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Non-linear EEG features for odor pleasantness recognition

机译:非线性EEG特征对于气味愉快识别

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Since olfactory sense is gaining ground in multimedia applications, it is important to understand the way odor pleasantness is perceived. Although several studies have explored the way odor pleasantness perception influences the power spectral density of the electroencephalography (EEG) in various brain regions, there are still no studies that investigate the way odor pleasantness perception affects the non-linear temporal variations of EEG. In this study two non-linear metrics are used, namely permutation entropy, and dimension of minimal covers, to explore the possibility of recognizing odor pleasantness perception from the non-linear properties of EEG signals. The results reveal that it is possible to discriminate between pleasant and unpleasant odors from the EEG nonlinear properties, using a Linear Discriminant Analysis classifier with cross-validation.
机译:由于嗅觉在多媒体应用中获得了地面,因此了解令人遗憾的方式感到困扰。虽然几项研究已经探索了气味愉快感知的方式影响各种脑区中的脑电图(脑电图)的功率谱密度,但仍然没有研究异味愉快感知的影响影响脑电图的非线性时间变化。在本研究中,使用了两个非线性度量,即置换熵和最小覆盖的尺寸,以探讨识别来自EEG信号的非线性特性的气味乐趣感知的可能性。结果表明,可以使用具有交叉验证的线性判别分析分类器来区分来自EEG非线性性质的令人愉悦和令人难度的气味。

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