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Discrete Wavelet Transform Based Classification of Human Emotions Using Electroencephalogram Signals

机译:基于脑电信号的离散小波变换对人类情绪的分类

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Problem statement: The aim of this study was to report the human emotion assessment using Electroencephalogram (EEG). Approach: An audio-visual induction based protocol was designed for inducing five different emotions (happy, surprise, fear, disgust and neutral) on 20 subjects in the age group of 19-39 years. EEG signals are recorded from 64 channels placed over entire scalp according to International 10-10 system. We firstly applied Spatial Filtering technique to remove the noises and artifacts from the EEG signals. Three wavelet functions ("db8", "sym8" and "coif5") were used to decompose the EEG signal into five different frequency bands namely: delta, theta, alpha, beta and gamma. A set of new statistical features related to energy were extracted from the EEG frequency bands to construct the feature vector for classifying the emotions. Two simple linear classifiers (K Nearest Neighbor (KNN) and Linear Discriminant Analysis (LDA)) were used for mapping the feature vector into corresponding emotions. Furthermore, we compared the efficacy of emotion classification with a reduced set of channels (24 channels) for evaluating the reliability of the emotion recognition system. Results: In this study, 62 channels outperform 24 channels by giving the maximum average classification accuracy of 79.65% using KNN and 78.52% using LDA. Conclusion: In this study we presented an approach to discrete emotion recognition based on the processing of EEG signals. The preliminary results resented in this study address the classifiability of human emotions using original and reduced set of EEG channels. The results presented in this study indicated that, statistical features extracted from time-frequency analysis (wavelet transform) works well in the context of discrete emotion classification.
机译:问题陈述:这项研究的目的是报告使用脑电图(EEG)进行的人类情绪评估。方法:设计了基于视听归纳的协议,用于在19-39岁年龄段的20位受试者上诱导五种不同的情绪(快乐,惊讶,恐惧,厌恶和中立)。根据国际10-10系统,从放置在整个头皮上的64个通道记录EEG信号。我们首先应用了空间滤波技术来去除EEG信号中的噪声和伪影。使用三个小波函数(“ db8”,“ sym8”和“ coif5”)将EEG信号分解为五个不同的频带,即:δ,θ,α,β和γ。从EEG频带中提取了一组与能量有关的新统计特征,以构建用于分类情绪的特征向量。两个简单的线性分类器(K最近邻(KNN)和线性判别分析(LDA))用于将特征向量映射到相应的情绪中。此外,我们将情感分类的效果与减少的一组渠道(24个渠道)进行了比较,以评估情感识别系统的可靠性。结果:在这项研究中,通过使用KNN给出的最大平均分类准确度为79.65%,使用LDA给出的平均平均分类准确度为78.52%,62个通道的性能优于24个通道。结论:在这项研究中,我们提出了一种基于脑电信号处理的离散情感识别方法。这项研究中令人讨厌的初步结果使用原始和减少的一组EEG通道解决了人类情绪的可分类性。这项研究提出的结果表明,从时频分析(小波变换)提取的统计特征在离散情感分类的背景下效果很好。

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