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Resting state EEG-based biometrics for individual identification using convolutional neural networks

机译:基于静止状态EEG的生物特征识别技术,使用卷积神经网络进行个人识别

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摘要

Biometrics is a growing field, which permits identification of individuals by means of unique physical features. Electroencephalography (EEG)-based biometrics utilizes the small intra-personal differences and large inter-personal differences between individuals' brainwave patterns. In the past, such methods have used features derived from manually-designed procedures for this purpose. Another possibility is to use convolutional neural networks (CNN) to automatically extract an individual's best and most unique neural features and conduct classification, using EEG data derived from both Resting State with Open Eyes (REO) and Resting State with Closed Eyes (REC). Results indicate that this CNN-based joint-optimized EEG-based Biometric System yields a high degree of accuracy of identification (88%) for 10-class classification. Furthermore, rich inter-personal difference can be found using a very low frequency band (0-2Hz). Additionally, results suggest that the temporal portions over which subjects can be individualized is less than 200 ms.
机译:生物识别技术是一个不断发展的领域,它可以通过独特的物理特征来识别个人。基于脑电图(EEG)的生物识别技术利用个人脑电波模式之间小的人际差异和大人际差异。过去,此类方法为此目的使用了从手动设计的过程派生的功能。另一种可能性是使用卷积神经网络(CNN)自动提取个人的最佳和最独特的神经特征并进行分类,同时使用源自睁眼静息状态(REO)和闭眼静息状态(REC)的EEG数据。结果表明,这种基于CNN的联合优化基于EEG的生物识别系统可对10类分类产生较高的识别准确性(88%)。此外,使用非常低的频带(0-2Hz)可以发现丰富的人际差异。另外,结果表明,可以个体化对象的时间部分少于200毫秒。

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