金融基础设施安全的双峰生物识别技术

O. Esan, S. Ngwira, I. Osunmakinde
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引用次数: 6

摘要

本研究探讨了人脸与指纹生物识别技术的融合是否能提高ATM等金融基础设施的安全性能。指纹生物识别技术在匹配过程中考虑了由于油脂、皱纹、皮肤干燥、污垢等环境噪声以及查询指纹与数据库指纹模板的位移等造成的指纹畸变和错位。采用基于MGF和HSC集成的改进Gabor滤波-层次结构检查(MGF-HSC)混合系统模型,对x-y二维图像上产生的噪声、扭曲和/或错位指纹进行了增强和优化。然而,为了提高金融基础设施的准确性,采用快速主成分分析算法引入人脸生物识别,该算法处理了不同的人脸条件,如光照、模糊度、姿态、头部方向等条件。MGF-HSC方法将假指纹匹配和指纹失真和不对齐的主要影响降至可接受的水平。在1000个测试用例的实验中,当错误接受率(FAR)为0.1%时,提出的双峰生物识别技术将错误拒绝率(FRR)的准确性提高到98%。结果表明,人脸识别技术可以支持指纹识别技术提高金融安全,在FRR和FAR方面都有显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bimodal biometrics for financial infrastructure security
This research examines whether the integration of facial and fingerprint biometrics can improve the performance in financial infrastructure security such as ATM protection. Fingerprint biometrics consider distorted and misaligned fingerprints caused by environmental noise such as oil, wrinkles, dry skin, dirt and displacement of the query fingerprint with the database fingerprint template during matching. The noisy, distorted and/or misaligned fingerprint produced as a 2-D on x-y image, is enhanced and optimized using a new hybrid Modified Gabor Filter-Hierarchal Structure Check (MGF-HSC) system model based on an MGF integrated with an HSC. However, in order to improve the accuracy of financial infrastructure, face biometrics are introduced using a fast principal component analysis algorithm, in which different face conditions such as lighting, blurriness, pose, head orientation and other conditions are addressed. The MGF-HSC approach minimizes false fingerprint matching and the dominant effect of distortion and misalignment of fingerprints to an acceptable level. The proposed bimodal biometrics increase the accuracy of the False Rejection Rate (FRR) to 98% when the False Acceptance Rate (FAR) is 0.1% in an experiment conducted with 1000 test cases. This result shows that facial biometrics can be used to support fingerprint biometrics for improving financial security based on with significant improvement in both FRR and FAR.
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