Geometrical Analysis of Machine Learning Security in Biometric Authentication Systems

Koosha Sadeghi, Ayan Banerjee, Javad Sohankar, S. Gupta
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引用次数: 16

Abstract

Feature extraction and Machine Learning (ML) techniques are required to reduce high variability of biometric data in Biometric Authentication Systems (BAS) toward improving system utilization (acceptance of legitimate subjects). However, reduction in data variability, also decreases the adversary’s effort in manufacturing legitimate biometric data to break the system (security strength). Typically for BAS design, security strength is evaluated through variability analysis on data, regardless of feature extraction and ML, which are essential for accurate evaluation. In this research, we provide a geometrical method to measure the security strength in BAS, which analyzes the effects of feature extraction and ML on the biometric data. Using the proposed method, we evaluate the security strength of five state-of-the-art electroencephalogram-based authentication systems, on data from 106 subjects, and the maximum achievable security strength is 83 bits.
生物识别认证系统中机器学习安全性的几何分析
特征提取和机器学习(ML)技术需要减少生物识别认证系统(BAS)中生物识别数据的高度可变性,以提高系统利用率(接受合法主体)。然而,数据可变性的减少也减少了攻击者制造合法生物识别数据来破坏系统的努力(安全强度)。通常在BAS设计中,安全强度是通过对数据的可变性分析来评估的,而不考虑特征提取和ML,这对准确评估至关重要。在本研究中,我们提供了一种几何方法来测量BAS的安全强度,分析了特征提取和ML对生物特征数据的影响。使用所提出的方法,我们评估了五种最先进的基于脑电图的认证系统的安全强度,来自106个受试者的数据,最大可实现的安全强度为83位。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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