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Using Convolutional Neural Networks for Identification Based on EEG Signals

机译:基于脑电信号的卷积神经网络识别

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Biometrics identification uses human biometric such as human faces, fingerprints, irises for authentication. Electroencephalograph (EEG) provides a detectable neuroelectrophysiological signal that could reflect psychological or behavioral characteristics. In the past, EEG -based biometrics were usually used with machine learning based procedure for identification. Recently Convolutional Neural Networks (CNN) was used as a new tool for biometric automatic feature exaction and classification. This paper aims at investigating CNN's performance on EEG -based human identification with the increase number of subjects. P300 -speller was introduced in this study to induce Event -related potential (ERP). 33 healthy subjects participated in the experiment. Result shows that the CNN -based Biometric System reached a high degree of accuracy (99.9%) after for 8 -class classification , 99.3% for 10 -class and 99.3% for 13 -class. Then, we made some finetuning to the network structure of the 10 -class and the 13 class classification, Then,we also improved the convergence speed of the network and reduced the time to get the best classification model by changing the structure of the CNN that we introduced here, while ensuring that the accuracy and the loss function did not change significantly. The finding indicts that CNN get good performance in EEG -based biometric identification.
机译:生物特征识别使用人类生物特征(例如人脸,指纹,虹膜)进行身份验证。脑电图(EEG)提供可反映神经或行为特征的可检测神经电生理信号。过去,基于EEG的生物识别技术通常与基于机器学习的过程一起使用来进行识别。最近,卷积神经网络(CNN)被用作生物特征自动特征提取和分类的新工具。本文旨在研究随着主体数量的增加,CNN在基于EEG的人类识别中的表现。在这项研究中引入了P300螺旋桨,以诱导事件相关电位(ERP)。 33名健康受试者参加了该实验。结果表明,基于CNN的生物特征识别系统在进行8级分类,10级分类为99.3%,13级分类为99.3%之后达到了较高的准确度(99.9%)。然后,我们对10类和13类分类的网络结构进行了微调,然后,通过改变CNN的结构,提高了网络的收敛速度,减少了获得最佳分类模型的时间。我们在这里介绍了该方法,同时确保精度和损失函数没有明显变化。该发现表明,CNN在基于EEG的生物特征识别中获得了良好的性能。

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