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Log power representation of EEG spectral bands for the recognition of emotional states of mind

机译:EEG谱带的对数幂表示,用于识别情绪的心理状态

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We present a new computational technique for obtaining effective spectral feature metrics from EEG data for the recognition of emotional states of mind. Sequences of 256 channel EEG data captured by applying appropriate stimuli patterns are analyzed to establish the spatiotemporal relationships of the signals for different emotional states. The signal sequence in each channel of the EEG data is decomposed into five specific spectral bands (delta, theta, alpha, beta and gamma bands) by a series of discrete wavelet transformations. Logarithmic compression of the spectral power values for each frequency band creates an effective set of features to represent different emotional states. The EEG data is preprocessed using a band-pass filter to remove frequency outliers, a notch filter to eliminate 60Hz line noise, and a surface Laplacian montage to reduce the effect of ocular artifacts. EEG data of five subjects for five different emotions were recorded by our dense array data acquisition system (Geodesic EEG System 300 from EGI, Inc.) with visual stimuli patterns from the International Affective Picture System. A trained multi-layer perceptron network based classifier is used to categorize the extracted feature sets to the respective emotional states of mind. It is experimentally observed that the new set of features could achieve 94.27% average recognition rate across five different emotions, which is a significant improvement over other state of the art feature representation methods.
机译:我们提出了一种新的计算技术,可从EEG数据获得有效的频谱特征量度,以识别情绪的心理状态。分析通过应用适当的刺激模式捕获的256通道EEG数据的序列,以建立不同情绪状态下信号的时空关系。通过一系列离散小波变换,将EEG数据的每个通道中的信号序列分解为五个特定的光谱带(δ,θ,α,β和γ谱带)。每个频带的频谱功率值的对数压缩会创建一组有效的特征,以表示不同的情绪状态。使用带通滤波器消除频率离群值,陷波滤波器消除60Hz线路噪声以及表面拉普拉斯蒙太奇图像以减少眼部伪影的影响,对EEG数据进行预处理。我们的密集阵列数据采集系统(来自EGI,Inc.的Geodesic EEG System 300)以国际情感图片系统的视觉刺激模式记录了五种受试者针对五种不同情感的脑电数据。基于训练的多层感知器网络的分类器用于将提取的特征集分类为各自的情绪状态。实验观察到,新的特征集可以在五种不同的情感上达到94.27%的平均识别率,这是对其他现有特征表示方法的重大改进。

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