基于脑电图的生物特征认证研究综述

Isuru Jayarathne, Michael Cohen, Senaka Amarakeerthi
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引用次数: 28

摘要

基于脑电图(EEG)的用户认证系统目前很流行,标志着该领域的一个转折点。最近,科学界一直在进行巨大的尝试,以感知大脑信号模式的独特性。利用各种信号处理方法和模式识别算法,已经提出并实现了几种方法方法来分析脑电数据。尽管有许多刺激方法可以产生受试者之间的合理差异,但从技术经济学的角度来看,优化和降低任务复杂性仍然是可取的。随着近年来脑电信号捕获设备的技术进步,该过程变得相对简单,因为设备能够提供更好的便携性和减少校准时间。然而,最详细的分析表明,即使系统配备了最先进的硬件,也应该选择最少数量的最合适的通道以获得更好的结果。研究人员现在正专注于实现计算成本低、精度高的系统,而不考虑任务的复杂性。本文回顾了几种方法,概述了处理脑电图数据的关键设计考虑因素,以提高准确性和实际应用于身份验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Survey of EEG-based biometric authentication
User authentication systems based on EEG (electroencephalography) is currently popular, marking an inflection point in the field. Recently, the scientific community has been making tremendous attempts towards perceiving uniqueness of brain signal patterns. Several types of methodical approaches have been proposed and prototyped to analyze EEG data with various signal-processing methods and pattern-recognition algorithms. Even though there are many stimulation methods to produce reasonable distinctiveness between subjects, optimization and lowering task complexity are still desirable from technoeconomic points of view. With recent technological advancement of EEG signal capturing devices, the process is getting comparatively simpler as devices are capable of providing better portability with reduced calibration time. However, most detailed analysis suggests that a minimal number of most appropriate channels should be selected for better results, even if a system is equipped with the most advanced hardware. Researchers are now focusing on implementing computationally low cost systems with better accuracy, regardless of complexity of the tasks. This paper is a review of several approaches, providing an overview of crucial design considerations in handling EEG data for extended accuracy and practical applicability to authentication.
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