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Analysis of Sound Imagery in EEG with a Convolutional Neural Network and an Input-perturbation Network Prediction Technique

机译:卷积神经网络和输入扰动网络预测技术在脑电图中的声像分析

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Sound imagery has been studied in past decades with techniques such as fMRI, PET, MEG, or tDCS. However, sound imagery phenomenon in EEG signal has not been widely studied. Use of deep learning in EEG applications is increasing in popularity due to the ability to learn EEG data without rich data pre-processing. In contrast to typical classification models, with the input -perturbation network prediction technique used here, we visualized the learned features from the trained model in terms of the correlation between the change in input frequency and the change in network prediction to better understand the features the model used for decision making. In this study, we recorded EEG signals from three subjects who were asked to perform a sound imagery task. In the first phase, subjects were asked to listen to and remember a generated sound; in the second phase, subjects were asked to imagine a sound of the same pitch. One-fourth of trials had no sound generation; EEG signals were labeled with the no imagery class. EEG signals from the remaining trials were labeled with the sound imagery class for model training. The best accuracy of 71.41% was obtained by the shallow model for subject 1, and an average accuracy of 61.00% was achieved between subjects. The model’s decision to classify EEG data into the sound imagery class was based on decreases in the delta, theta, and low beta bands in the frontal lobe and corresponding increases in the in the right temporal lobe of the brain.
机译:在过去的几十年中,使用fMRI,PET,MEG或tDCS等技术对声音图像进行了研究。然而,脑电信号中的声像现象尚未得到广泛研究。由于无需进行丰富的数据预处理就可以学习EEG数据,因此在EEG应用程序中使用深度学习正变得越来越流行。与典型的分类模型相比,通过此处使用的输入扰动网络预测技术,我们根据输入频率变化与网络预测变化之间的相关性,将经过训练的模型中的学习特征可视化,以更好地了解特征用于决策的模型。在这项研究中,我们记录了三个被要求执行声音成像任务的受试者的脑电信号。在第一阶段,要求受试者听并记住所产生的声音。在第二阶段,要求受试者想象相同音高的声音。四分之一的试验没有声音产生。脑电信号标记为无图像类别。来自其余试验的EEG信号标记有声像类别以进行模型训练。浅层模型对受试者1的最佳准确度为71.41%,受试者之间的平均准确度为61.00%。该模型决定将EEG数据归类为声音图像类别,是基于额叶的δ,θ和低β谱带的减少以及大脑右颞叶的相应增加。

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