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A symbolic representation approach of EEG signals for emotion recognition

机译:用于情感识别的EEG信号的符号表示方法

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Emotion recognition based on electroencephalogram (EEG) signals provides a direct access to inner state of a user, which is considered an important factor in Human-Machine-Interaction (HMI). Traditional feature extraction methods for EEG signals always suffer from high dimension and unsatisfactory interpretability. In this paper, we propose a novel symbolic representation approach of EEG signals for emotion recognition. By applying the Symbolic Aggregate approXimation(SAX) algorithm, the continuous EEG signals are represented as discrete symbol strings. The bag of words model and Latent Semantic Indexing algorithm are then performed to extract and select the word features from the symbolic strings as the discriminative features in a Support Vector Machine based classifier for emotion classification. The evaluations on DEAP dataset show that our proposed approach outperforms the three typical methods stably. Meanwhile, the symbolic representation is shown helpful to improve the interpretability of similar EEG signals. The more important issue is that this approach brings a new way to represent the EEG signal. It is helpful to introduce the natural language processing techniques to EEG signal analysis and classification research.
机译:基于脑电图(EEG)信号的情感识别可直接访问用户的内部状态,这被认为是人机交互(HMI)的重要因素。 EEG信号的传统特征提取方法始终存在高维和难以令人满意的解释性的问题。在本文中,我们提出了一种新颖的脑电信号符号表示方法,用于情感识别。通过应用符号集合近似(SAX)算法,连续的EEG信号表示为离散的符号字符串。然后在基于支持向量机的情感分类器中,执行词袋模型和潜在语义索引算法以从符号字符串中提取并选择词特征作为判别特征。对DEAP数据集的评估表明,我们提出的方法稳定地优于三种典型方法。同时,显示了符号表示,有助于提高类似EEG信号的可解释性。更为重要的问题是,这种方法带来了一种新的方式来表示EEG信号。将自然语言处理技术引入脑电信号分析和分类研究是有帮助的。

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