Self-Organizing Clustering by Growing-SOM for EEG-based Biometrics

Zurisaddai Sandoval-Lara, P. Gómez-Gil, J. Moreno-Rodríguez, M. Ramirez-Cortes
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Abstract

The use of electroencephalography (EEG) for bio-metric recognition, in particular for verification systems, has increased in the last years, due to some advantages that EEG signals present when used as signatures, as compared to other identifiers. In this paper we explore the use of unsupervised adaptive learning as a tool for enhancing the features representing each possible subject in a biometric system, in order to improve its performance. To do so, we designed three different frameworks based on Self Organizing Maps (SOM) neural networks, and compared their performance with a base model using no enhancement. Our experiments, using different input tasks and two combinations in the number of channels, with data obtained from two public EEG databases, showed that a SOM with Dynamic Structure (GSOM) obtained the best Equal Error Rate (EER). Such EER was 0.08 ± 0.04 when using as input the counting task of a public database provided by the University of Colorado, and an EER of 0.11 ± 0.04 was obtained for the rotation task in the same database. We also assessed our frameworks using the public database BIOMEXDB, provided by INAOE, where we also found that GSOM outperformed other state-of-the-art works.
基于生长som的脑电图生物识别自组织聚类
脑电图(EEG)用于生物识别,特别是用于验证系统,在过去几年中有所增加,因为与其他标识符相比,脑电图信号在用作签名时具有一些优势。在本文中,我们探讨了使用无监督自适应学习作为一种工具来增强生物识别系统中代表每个可能主题的特征,以提高其性能。为此,我们设计了三种不同的基于自组织映射(SOM)神经网络的框架,并将其与未增强的基本模型的性能进行了比较。在两个公开的脑电数据库中,采用不同的输入任务和两种通道数组合进行实验,结果表明,动态结构(GSOM)的等错误率(EER)最好。以美国科罗拉多大学提供的某公共数据库的计数任务作为输入时,其EER为0.08±0.04,以同一数据库的轮换任务作为输入时,其EER为0.11±0.04。我们还使用INAOE提供的公共数据库BIOMEXDB评估了我们的框架,在那里我们还发现GSOM优于其他最先进的作品。
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