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Affective EEG-Based Person Identification Using the Deep Learning Approach

机译:基于情感的EEG的人识别使用深度学习方法

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Electroencephalography (EEG) is another method for performing person identification (PI). Due to the nature of the EEG signals, EEG-based PI is typically done while a person is performing a mental task such as motor control. However, few studies used EEG-based PI while the person is in different mental states (affective EEG). The aim of this paper is to improve the performance of affective EEG-based PI using a deep learning (DL) approach. We proposed a cascade of DL using a combination of convolutional neural networks (CNNs) and recurrent neural networks (RNNs). CNNs are used to handle the spatial information from the EEG while RNNs extract the temporal information. We evaluated two types of RNNs, namely long short-term memory (LSTM) and gated recurrent unit (GRU). The proposed method is evaluated on the state-of-the-art affective data set DEAP. The results indicate that CNN-GRU and CNN-LSTM can perform PI from different affective states and reach up to 99.90%-100% mean correct recognition rate. This significantly outperformed a support vector machine baseline system that used power spectral density features. Notably, the 100% mean CRR came from 32 subjects in DEAP data set. Even after the reduction of the number of EEG electrodes from 32 to 5 for more practical applications, the model could still maintain an optimal result obtained from the frontal region, reaching up to 99.17%. Amongst the two DL models, we found that CNN-GRU and CNN-LSTM performed similarly while CNN-GRU expended faster training time. In conclusion, the studied DL approaches overcame the influence of affective states in EEG-Based PI reported in the previous works.
机译:脑电图(EEG)是用于执行人识别(PI)的另一种方法。由于EEG信号的性质,通常在人次执行诸如电动机控制的精神任务的同时完成基于EEG的PI。然而,很少有研究使用基于EEG的PI,而该人在不同的心理状态(情感脑电图)。本文的目的是利用深度学习(DL)方法来提高基于情感EEG的PI的性能。我们使用卷积神经网络(CNNS)和经常性神经网络(RNN)的组合提出了一种级联DL。 CNNS用于处理来自EEG的空间信息,而RNN提取时间信息。我们评估了两种类型的RNN,即长的短期记忆(LSTM)和门控复发单元(GRU)。在最先进的情感数据集Deap上评估所提出的方法。结果表明,CNN-GRU和CNN-LSTM可以从不同情感状态进行PI,达到高达99.90%-100%的均值正确识别率。这显着优化了使用功率谱密度特征的支持向量机基线系统。值得注意的是,100%平均CRR来自DEAP数据集中的32个科目。即使在32比5的eEG电极的数量减少到更实际应用后,该模型仍然可以保持从额定区域获得的最佳结果,达到高达99.17%。在两个DL模型中,我们发现CNN-GRU和CNN-LSTM同样地执行,而CNN-GRU消耗更快的训练时间。总之,研究的DL方法克服了在以前的作品中报告的脑电图的基于EEG的PI中的情感状态的影响。

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