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Detecting and comparing the onset of self-paced and cue-based finger movements from EEG signals

机译:从EEG信号中检测并比较自定律和基于提示的手指运动的发作

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We asked four subjects to perform the task of pressing a taster button with their thumbs, while their EEG recordings were obtained, in order to determine the probability of the subjects' intention to make the movement in comparison to the idle state. Humans usually spontaneously decide when to initiate movements to complete daily-life tasks, but sometimes our movements can also be externally triggered. Thus, the subjects first performed motor tasks at the instants defined by the animation shown on the screen and second, the subjects performed self-initiated movements. In this paper, we study if there is a difference in the classification results and coherence measures of EEG signals in these two paradigms. We used the Support Vector Machine (SVM) classifier on features extracted by applying Burg's algorithm to EEG signals, which arose as a solution with high accuracy.
机译:我们要求四名受试者在获得他们的EEG记录的同时用拇指执行品尝器按钮的任务,以便确定受试者与闲置状态相比做出运动的意图的可能性。人们通常会自发地决定何时开始运动以完成日常生活任务,但是有时我们的运动也可以从外部触发。因此,受试者首先在屏幕上显示的动画所定义的瞬间执行运动任务,其次,受试者进行自发的运动。在本文中,我们研究了这两种范式中EEG信号的分类结果和相干性度量是否存在差异。我们将支持向量机(SVM)分类器用于通过将Burg算法应用于EEG信号而提取的特征,这是一种高精度的解决方案。

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