Aydemir Onder
Karadeniz Technical University, Department of Electrical and Electronics Engineering, 61080, Trabzon, Turkey
Neural Comput. 2017 Jun;29(6):1667-1680. doi: 10.1162/NECO_a_00966. Epub 2017 Apr 14.
There are various kinds of brain monitoring techniques, including local field potential, near-infrared spectroscopy, magnetic resonance imaging (MRI), positron emission tomography, functional MRI, electroencephalography (EEG), and magnetoencephalography. Among those techniques, EEG is the most widely used one due to its portability, low setup cost, and noninvasiveness. Apart from other advantages, EEG signals also help to evaluate the ability of the smelling organ. In such studies, EEG signals, which are recorded during smelling, are analyzed to determine the subject lacks any smelling ability or to measure the response of the brain. The main idea of this study is to show the emotional difference in EEG signals during perception of valerian, lotus flower, cheese, and rosewater odors by the EEG gamma wave. The proposed method was applied to the EEG signals, which were taken from five healthy subjects in the conditions of eyes open and eyes closed at the Swiss Federal Institute of Technology. In order to represent the signals, we extracted features from the gamma band of the EEG trials by continuous wavelet transform with the selection of Morlet as a wavelet function. Then the [Formula: see text]-nearest neighbor algorithm was implemented as the classifier for recognizing the EEG trials as valerian, lotus flower, cheese, and rosewater. We achieved an average classification accuracy rate of 87.50% with the 4.3 standard deviation value for the subjects in eyes-open condition and an average classification accuracy rate of 94.12% with the 2.9 standard deviation value for the subjects in eyes-closed condition. The results prove that the proposed continuous wavelet transform-based feature extraction method has great potential to classify the EEG signals recorded during smelling of the present odors. It has been also established that gamma-band activity of the brain is highly associated with olfaction.
有各种各样的脑监测技术,包括局部场电位、近红外光谱、磁共振成像(MRI)、正电子发射断层扫描、功能磁共振成像、脑电图(EEG)和脑磁图。在这些技术中,EEG因其便携性、低设置成本和非侵入性而被最广泛使用。除了其他优点外,EEG信号还有助于评估嗅觉器官的能力。在这类研究中,对嗅觉过程中记录的EEG信号进行分析,以确定受试者是否缺乏任何嗅觉能力或测量大脑的反应。本研究的主要目的是通过EEG伽马波展示在感知缬草、莲花、奶酪和玫瑰水气味期间EEG信号中的情绪差异。所提出的方法应用于在瑞士联邦理工学院从五名健康受试者在睁眼和闭眼条件下采集的EEG信号。为了表示这些信号,我们通过选择Morlet作为小波函数的连续小波变换从EEG试验的伽马波段提取特征。然后实施[公式:见原文]-最近邻算法作为分类器,以将EEG试验识别为缬草、莲花、奶酪和玫瑰水。对于睁眼条件下的受试者,我们实现了平均分类准确率为87.50%,标准差为4.3;对于闭眼条件下的受试者,平均分类准确率为94.12%,标准差为2.9。结果证明,所提出的基于连续小波变换的特征提取方法在对当前气味嗅觉过程中记录的EEG信号进行分类方面具有很大潜力。还证实大脑的伽马波段活动与嗅觉高度相关。