基于脑电图的生物识别:一种实时分类方法

A. Lourenço, H. Silva, A. Fred
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引用次数: 46

摘要

行为生物识别技术是生物信号研究界日益关注的领域之一。该领域最近的一个趋势是基于心电图的生物识别技术,其中心电图(ECG)信号被用作生物识别系统的输入。以前的工作表明,这是一个有希望的特点,由于其内在特点,有可能作为其他现有的和已经比较确定的模式的良好补充。在本文中,我们提出了一种以受试者手部信号为中心的心电生物识别系统。我们的工作是基于先前开发的定制的、非侵入式的手部数据采集传感设备,并涉及心电信号的预处理,以及针对实时或近实时应用的两种分类方法的评估。初步结果表明,该系统在身份验证和识别方面都具有竞争力,并进一步验证了心电信号作为生物识别系统设计者工具箱中互补模式的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ECG-based biometrics: A real time classification approach
Behavioral biometrics is one of the areas with growing interest within the biosignal research community. A recent trend in the field is ECG-based biometrics, where electrocardiographic (ECG) signals are used as input to the biometric system. Previous work has shown this to be a promising trait, with the potential to serve as a good complement to other existing, and already more established modalities, due to its intrinsic characteristics. In this paper, we propose a system for ECG biometrics centered on signals acquired at the subject's hand. Our work is based on a previously developed custom, non-intrusive sensing apparatus for data acquisition at the hands, and involved the pre-processing of the ECG signals, and evaluation of two classification approaches targeted at real-time or near real-time applications. Preliminary results show that this system leads to competitive results both for authentication and identification, and further validate the potential of ECG signals as a complementary modality in the toolbox of the biometric system designer.
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