Abstract

The electroencephalogram (EEG) signal represents a subject’s specific brain activity patterns and is considered as an ideal biometric given its superior forgery prevention. However, the accuracy and stability of the current EEG-based person authentication systems are still unsatisfactory in practical application. In this paper, a multi-task EEG-based person authentication system combining eye blinking is proposed, which can achieve high precision and robustness. Firstly, we design a novel EEG-based biometric evoked paradigm using self- or non-self-face rapid serial visual presentation (RSVP). The designed paradigm could obtain a distinct and stable biometric trait from EEG with a lower time cost. Secondly, the event-related potential (ERP) features and morphological features are extracted from EEG signals and eye blinking signals, respectively. Thirdly, convolutional neural network and back propagation neural network are severally designed to gain the score estimation of EEG features and eye blinking features. Finally, a score fusion technology based on least square method is proposed to get the final estimation score. The performance of multi-task authentication system is improved significantly compared to the system using EEG only, with an increasing average accuracy from 92.4% to 97.6%. Moreover, open-set authentication tests for additional imposters and permanence tests for users are conducted to simulate the practical scenarios, which have never been employed in previous EEG-based person authentication systems. A mean false accepted rate (FAR) of 3.90% and a mean false rejected rate (FRR) of 3.87% are accomplished in open-set authentication tests and permanence tests, respectively, which illustrate the open-set authentication and permanence capability of our systems.

Highlights

  • With the development of non-invasive brain-computer interfaces (BCIs), electroencephalograms (EEGs) have become a hotspot in many research fields because of their high time resolution, portability and relatively low cost [1]

  • We firstly propose a novel experimental paradigm using self- or non-self-face images that are organized by rapid serial visual presentation (RSVP) [18]

  • N250, which is a main event-related potential (ERP) component related to face stimulus according to previous EEG

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Summary

Introduction

With the development of non-invasive brain-computer interfaces (BCIs), electroencephalograms (EEGs) have become a hotspot in many research fields because of their high time resolution, portability and relatively low cost [1]. One of the research topics is the use of EEGs as a biometric trait. Traditional biometric traits, such as faces [2], fingerprints [3], voiceprints [4], and irises [5], have a high degree of discrimination and are widely used. Most of these traits are easy to steal and forge given their exposure to the external world. EEGs can be a novel biometric trait because an individual’s neural activity pattern is unique [7] and imitating one’s mind is impossible [8]

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