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Analysis of classification performance of fNIRS signals from prefrontal cortex using various temporal windows

机译:使用各种时间窗分析前额叶皮层fNIRS信号的分类性能

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In this paper we investigate the role of different temporal windows in classification of functional near-infrared spectroscopy (fNIRS) signals corresponding to mental arithmetic and mental counting for development of a brain-computer interface. Signals are acquired from the prefrontal cortex of four healthy subjects during mental arithmetic and mental counting tasks using a continuous-wave fNIRS system, DYNOT: Dynamic Near-Infrared Optical Tomography. Support vector machine is used to classify the mean values of the change in concentration of oxygenated and deoxygenated hemoglobin during different temporal windows. The highest average classification accuracy of 82.4% is achieved during the 2-7 s time window within the total 10 s task period. The averaged classification accuracies achieved using 0-5 s, 1-6 s and 5-10 s temporal windows are 61.6%, 67.4% and 72.5% respectively. These results indicate that using signal mean, calculated during 2-7 s time window, as the features results in higher classification accuracies.
机译:在本文中,我们研究了不同的时间窗在功能性近红外光谱(fNIRS)信号分类中的作用,这些信号对应于脑算术接口的心理算术和心理计数。使用连续波fNIRS系统DYNOT:动态近红外光学断层扫描,从四个健康受试者的前额叶皮层采集信号,进行心理算术和心理计数任务。使用支持向量机对不同时间窗内氧化和脱氧血红蛋白浓度变化的平均值进行分类。在整个10 s的任务期间内的2-7 s的时间窗口内,最高的平均分类精度达到82.4%。使用0-5 s,1-6 s和5-10 s的时间窗实现的平均分类准确度分别为61.6%,67.4%和72.5%。这些结果表明,使用信号均值(在2-7 s的时间窗口内计算),因为这些特征导致更高的分类精度。

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