EEG Feature Extraction with Fast Fourier Transform for Investigating different Brain regions in Cognitive and Reasoning Activity

H. Amin, Y. Hafeez, M. F. Reza, Syed Hasan Adil, Rumaisa Abu Hasan, Syed Saad Azhar Ali
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Abstract

In this study, cortical brain activity during a pattern matching task (PMT) was measured by employing electroencephalography (EEG). The EEG data were recorded from 128 scalp locations during a pattern-matching task and in rest conditions (eyes open and eyes closed). Spectral Analysis of EEG frequency bands reflected a significant (p<0.025) difference between baseline and PMT task. The EEG activity in slow waves (delta: 0.5 to 3 Hz and theta: 4 to 7 Hz) was high during PMT in frontal regions, while EEG activity in fast waves (Beta: 14 to 20 Hz and Gamma: 21 to 30 Hz) was reduced in parietal and occipital regions as compared to the frontal region. The changes in EEG medium waves (alpha: 8 to 13 Hz) was high in frontal, central, and temporal regions, while depressed in parietal, parieto-occipital and occipital regions. The results show high cortical activations in different brain regions during solving pattern-matching task as compared to baseline resting conditions. The study has implications for thinking and decision-making situation, such as object recognition, visual comparison, and consumer choice.
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基于快速傅立叶变换的脑电特征提取研究脑区认知与推理活动
在这项研究中,采用脑电图(EEG)测量了模式匹配任务(PMT)期间的大脑皮层活动。在模式匹配任务期间和休息条件下(睁眼和闭眼)记录128个头皮位置的脑电图数据。脑电频谱分析显示基线与PMT任务之间存在显著差异(p<0.025)。在PMT期间,额叶区域的慢波(δ: 0.5 ~ 3hz和θ: 4 ~ 7hz)脑电活动较高,而顶叶和枕叶区域的快波(β: 14 ~ 20hz和γ: 21 ~ 30hz)脑电活动较额叶区域减少。脑电图中波(α: 8 ~ 13 Hz)在额叶区、中央区和颞叶区变化高,而在顶叶区、顶枕区和枕叶区变化低。结果显示,与基线休息条件相比,在解决模式匹配任务时,大脑不同区域的皮层激活程度较高。该研究对物体识别、视觉比较和消费者选择等思维和决策情境具有启示意义。
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