Empirical capacity of a biometric channel under the constraint of global PCA and ICA encoding

Francesco Nicolo, N. Schmid
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引用次数: 1

Abstract

The ability of practical biometric systems to recognize a large number of subjects is constrained by a variety of factors that include a choice of a source encoding technique, quality of images, complexity and variability of underlying patterns and of collected data. Given a source encoding technique, the remaining factors can be attributed to distortions due to a biometric recognition channel. In this work, we define empirical mutual information and recognition rate and evaluate empirical recognition capacity of biometric systems under the constraint of two global encoding techniques: principal component analysis (PCA) and independent component analysis (ICA). The empirical capacity of biometric systems is numerically evaluated as a point of intersection of the empirical mutual information rate curve plotted as a function of the recognition rate and the diagonal line bisecting the first quadrant. The developed methodology is applied to find the empirical capacity of different recognition channels formed during acquisition of different iris and face databases.
全局PCA和ICA编码约束下生物识别信道的经验容量
实际生物识别系统识别大量受试者的能力受到多种因素的限制,这些因素包括源编码技术的选择、图像质量、基础模式和收集数据的复杂性和可变性。给定源编码技术,剩余的因素可以归因于由于生物识别通道的扭曲。在这项工作中,我们定义了经验互信息和识别率,并在两种全局编码技术:主成分分析(PCA)和独立成分分析(ICA)的约束下评估了生物识别系统的经验识别能力。生物识别系统的经验能力被数值评价为经验互信息率曲线的交点,该曲线作为识别率的函数与平分第一象限的对角线绘制。将所开发的方法应用于不同虹膜和人脸数据库采集过程中形成的不同识别通道的经验容量。
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