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EEG-Based Multi-Modal Emotion Recognition using Bag of Deep Features: An Optimal Feature Selection Approach

机译:基于深度特征袋的基于脑电图的多模态情绪识别:一种最优特征选择方法

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摘要

Much attention has been paid to the recognition of human emotions with the help of electroencephalogram (EEG) signals based on machine learning technology. Recognizing emotions is a challenging task due to the non-linear property of the EEG signal. This paper presents an advanced signal processing method using the deep neural network (DNN) for emotion recognition based on EEG signals. The spectral and temporal components of the raw EEG signal are first retained in the 2D Spectrogram before the extraction of features. The pre-trained AlexNet model is used to extract the raw features from the 2D Spectrogram for each channel. To reduce the feature dimensionality, spatial, and temporal based, bag of deep features (BoDF) model is proposed. A series of vocabularies consisting of 10 cluster centers of each class is calculated using the k-means cluster algorithm. Lastly, the emotion of each subject is represented using the histogram of the vocabulary set collected from the raw-feature of a single channel. Features extracted from the proposed BoDF model have considerably smaller dimensions. The proposed model achieves better classification accuracy compared to the recently reported work when validated on SJTU SEED and DEAP data sets. For optimal classification performance, we use a support vector machine (SVM) and k-nearest neighbor (k-NN) to classify the extracted features for the different emotional states of the two data sets. The BoDF model achieves 93.8% accuracy in the SEED data set and 77.4% accuracy in the DEAP data set, which is more accurate compared to other state-of-the-art methods of human emotion recognition.
机译:在基于机器学习技术的脑电图(EEG)信号的帮助下,人们对人的情绪的识别已经引起了广泛关注。由于EEG信号具有非线性特性,因此识别情绪是一项艰巨的任务。本文提出了一种先进的信号处理方法,该方法使用深度神经网络(DNN)进行基于EEG信号的情绪识别。在提取特征之前,原始EEG信号的频谱和时间分量首先保留在2D频谱图中。预训练的AlexNet模型用于为每个通道从2D频谱图中提取原始特征。为了减少基于特征的维数,时空和时间,提出了深度特征袋(BoDF)模型。使用k均值聚类算法计算出由每个类别的10个聚类中心组成的一系列词汇。最后,使用从单个通道的原始特征收集的词汇集的直方图表示每个主题的情感。从建议的BoDF模型中提取的特征的尺寸要小得多。与最近报告的工作相比,在SJTU SEED和DEAP数据集上进行验证时,所提出的模型具有更好的分类准确性。为了获得最佳分类性能,我们使用支持向量机(SVM)和k最近邻(k-NN)对两个数据集的不同情感状态的提取特征进行分类。 BoDF模型在SEED数据集中的准确度达到93.8%,在DEAP数据集中的准确度为77.4%,这比其他最新的人类情感识别方法更准确。

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