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Emotion Recognition From EEG Using Higher Order Crossings

机译:使用高阶交叉从EEG进行情绪识别

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Electroencephalogram (EEG)-based emotion recognition is a relatively new field in the affective computing area with challenging issues regarding the induction of the emotional states and the extraction of the features in order to achieve optimum classification performance. In this paper, a novel emotion evocation and EEG-based feature extraction technique is presented. In particular, the mirror neuron system concept was adapted to efficiently foster emotion induction by the process of imitation. In addition, higher order crossings (HOC) analysis was employed for the feature extraction scheme and a robust classification method, namely HOC-emotion classifier (HOC-EC), was implemented testing four different classifiers [quadratic discriminant analysis (QDA), k-nearest neighbor, Mahalanobis distance, and support vector machines (SVMs)], in order to accomplish efficient emotion recognition. Through a series of facial expression image projection, EEG data have been collected by 16 healthy subjects using only 3 EEG channels, namely Fp1, Fp2, and a bipolar channel of F3 and F4 positions according to 10-20 system. Two scenarios were examined using EEG data from a single-channel and from combined-channels, respectively. Compared with other feature extraction methods, HOC-EC appears to outperform them, achieving a 62.3% (using QDA) and 83.33% (using SVM) classification accuracy for the single-channel and combined-channel cases, respectively, differentiating among the six basic emotions, i.e., happiness , surprise, anger, fear, disgust, and sadness. As the emotion class-set reduces its dimension, the HOC-EC converges toward maximum classification rate (100% for five or less emotions), justifying the efficiency of the proposed approach. This could facilitate the integration of HOC-EC in human machine interfaces, such as pervasive healthcare systems, enhancing their affective character and providing information about the user's emotional status (e.g., identifying user's emotion-n experiences, recurring affective states, time-dependent emotional trends).
机译:基于脑电图(EEG)的情感识别在情感计算领域是一个相对较新的领域,在情感状态的诱导和特征的提取以实现最佳分类性能方面存在挑战性问题。本文提出了一种新颖的基于情感和脑电的特征提取技术。尤其是,镜像神经元系统的概念适用于通过模仿过程有效地促进情绪诱导。此外,特征提取方案采用了高阶交叉(HOC)分析,并通过测试四个不同的分类器来实现鲁棒的分类方法,即HOC-情感分类器(HOC-EC)[二次判别分析(QDA),k-最近邻,马氏距离和支持向量机(SVM)],以完成有效的情感识别。通过一系列的面部表情图像投影,根据10-20系统,仅16个健康受试者使用3个EEG通道(即Fp1,Fp2和F3和F4位置的双极通道)收集了EEG数据。使用来自单通道和组合通道的EEG数据分别检查了两种情况。与其他特征提取方法相比,HOC-EC的表现似乎更好,在单通道和组合通道情况下,分别达到62.3%(使用QDA)和83.33%(使用SVM)的分类精度,在六个基本特征之间有所区别情绪,即幸福,惊奇,愤怒,恐惧,厌恶和悲伤。随着情感分类集的缩小,HOC-EC趋向于最大分类率(五种或更少的情感为100%),证明了该方法的有效性。这可以促进将HOC-EC集成到诸如普及型医疗保健系统之类的人机界面中,增强其情感特征并提供有关用户情感状态的信息(例如,识别用户的情感-n体验,反复出现的情感状态,与时间有关的情感趋势)。

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