基于物联网的心电指纹融合多模态动态检测

IF 0.6 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
A. Gona, Subramoniam M.
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引用次数: 0

摘要

目的使用指纹的生物识别扫描被广泛用于安全目的。最终,出于身份验证的目的,指纹扫描不是很可靠,因为可以通过获取个人指纹样本来伪造指纹扫描。有一些欺骗检测技术可用于减少生物特征系统的欺骗发生率。其中,最常用的是基于训练期间提供的指纹样本来检测真指纹或假指纹的二进制分类技术。然而,当向该技术提供使用与训练样本中所涵盖的欺骗技术不同的其他欺骗技术形成的样本时,该技术失败。本文旨在通过心电图和指纹的融合来提高活体检测的准确性。设计/方法/方法在本文中,为了避免这一限制,在物联网(IoT)环境中,利用指尖采集的心电信号和指纹数据的融合,开发了一种高效的活体检测算法。心电图信号将确保从假指纹样本中检测出真实指纹样本。查找单模型指纹方法有一些缺点,如数据噪声和指纹位置。为了克服这一点,对心电图和指纹进行了融合,从而组合的数据提高了检测精度。独创性/价值系统的安全性在这种方法中得到了提高,指纹识别率也得到了提高。本工作采用基于物联网的方法来减轻数据处理系统的计算负担。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IoT-based multimodal liveness detection using the fusion of ECG and fingerprint
Purpose Biometric scans using fingerprints are widely used for security purposes. Eventually, for authentication purposes, fingerprint scans are not very reliable because they can be faked by obtaining a sample of the fingerprint of the person. There are a few spoof detection techniques available to reduce the incidence of spoofing of the biometric system. Among them, the most commonly used is the binary classification technique that detects real or fake fingerprints based on the fingerprint samples provided during training. However, this technique fails when it is provided with samples formed using other spoofing techniques that are different from the spoofing techniques covered in the training samples. This paper aims to improve the liveness detection accuracy by fusing electrocardiogram (ECG) and fingerprint. Design/methodology/approach In this paper, to avoid this limitation, an efficient liveness detection algorithm is developed using the fusion of ECG signals captured from the fingertips and fingerprint data in Internet of Things (IoT) environment. The ECG signal will ensure the detection of real fingerprint samples from fake ones. Findings Single model fingerprint methods have some disadvantages, such as noisy data and position of the fingerprint. To overcome this, fusion of both ECG and fingerprint is done so that the combined data improves the detection accuracy. Originality/value System security is improved in this approach, and the fingerprint recognition rate is also improved. IoT-based approach is used in this work to reduce the computation burden of data processing systems.
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来源期刊
International Journal of Pervasive Computing and Communications
International Journal of Pervasive Computing and Communications COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
6.60
自引率
0.00%
发文量
54
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