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Classification of prefrontal and motor cortex initial dips for fNIRS-based-BCI

机译:基于fNIRS的BCI的前额叶和运动皮层初始浸润的分类

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In this paper, we have classified the initial dips that are detected from the prefrontal and motor cortices using functional near-infrared spectroscopy (fNIRS) for brain-computer interface (BCI). The fNIRS data of mental arithmetic, mental counting, and right-hand finger tapping tasks are acquired from 5 healthy subjects. Vector phase analysis with a threshold circle (as a decision criterion) is used to detect the initial dips. Five different features including signal mean, signal slope, signal minimum value, kurtosis, and skewness in 0~1, 0~1.5, 0~2, and 0~2.5 sec windows are computed using oxyhemoglobin (HbO) signals. Linear discriminant analysis is used for the classification of the data. The average accuracy of 66.6% is obtained using signal mean and signal minimum value in 0~2.5 sec window. We used a conventional hemodynamic response to extract the signal mean and signal slope as features in 2~7 sec window for further validation of our results. LDA-based classification resulted in 73.2% accurate results for conventional hemodynamic response. The results seem significant for BCI using initial dip features.
机译:在本文中,我们使用功能性近红外光谱(fNIRS)用于人机界面(BCI),对从前额皮层和运动皮层中检测到的初始倾角进行了分类。从5名健康受试者中获得了fNIRS的心理算术,心理计数和右手敲击任务的fNIRS数据。使用带有阈值圆(作为决策标准)的矢量相位分析来检测初始骤降。使用氧合血红蛋白(HbO)信号可计算出5个不同的特征,包括0〜1、0〜1.5、0〜2和0〜2.5秒窗口中的信号平均值,信号斜率,信号最小值,峰度和偏度。线性判别分析用于数据分类。使用信号平均值和信号最小值(在0〜2.5秒窗口中)可获得66.6 \%的平均准确度。我们使用常规的血液动力学响应在2〜7秒的窗口中提取信号平均值和信号斜率作为特征,以进一步验证我们的结果。基于LDA的分类得出常规血液动力学反应的准确结果为73.2%。对于使用初始浸入功能的BCI而言,结果似乎意义重大。

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