Conceptual Neuroadaptive Brain-Computer Interface utilizing Event-related Desynchronization

Brian Luu, Bradley Hansberger, T. Tothong, K. George
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Abstract

This paper presents evidence for the possibility of a neuroadaptive system, based on electroencephalography (EEG) readings from the motor cortex region, to predict an individual's actions before the onset of motion. Testing for the neuroadaptive system utilized a G.nautilus headset, MATLAB with the EEGLAB toolbox, and a computer with the Processing IDE. Code from the Processing IDE provides an image slideshow which displays faces of various individuals so that the subject presses a keyboard key on a certain image. Three subjects were tested for 60 trials each, 30 trials where the keyboard key was pressed, and 30 trials where they were not, to gather enough data to train and test a classifier by using a machine learning algorithm. Machine learning assessed classification accuracy initially using 10 training trials and increased the training set by 10 trials each time to reassess accuracy until a total of 40 training trials were used. A set of 20 trials were used to assess accuracy without and with machine learning. Additionally, theoretical accuracy was computed by removing unfeasible machine learning features to assess the potential accuracy in a real-time system. The results provided an average accuracy of 52% without machine learning and an average accuracy ranging from 91.66% to 96.66% using the K-Nearest Neighbors(KNN) algorithm. The average theoretical accuracy ranged from to be 60% to 68.33%.
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利用事件相关去同步的概念神经自适应脑机接口
这篇论文提出了一个神经适应系统的可能性的证据,基于脑电图(EEG)读数从运动皮层区域,预测一个人的行动开始之前的运动。神经自适应系统的测试使用了g.s nautilus耳机、带有EEGLAB工具箱的MATLAB和带有Processing IDE的计算机。来自Processing IDE的代码提供了一个图像幻灯片,其中显示了不同个人的面孔,以便受试者按下某个图像上的键盘键。三名受试者分别接受了60次测试,其中30次是按下键盘键,30次是不按键盘键,以收集足够的数据,通过使用机器学习算法来训练和测试分类器。机器学习最初使用10个训练试验来评估分类准确性,然后每次将训练集增加10个试验来重新评估准确性,直到总共使用40个训练试验。一组20个试验用于评估不使用机器学习和使用机器学习的准确性。此外,通过去除不可行的机器学习特征来计算理论精度,以评估实时系统中的潜在精度。在没有机器学习的情况下,平均准确率为52%,使用k -最近邻(KNN)算法的平均准确率为91.66%至96.66%。平均理论精度为60% ~ 68.33%。
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