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首页> 外文期刊>Frontiers in Neuroscience >“You Have Reached Your Destination”: A Single Trial EEG Classification Study
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“You Have Reached Your Destination”: A Single Trial EEG Classification Study

机译:“您已到达目的地”:单项试验EEG分类研究

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摘要

Studies have established that it is possible to differentiate between the brain's responses to observing correct and incorrect movements in navigation tasks. Furthermore, these classifications can be used as feedback for a learning-based BCI, to allow real or virtual robots to find quasi-optimal routes to a target. However, when navigating it is important not only to know we are moving in the right direction toward a target, but also to know when we have reached it. We asked participants to observe a virtual robot performing a 1-dimensional navigation task. We recorded EEG and then performed neurophysiological analysis on the responses to two classes of correct movements: those that moved closer to the target but did not reach it, and those that did reach the target. Further, we used a stepwise linear classifier on time-domain features to differentiate the classes on a single-trial basis. A second data set was also used to further test this single-trial classification. We found that the amplitude of the P300 was significantly greater in cases where the movement reached the target. Interestingly, we were able to classify the EEG signals evoked when observing the two classes of correct movements against each other with mean overall accuracy of 66.5 and 68.0% for the two data sets, with greater than chance levels of accuracy achieved for all participants. As a proof of concept, we have shown that it is possible to classify the EEG responses in observing these different correct movements against each other using single-trial EEG. This could be used as part of a learning-based BCI and opens a new door toward a more autonomous BCI navigation system.
机译:研究已经确定,可以区分大脑的响应,以观察导航任务中的正确和不正确的运动。此外,这些分类可以用作基于学习的BCI的反馈,以允许真实或虚拟机器人找到对目标的准优次路由。然而,当导航时,不仅要知道我们正在向目标朝着目标移动,而且知道我们何时到达它。我们要求参与者观察执行1维导航任务的虚拟机器人。我们记录了脑电图,然后对两类正确运动的回应进行了神经生理学分析:那些靠近目标但没有达到的人,以及那些达到目标的人。此外,我们在时域特征上使用了逐步线性分类器,以在单一试验的基础上区分类。第二数据集还用于进一步测试此单次试验分类。我们发现,在运动到达目标的情况下,P300的幅度显着更大。有趣的是,我们能够将eg信号分类在观察两类正确运动的eeg信号,其两个数据集的平均总精度为66.5和68.0%,大于所有参与者所取得的准确度的机会。作为概念的证据,我们已经表明,可以使用单次试用eeg对彼此相互抗衡的eeg响应来分类。这可以用作基于学习的BCI的一部分,并为更自主BCI导航系统打开新的门。

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