Experimental results on multi-modal fusion of EEG-based personal verification algorithms

M. Garau, M. Fraschini, Luca Didaci, G. Marcialis
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引用次数: 14

Abstract

Recently, the use of brain activity as biometric trait for automatic users recognition has been investigated. EEG (Electroencephalography) signal is more often used in the medical field for diagnostic purposes. However, early EEG studies adopted similar signal properties and processing tools to study individual distinctive characteristics. As a matter of fact, features related mostly to a single region of the scalp were used, thus losing information on possible links among brain areas. In this work we approached the investigation of the EEG signal as possible biometric by focusing on two recent methods based on functional connectivity, which, in contrast with previous approaches, tend to estimate the complex interactions between EEG signals by measuring the time-series statistical interdependence. Thanks to their potential complementary, we explored their fusion by feature-level and match score-level approaches. Experimental results have shown a performance improvement with respect to that of the individual systems.
基于脑电图的多模态融合个人验证算法实验结果
近年来,利用脑活动作为生物特征特征进行用户自动识别的研究日益深入。脑电图(EEG)信号更常用于医学领域的诊断目的。然而,早期的脑电图研究采用类似的信号特性和处理工具来研究个体的显著特征。事实上,研究人员使用的是与头皮单一区域相关的特征,因此失去了大脑区域之间可能联系的信息。在这项工作中,我们通过关注两种基于功能连通性的最新方法,将脑电图信号作为可能的生物特征进行研究。与以往的方法相比,这两种方法倾向于通过测量时间序列统计相互依赖性来估计脑电图信号之间的复杂相互作用。由于它们具有潜在的互补性,我们通过特征级和匹配分数级方法探索了它们的融合。实验结果表明,相对于单个系统而言,该系统的性能有所提高。
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