BCI control based on a covert spatial attention paradigm.
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Selecting features for BCI control based on a covert spatial attention paradigm.

机译:基于隐式空间注意范式为BCI控制选择特征。

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摘要

Covert attention to spatial locations in the visual field is a relatively new control signal for brain-computer interfaces. Previous EEG research has shown that trials can be classified by thresholding based on left and right hemisphere alpha power in covert spatial attention paradigms. We reexamine the covert attention paradigm based on MEG measurements for fifteen subjects. It is shown that classification performance can be improved by applying sparse logistic regression in order to select a subset of the sensors specific to each subject as the basis for classification. Furthermore, insight is gained into how classification performance changes as a function of the length of the attention period and as a function of the number of trials. Classification performance steadily increases as the length of the attention period over which is averaged is increased, although this does not necessarily translate into higher bit rates. Good classification performance using early components of the attention period may be related to evoked response. With regard to the number of used trials, classification performance became maximal after 150 samples had been obtained, requiring a training time of approximately eleven minutes under the current experimental paradigm.
机译:隐蔽地关注视野中的空间位置是用于脑机接口的相对较新的控制信号。先前的EEG研究表明,可以在隐蔽的空间注意范式中根据左半球和右半球的alpha功率,通过阈值化对试验进行分类。我们基于15个人的MEG测量,重新审查了秘密注意范例。结果表明,通过应用稀疏逻辑回归可以提高分类性能,以选择特定于每个对象的传感器子集作为分类的基础。此外,获得了关于分类性能如何根据关注期长度和试验次数变化的见解。分类性能随着平均注意力周期的增加而稳定增加,尽管这不一定转化为更高的比特率。使用注意力期的早期组成部分的良好分类性能可能与诱发反应有关。关于使用的试验的数量,在获得150个样本后,分类性能达到了最大值,在当前的实验范式下,大约需要11分钟的训练时间。

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