A Lightweight Convolutional Neural Network for Personal Identification Based on Code-Modulated Visual-Evoked Potentials

Jing Li, Zhihua Huang
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引用次数: 1

Abstract

At present, personal identification based on code-modulated visual-evoked potentials is increasingly attracting people's attentions. Some convolutional neural networks (CNN) have been applied to recognize biomarkers based on code-modulated visual-evoked potentials (c-VEP) for personal identification. However, the ordinary CNNs encountered difficulties in grasping the basic characteristics of c-VEP to achieve a satisfactory performance. In this study, we proposed a lightweight convolutional neural network (LCNN) to recognize the c-VEP biomarkers in the tasks of personal identification. LCNN is composed of two parallel sub-nets, which correspond respectively to two profiles of a c-VEP sample and both include two blocks. The two blocks both contain a two-step convolutional sequence. The LCNN model is fitted by minimizing the categorical cross-entropy loss function. The goal of LCNN is to specifically handle the Electroencephalogram (EEG) data in the tasks of personal identification based on c-VEP. We recruited 20 subjects to participate in our personal identification experiments based on c-VEP. In the EEG dataset of the 20 subjects, LCNN reached the recognition accuracy of 99%. The result shows that the design of LCNN is suitable for recognizing the c-VEP biomarkers.
基于码调制视觉诱发电位的轻量级卷积神经网络
目前,基于码调制视觉诱发电位的身份识别越来越受到人们的关注。一些卷积神经网络(CNN)已被应用于基于编码调制视觉诱发电位(c-VEP)的生物标志物识别,用于个人识别。然而,普通cnn在掌握c-VEP的基本特征以获得满意的性能方面遇到了困难。在这项研究中,我们提出了一种轻量级卷积神经网络(LCNN)来识别个人识别任务中的c-VEP生物标志物。LCNN由两个并行子网组成,分别对应于c-VEP样本的两个剖面,并且都包含两个块。这两个块都包含一个两步卷积序列。通过最小化分类交叉熵损失函数来拟合LCNN模型。LCNN的目标是专门处理基于c-VEP的个人识别任务中的脑电图(EEG)数据。我们招募了20名受试者参与我们基于c-VEP的个人识别实验。在20个被试的脑电数据集中,LCNN的识别准确率达到99%。结果表明,LCNN的设计适合于c-VEP生物标志物的识别。
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